brms 2.22.0
New Features
- Support different Gaussian process kernels in
gp terms.
(#234)
- Support stratified
cox models via the new addition term
bhaz. (#1489)
- Support futures for parallelization in the
cmdstanr
backend. (#1684)
- Add method
loo_epred thanks to Aki Vehtari.
(#1641)
- Add priorsense support via
create_priorsense_data.brmsfit thanks to Noa Kallioinen.
(#1354)
- Vectorize censored log likelihoods in the Stan code when possible.
(#1657)
- Force Stan to activate threading without altering the Stan code via
argument
force of function threading.
(#1549)
- Support moment matching
loo prediction methods.
(#1674)
Bug Fixes
- Fix a bug that led to partially duplicated Stan code in multilevel
terms thanks to Henrik Singmann. (#1651)
- Fix problems with parallel executions of post-processing functions
sometimes leaving unused R instances behind. Thanks to Andrew Johnson,
Aki Vehtari, and Noa Kallioinen. (#1658)
- Fix several minor bugs. (#1648, #1644, #1672, #1642, #1634, #1666,
#1664)
Other Changes
- Refactor some of the internal code base to avoid evaluating many
data-dependent quantities several times. (#1653)
- Smartly access internal functions when evaluating non-linear
formulas. (#1635)
- Improve the documentation in several places.
- Make argument
loo optional in
loo_moment_match.
- Change the output format of
loo_predict and
loo_linpred to be more consistent with other
post-processing functions.
brms 2.21.0
New Features
- Add experimental support for the
pathfinder and
laplace algorithms in the cmdstanr backend.
(#1591)
- Automatically recompute fit criteria previously stored in the model
if potentially results-changing arguments are provided to the criterion
method.
- Allow to turn off automatic broadcasting of
constant
priors.
- Allow for joint likelihood evaluation in
kfold via
argument joint.
- Use several Stan built-in functions implemented since version 2.26
to improve the efficiency of multiple model classes. (#1077)
Other Changes
- Change
make_stancode and make_standata to
be aliases of stancode and standata,
respectively. Change get_prior to be an alias of a new
generic method default_prior. This enable other packages to
define new stancode, standata and
default_prior methods to generate Stan code and data, and
extract the default priors, for their own objects building on brms.
Thanks to Ven Popov for helping with this. (#1604)
- Change the default prior of the
shape parameter of
negbinomial models to inv_gamma(0.4, 0.3)
thanks to Aki Vehtari. (#1614)
- No longer automatically canonicalize the Stan code if cmdstanr is
used as backend. (#1544)
- Export
read_csv_as_stanfit thanks to Ven Popov.
(#1619)
- Make installation of
shinystan optional. This means
that the package has to be loaded, via library(shinystan),
before launch_shinystan can be used. (#1595)
- Improve parameter class names in the
summary
output.
- Show histograms rather than densities in the
plot
method by default.
- Deprecate argument
N in the plot method in
favor of argument nvariables.
- Remove deprecated argument
exact_loo in method
kfold.
Bug Fixes
- Remove some remaining uses of Stan’s old array syntax.
- Fix a bug in formula parsing of missing values terms with
interactions thank to Guido Biele. (#1608)
- Ensure compatibility of
combine_models with moment
matching. (#1603)
- Ensure compatibility with the latest
splines2 package
version. (#1580)
- Fix output of
rmulti_normal thanks to Ven Popov.
(#1588)
- Prevent memory leaks when executing
kfold or
reloo in parallel.
brms 2.20.3
Other Changes
- Switch to the new array syntax of Stan. This increases the version
requirements of Stan to >= 2.26.
brms 2.20.0
New Features
- Apply the
horseshoe and R2D2 priors
globally, that is, for all additive predictor terms specified in the
same formula. (#1492)
- Use
as.brmsprior to transform objects into a
brmsprior. (#1491)
- Use matrix data as non-linear covariates. (#1488)
Other Changes
- No longer support the
lasso prior as it is not a good
shrinkage prior and incompatible with the newly implemented global
shrinkage prior framework.
- No longer support multiple deprecated prior options for categorical
and multivariate models after around 3 years of deprecation.
(#1420)
- Deprecate argument
newdata of
get_refmodel.brmsfit(). (#1502)
- Disallow binomial models without
trials argument after
several years of deprecation. (#1501)
Bug Fixes
- Fix a long-standing bug in the post-processing of spline models that
could lead to non-sensible results if predictions were performed on a
different machine than where the model was originally fitted. Old spline
models can be repaired via
restructure. Special thanks to
Simon Wood, Ruben Arslan, Marta Kołczyńska, Patrick Hogan, and Urs
Kalbitzer. (#1465)
- Fix a bunch of minor issues occurring for rare feature
combinations.
brms 2.19.0
New Features
- Model unstructured autocorrelation matrices via the
unstr term thanks to the help of Sebastian Weber.
(#1435)
- Model ordinal data with an extra category (non-response or similar)
via the
hurdle_cumulative family thanks to Stephen Wild.
(#1448)
- Improve user control over model recompilation via argument
recompile in post-processing methods that require a
compiled Stan model.
- Extend control over the
point_estimate feature in
prepare_predictions via the new argument
ndraws_point_estimate.
- Add support for the latent projection available in
projpred versions >= 2.4.0. (#1451)
Bug Fixes
- Fix a Stan syntax error in threaded models with
lasso
priors. (#1427)
- Fix Stan compilation issues for some of the more special link
functions such as
cauchit or softplus.
- Fix a bug for predictions in projpred, previously
requiring more variables in
newdata than necessary. (#1457,
#1459, #1460)
brms 2.18.0
New Features
- Support regression splines with fixed degrees of freedom specified
via
s(..., fx = TRUE).
- Reuse user-specified control arguments originally passed to the Stan
backend in
update and related methods. (#1373, #1378)
- Allow to retain unused factors levels via
drop_unused_levels = FALSE in brm and related
functions. (#1346)
- Automatically update old default priors based on new input when when
updating models via
update.brmsfit. (#1380)
- Allow to use
dirichlet priors for more parameter types.
(#1165)
Other Changes
- Improve efficiency of converting models fitted with
backend = "cmdstanr" to stanfit objects thanks
to Simon Mills and Jacob Socolar. (#1331)
- Allow for more
O1 optimization of brms-generated Stan
models thanks to Aki Vehtari. (#1382)
Bug Fixes
- Fix problems with missing boundaries of
sdme parameters
in models with known response standard errors thanks to Solomon Kurz.
(#1348)
- Fix Stan code of
gamma models with
softplus link.
- Allow for more flexible data inputs to
brm_multiple.
(#1383)
- Ensure that
control_params returns the right values for
models fitted with the cmdstanr backend. (#1390)
- Fix problems in multivariate spline models when using the
subset addition term. (#1385)
brms 2.17.0
New Features
- Add full user control for boundaries of most parameters via the
lb and ub arguments of set_prior
and related functions. (#878, #1094)
- Add family
logistic_normal for simplex responses.
(#1274)
- Add argument
future_args to kfold and
reloo for additional control over parallel execution via
futures.
- Add families
beta_binomial &
zero_inflated_beta_binomial for potentially over-dispersed
and zero-inflated binomial response models thanks to Hayden Rabel.
(#1319 & #1311)
- Display
ppd_* plots in pp_check via
argument prefix. (#1313)
- Support the
log link in binomial and beta type
families. (#1316)
- Support projpred’s augmented-data projection.
(#1292, #1294)
Other changes
- Argument
brms_seed has been added to
get_refmodel.brmsfit(). (#1287)
- Deprecate argument
inits in favor of init
for consistency with the Stan backends.
- Improve speed of the
summary method for
high-dimensional models. (#1330)
Bug Fixes
- Fix Stan code of threaded multivariate models thanks to Anirban
Mukherjee. (#1277)
- Fix usage of
int_conditions in
conditional_smooths thanks to Urs Kalbitzer. (#1280)
- Fix an error sometimes occurring for multilevel (reference) models
in
projpred’s K-fold CV. (#1286)
- Fix response values in
make_standata for
bernoulli families when only 1s are present thanks to
Facundo Munoz. (#1298)
- Fix
pp_check for censored responses to work for all
plot types thanks to Hayden Rabel. (#1327)
- Ensure that argument
overwrite in
add_criterion works as expected for all criteria thanks to
Andrew Milne. (#1323)
- Fix a problem in
launch_shinystan occurring when warmup
draws were saved thanks to Frank Weber. (#1257, #1329)
- Fix numerical stability problems in
log_lik for ordinal
models. (#1192)
brms 2.16.3
Other changes
- Move
projpred from Imports: to
Suggests:. This has the important implication that users
need to load or attach projpred themselves if they want to
use it (the more common case is probably attaching, which is achieved by
library(projpred)). (#1222)
Bug Fixes
- Ensure that argument
overwrite in
add_criterion is working as intended thanks to Ruben
Arslan. (#1219)
- Fix a bug in
get_refmodel.brmsfit() (i.e., when using
projpred for a "brmsfit") causing offsets not
to be recognized. (#1220)
- Several further minor bug fixes.
brms 2.16.1
Bug Fixes
- Fix a bug causing problems during post-processing of models fitted
with older versions of brms and the
cmdstanr backend thanks
to Riccardo Fusaroli. (#1218)
brms 2.16.0
New Features
- Support several methods of the
posterior package.
(#1204)
- Substantially extend compatibility of
brms models with
emmeans thanks to Mattan S. Ben-Shachar. (#907, #1134)
- Combine missing value (
mi) terms with
subset addition terms. (#1063)
- Expose function
get_dpar for use in the post-processing
of custom families thank to Martin Modrak. (#1131)
- Support the
squareplus link function in all families
and distributional parameters that also allow for the log
link function.
- Add argument
incl_thres to
posterior_linpred.brmsfit() allowing to subtract the
threshold-excluding linear predictor from the thresholds in case of an
ordinal family. (#1137)
- Add a
"mock" backend option to facilitate testing
thanks to Martin Modrak. (#1116)
- Add option
file_refit = "always" to always overwrite
models stored via the file argument. (#1151)
- Initial GPU support via OpenCL thanks to the help Rok Češnovar.
(#1166)
- Support argument
robust in method
hypothesis. (#1170)
- Vectorize the Stan code of custom likelihoods via argument
loop of custom_family. (#1084)
- Experimentally allow category specific effects for ordinal
cumulative models. (#1060)
- Regenerate Stan code of an existing model via argument
regenerate of method stancode.
- Support
expose_functions for models fitted with the
cmdstanr backend thanks to Sebastian Weber. (#1176)
- Support
log_prob and related functionality in models
fitted with the cmdstanr backend via function
add_rstan_model. (#1184)
Other Changes
- Remove use of
cbind to express multivariate models
after over two years of deprecation (please use mvbind
instead).
- Method
posterior_linpred(transform = TRUE) is now equal
to posterior_epred(dpar = "mu") and no longer
deprecated.
- Refactor and extend internal post-processing functions for ordinal
and categorical models thanks to Frank Weber. (#1159)
- Ignore
NA values in interval censored boundaries as
long as they are unused. (#1070)
- Take offsets into account when deriving default priors for overall
intercept parameters. (#923)
- Soft deprecate measurement error (
me) terms in favor of
the more general and consistent missing value (mi) terms.
(#698)
Bug Fixes
- Fix an issue in the post-processing of non-normal ARMA models thanks
to Thomas Buehrens. (#1149)
- Fix an issue with default baseline hazard knots in
cox
models thanks to Malcolm Gillies. (#1143)
- Fix a bug in non-linear models caused by accidental merging of
operators in the non-linear formula thanks to Fernando Miguez.
(#1142)
- Correctly trigger a refit for
file_refit = "on_change"
if factor level names have changed thanks to Martin Modrak. (#1128)
- Validate factors in
validate_newdata even when they are
simultaneously used as predictors and grouping variables thanks to
Martin Modrak. (#1141)
- Fix a bug in the Stan code generation of threaded mixture models
with predicted mixture probabilities thanks to Riccardo Fusaroli.
(#1150)
- Remove duplicated Stan code related to the
horseshoe
prior thanks to Max Joseph. (#1167)
- Fix an issue in the post-processing of non-looped non-linear
parameters thanks to Sebastian Weber.
- Fix an issue in the Stan code of threaded non-looped non-linear
models thanks to Sebastian Weber. (#1175)
- Fix problems in the post-processing of multivariate meta-analytic
models that could lead to incorrect handling of known standard
errors.
brms 2.15.0
New Features
- Turn off normalization in the Stan model via argument
normalize. to increase sampling efficiency thanks to Andrew
Johnson. (#1017, #1053)
- Enable
posterior_predict for truncated continuous
models even if the required CDF or quantile functions are
unavailable.
- Update and export
validate_prior to validate priors
supplied by the user.
- Add support for within-chain threading with
rstan (Stan >= 2.25) backend.
- Apply the R2-D2 shrinkage prior to population-level coefficients via
function
R2D2 to be used in set_prior.
- Extend support for
arma correlation structures in
non-normal families.
- Extend scope of variables passed via
data2 for use in
the evaluation of most model terms.
- Refit models previously stored on disc only when necessary thanks to
Martin Modrak. The behavior can be controlled via
file_refit. (#1058)
- Allow for a finer tuning of informational messages printed in
brm via the silent argument. (#1076)
- Allow
stanvars to alter distributional parameters.
(#1061)
- Allow
stanvars to be used inside threaded likelihoods.
(#1111)
Other Changes
- Improve numerical stability of ordinal sequential models (families
sratio and cratio) thanks to Andrew Johnson.
(#1087)
Bug Fixes
- Allow fitting
multinomial models with the
cmdstanr backend thanks to Andrew Johnson. (#1033)
- Allow user-defined Stan functions in threaded models. (#1034)
- Allow usage of the
: operator in autocorrelation
terms.
- Fix Stan code generation when specifying coefficient-level priors on
spline terms.
- Fix numerical issues occurring in edge cases during post-processing
of Gaussian processes thanks to Marta Kołczyńska.
- Fix an error during post-processing of new levels in
multi-membership terms thanks to Guilherme Mohor.
- Fix a bug in the Stan code of threaded
wiener drift
diffusion models thanks to the GitHub user yanivabir. (#1085)
- Fix a bug in the threaded Stan code for GPs with categorical
by variables thanks to Reece Willoughby. (#1081)
- Fix a bug in the threaded Stan code when using QR decomposition
thanks to Steve Bronder. (#1086)
- Include offsets in
emmeans related methods thanks to
Russell V. Lenth. (#1096)
brms 2.14.4
New Features
- Support
projpred version 2.0 for variable selection in
generalized linear and additive multilevel models thanks to Alejandro
Catalina.
- Support
by variables in multi-membership terms.
- Use Bayesian bootstrap in
loo_R2.
Bug Fixes
- Allow non-linear terms in threaded models.
- Allow multi-membership terms in threaded models.
- Allow
se addition terms in threaded models.
- Allow
categorical families in threaded models.
- Fix updating of parameters in
loo_moment_match.
- Fix facet labels in
conditional_effects thanks to Isaac
Petersen. (#1014)
brms 2.14.0
New Features
- Experimentally support within-chain parallelization via
reduce_sum using argument threads in
brm thanks to Sebastian Weber. (#892)
- Add algorithm
fixed_param to sample from fixed
parameter values. (#973)
- No longer remove
NA values in data if
there are unused because of the subset addition argument.
(#895)
- Combine
by variables and within-group correlation
matrices in group-level terms. (#674)
- Add argument
robust to the summary method.
(#976)
- Parallelize evaluation of the
posterior_predict and
log_lik methods via argument cores.
(#819)
- Compute effective number of parameters in
kfold.
- Show prior sources and vectorization in the
print
output of brmsprior objects. (#761)
- Store unused variables in the model’s data frame via argument
unused of function brmsformula.
- Support posterior mean predictions in
emmeans via
dpar = "mean" thanks to Russell V. Lenth. (#993)
- Improve control of which parameters should be saved via function
save_pars and corresponding argument in brm.
(#746)
- Add method
posterior_smooths to computing predictions
of individual smooth terms. (#738)
- Allow to display grouping variables in
conditional_effects using the effects
argument. (#1012)
Other Changes
- Improve sampling efficiency for a lot of models by using Stan’s
GLM-primitives even in non-GLM cases. (#984)
- Improve sampling efficiency of multilevel models with within-group
covariances thanks to David Westergaard. (#977)
- Deprecate argument
probs in the
conditional_effects method in favor of argument
prob.
Bug Fixes
- Fix a problem in
pp_check inducing wronger observation
orders in time series models thanks to Fiona Seaton. (#1007)
- Fix multiple problems with
loo_moment_match that
prevented it from working for some more complex models.
brms 2.13.5
New Features
- Support the Cox proportional hazards model for time-to-event data
via family
cox. (#230, #962)
- Support method
loo_moment_match, which can be used to
update a loo object when Pareto k estimates are large.
Other Changes
- Improve the prediction behavior in post-processing methods when
sampling new levels of grouping factors via
sample_new_levels = "uncertainty". (#956)
Bug Fixes
- Fix minor problems with MKL on CRAN.
brms 2.13.3
New Features
- Fix shape parameters across multiple monotonic terms via argument
id in function mo to ensure conditionally
monotonic effects. (#924)
- Support package
rtdists as additional backend of
wiener distribution functions thanks to the help of Henrik
Singmann. (#385)
Bug Fixes
- Fix generated Stan Code of models with improper global priors and
constant priors on some coefficients thanks to Frank Weber.
(#919)
- Fix a bug in
conditional_effects occurring for
categorical models with matrix predictors thanks to Jamie Cranston.
(#933)
Other Changes
- Adjust behavior of the
rate addition term so that it
also affects the shape parameter in
negbinomial models thanks to Edward Abraham. (#915)
- Adjust the default inverse-gamma prior on length-scale parameters of
Gaussian processes to be less extreme in edge cases thanks to Topi
Paananen.
brms 2.13.0
New Features
- Constrain ordinal thresholds to sum to zero via argument
threshold in ordinal family functions thanks to the help of
Marta Kołczyńska.
- Support
posterior_linpred as method in
conditional_effects.
- Use
std_normal in the Stan code for improved
efficiency.
- Add arguments
cor, id, and
cov to the functions gr and mm
for easy specification of group-level correlation structures.
- Improve workflow to feed back brms-created models which were fitted
somewhere else back into brms. (#745)
- Improve argument
int_conditions in
conditional_effects to work for all predictors not just
interactions.
- Support multiple imputation of data passed via
data2 in
brm_multiple. (#886)
- Fully support the
emmeans package thanks to the help of
Russell V. Lenth. (#418)
- Control the within-block position of Stan code added via
stanvar using the position argument.
Bug Fixes
- Fix issue in Stan code of models with multiple
me terms
thanks to Chris Chatham. (#855, #856)
- Fix scaling problems in the estimation of ordinal models with
multiple threshold vectors thanks to Marta Kołczyńska and Rok
Češnovar.
- Allow usage of
std_normal in set_prior
thanks to Ben Goodrich. (#867)
- Fix Stan code of distributional models with
weibull,
frechet, or inverse.gaussian families thanks
to Brian Huey and Jack Caster. (#879)
- Fix Stan code of models which are truncated and weighted at the same
time thanks to Michael Thompson. (#884)
- Fix Stan code of multivariate models with custom families and data
variables passed to the likelihood thanks to Raoul Wolf. (#906)
Other Changes
- Reduce minimal scale of several default priors from 10 to 2.5. The
resulting priors should remain weakly informative.
- Automatically group observations in
gp for increased
efficiency.
- Rename
parse_bf to brmsterms and deprecate
the former function.
- Rename
extract_draws to
prepare_predictions and deprecate the former function.
- Deprecate using a model-dependent
rescor default.
- Deprecate argument
cov_ranef in brm and
related functions.
- Improve several internal interfaces. This should not have any
user-visible changes.
- Simplify the parameterization of the horseshoe prior thanks to Aki
Vehtari. (#873)
- Store fixed distributional parameters as regular draws so that they
behave as if they were estimated in post-processing methods.
brms 2.12.0
New Features
- Fix parameters to constants via the
prior argument.
(#783)
- Specify autocorrelation terms directly in the model formula.
(#708)
- Translate integer covariates in non-linear formulas to integer
arrays in Stan.
- Estimate
sigma in combination with fixed correlation
matrices via autocorrelation term fcor.
- Use argument
data2 in brm and related
functions to pass data objects which cannot be passed via
data. The usage of data2 will be extended in
future versions.
- Compute pointwise log-likelihood values via
log_lik for
non-factorizable Student-t models. (#705)
Bug Fixes
- Fix output of
posterior_predict for
multinomial models thanks to Ivan Ukhov.
- Fix selection of group-level terms via
re_formula in
multivariate models thanks to Maxime Dahirel. (#834)
- Enforce correct ordering of terms in
re_formula thanks
to @ferberkl.
(#844)
- Fix post-processing of multivariate multilevel models when multiple
IDs are used for the same grouping factor thanks to @lott999. (#835)
- Store response category names of ordinal models in the output of
posterior_predict again thanks to Mattew Kay. (#838)
- Handle
NA values more consistently in
posterior_table thanks to Anna Hake. (#845)
- Fix a bug in the Stan code of models with multiple monotonic varying
effects across different groups thanks to Julian Quandt.
Other Changes
- Rename
offset variables to offsets in the
generated Stan code as the former will be reserved in the new stanc3
compiler.
brms 2.11.1
Bug Fixes
- Fix version requirement of the
loo package.
- Fix effective sample size note in the
summary output.
(#824)
- Fix an edge case in the handling of covariates in special terms
thanks to Andrew Milne. (#823)
- Allow restructuring objects multiple times with different brms
versions thanks to Jonathan A. Nations. (#828)
- Fix validation of ordered factors in
newdata thanks to
Andrew Milne. (#830)
brms 2.11.0
New Features
- Support grouped ordinal threshold vectors via addition argument
resp_thres. (#675)
- Support method
loo_subsample for performing approximate
leave-one-out cross-validation for large data.
- Allow storing more model fit criteria via
add_criterion. (#793)
Bug Fixes
- Fix prediction uncertainties of new group levels for
sample_new_levels = "uncertainty" thanks to Dominic Magirr.
(#779)
- Fix problems when using
pp_check on censored models
thanks to Andrew Milne. (#744)
- Fix error in the generated Stan code of multivariate
zero_inflated_binomial models thanks to Raoul Wolf.
(#756)
- Fix predictions of spline models when using addition argument
subset thanks to Ruben Arslan.
- Fix out-of-sample predictions of AR models when predicting more than
one step ahead.
- Fix problems when using
reloo or kfold
with CAR models.
- Fix problems when using
fitted(..., scale = "linear")
with multinomial models thanks to Santiago Olivella. (#770)
- Fix problems in the
as.mcmc method for thinned models
thanks to @hoxo-m.
(#811)
- Fix problems in parsing covariates of special effects terms thanks
to Riccardo Fusaroli (#813)
Other Changes
- Rename
marginal_effects to
conditional_effects and marginal_smooths to
conditional_smooths. (#735)
- Rename
stanplot to mcmc_plot.
- Add method
pp_expect as an alias of
fitted. (#644)
- Model fit criteria computed via
add_criterion are now
stored in the brmsfit$criteria slot.
- Deprecate
resp_cat in favor of
resp_thres.
- Deprecate specifying global priors on regression coefficients in
categorical and multivariate models.
- Improve names of weighting methods in
model_weights.
- Deprecate reserved variable
intercept in favor of
Intercept.
- Deprecate argument
exact_match in favor of
fixed.
- Deprecate functions
add_loo and add_waic
in favor of add_criterion.
brms 2.10.0
New Features
- Improve convergence diagnostics in the
summary output.
(#712)
- Use primitive Stan GLM functions whenever possible. (#703)
- Pass real and integer data vectors to custom families via the
addition arguments
vreal and vint. (#707)
- Model compound symmetry correlations via
cor_cosy.
(#403)
- Predict
sigma in combination with several
autocorrelation structures. (#403)
- Use addition term
rate to conveniently handle
denominators of rate responses in log-linear models.
- Fit BYM2 CAR models via
cor_car thanks to the case
study and help of Mitzi Morris.
Other Changes
- Substantially improve the sampling efficiency of SAR models thanks
to the GitHub user aslez. (#680)
- No longer allow changing the boundaries of autocorrelation
parameters.
- Set the number of trials to 1 by default in
marginal_effects if not specified otherwise. (#718)
- Use non-standard evaluation for addition terms.
- Name temporary intercept parameters more consistently in the Stan
code.
Bug Fixes
- Fix problems in the post-processing of
me terms with
grouping factors thanks to the GitHub user tatters. (#706)
- Allow grouping variables to start with a dot thanks to Bruno
Nicenboim. (#679)
- Allow the
horseshoe prior in categorical and related
models thanks to the Github user tatters. (#678)
- Fix extraction of prior samples for overall intercepts in
prior_samples thanks to Jonas Kristoffer Lindelov.
(#696)
- Allow underscores to be used in category names of categorical
responses thanks to Emmanuel Charpentier. (#672)
- Fix Stan code of multivariate models with multi-membership terms
thanks to the Stan discourse user Pia.
- Improve checks for non-standard variable names thanks to Ryan
Holbrook. (#721)
- Fix problems when plotting facetted spaghetti plots via
marginal_smooths thanks to Gavin Simpson. (#740)
brms 2.9.0
New Features
- Specify non-linear ordinal models. (#623)
- Allow to fix thresholds in ordinal mixture models (#626)
- Use the
softplus link function in various families.
(#622)
- Use QR decomposition of design matrices via argument
decomp of brmsformula thanks to the help of
Ben Goodrich. (#640)
- Define argument
sparse separately for each model
formula.
- Allow using
bayes_R2 and loo_R2 with
ordinal models. (#639)
- Support
cor_arma in non-normal models. (#648)
Other Changes
- Change the parameterization of monotonic effects to improve their
interpretability. (#578)
- No longer support the
cor_arr and cor_bsts
correlation structures after a year of deprecation.
- Refactor internal evaluation of special predictor terms.
- Improve penalty of splines thanks to Ben Goodrich and Ruben
Arslan.
Bug Fixes
- Fix a problem when applying
marginal_effects to
measurement error models thanks to Jonathan A. Nations. (#636)
- Fix computation of log-likelihood values for weighted mixture
models.
- Fix computation of fitted values for truncated lognormal and weibull
models.
- Fix checking of response boundaries for models with missing values
thanks to Lucas Deschamps.
- Fix Stan code of multivariate models with both residual correlations
and missing value terms thanks to Solomon Kurz.
- Fix problems with interactions of special terms when extracting
variable names in
marginal_effects.
- Allow compiling a model in
brm_multiple without
sampling thanks to Will Petry. (#671)
brms 2.8.0
New Features
- Fit multinomial models via family
multinomial.
(#463)
- Fit Dirichlet models via family
dirichlet. (#463)
- Fit conditional logistic models using the
categorical
and multinomial families together with non-linear formula
syntax. (#560)
- Choose the reference category of
categorical and
related families via argument refcat of the corresponding
family functions.
- Use different subsets of the data in different univariate parts of a
multivariate model via addition argument
subset.
(#360)
- Control the centering of population-level design matrices via
argument
center of brmsformula and related
functions.
- Add an
update method for brmsfit_multiple
objects. (#615)
- Split folds after
group in the kfold
method. (#619)
Other changes
- Deprecate
compare_ic and instead recommend
loo_compare for the comparison of loo objects
to ensure consistency between packages. (#414)
- Use the glue package in the Stan code generation.
(#549)
- Introduce
mvbind to eventually replace
cbind in the formula syntax of multivariate models.
- Validate several sampling-related arguments in
brm
before compiling the Stan model. (#576)
- Show evaluated vignettes on CRAN again. (#591)
- Export function
get_y which is used to extract response
values from brmsfit objects.
Bug fixes
- Fix an error when trying to change argument
re_formula
in bayes_R2 thanks to the GitHub user emieldl. (#592)
- Fix occasional problems when running chains in parallel via the
future package thanks to Jared Knowles. (#579)
- Ensure correct ordering of response categories in ordinal models
thanks to Jonas Kristoffer Lindelov. (#580)
- Ignore argument
resp of marginal_effects
in univariate models thanks to Vassilis Kehayas. (#589)
- Correctly disable cell-mean coding in varying effects.
- Allow to fix parameter
ndt in drift diffusion
models.
- Fix Stan code for t-distributed varying effects thanks to Ozgur
Asar.
- Fix an error in the post-processing of monotonic effects occurring
for multivariate models thanks to James Rae. (#598)
- Fix lower bounds in truncated discrete models.
- Fix checks of the original data in
kfold thanks to the
GitHub user gcolitti. (#602)
- Fix an error when applying the
VarCorr method to
meta-analytic models thanks to Michael Scharkow. (#616)
brms 2.7.0
New features
- Fit approximate and non-isotropic Gaussian processes via
gp. (#540)
- Enable parallelization of model fitting in
brm_multiple
via the future package. (#364)
- Perform posterior predictions based on k-fold cross-validation via
kfold_predict. (#468)
- Indicate observations for out-of-sample predictions in ARMA models
via argument
oos of extract_draws. (#539)
Other changes
- Allow factor-like variables in smooth terms. (#562)
- Make plotting of
marginal_effects more robust to the
usage of non-standard variable names.
- Deactivate certain data validity checks when using custom
families.
- Improve efficiency of adjacent category models.
- No longer print informational messages from the Stan parser.
Bug fixes
- Fix an issue that could result in a substantial efficiency drop of
various post-processing methods for larger models.
- Fix an issue when that resulted in an error when using
fitted(..., scale = "linear") with ordinal models thanks to
Andrew Milne. (#557)
- Allow setting priors on the overall intercept in sparse models.
- Allow sampling from models with only a single observation that also
contain an offset thanks to Antonio Vargas. (#545)
- Fix an error when sampling from priors in mixture models thanks to
Jacki Buros Novik. (#542)
- Fix a problem when trying to sample from priors of parameter
transformations.
- Allow using
marginal_smooths with ordinal models thanks
to Andrew Milne. (#570)
- Fix an error in the post-processing of
me terms thanks
to the GitHub user hlluik. (#571)
- Correctly update
warmup samples when using
update.brmsfit.
brms 2.6.0
New features
- Fit factor smooth interactions thanks to Simon Wood.
- Specify separate priors for thresholds in ordinal models.
(#524)
- Pass additional arguments to
rstan::stan_model via
argument stan_model_args in brm. (#525)
- Save model objects via argument
file in
add_ic after adding model fit criteria. (#478)
- Compute density ratios based on MCMC samples via
density_ratio.
- Ignore offsets in various post-processing methods via argument
offset.
- Update addition terms in formulas via
update_adterms.
Other changes
- Improve internal modularization of smooth terms.
- Reduce size of internal example models.
Bug fixes
- Correctly plot splines with factorial covariates via
marginal_smooths.
- Allow sampling from priors in intercept only models thanks to
Emmanuel Charpentier. (#529)
- Allow logical operators in non-linear formulas.
brms 2.5.0
New features
- Improve
marginal_effects to better display ordinal and
categorical models via argument categorical. (#491,
#497)
- Improve method
kfold to offer more options for
specifying omitted subsets. (#510)
- Compute estimated values of non-linear parameters via argument
nlpar in method fitted.
- Disable automatic cell-mean coding in model formulas without an
intercept via argument
cmc of brmsformula and
related functions thanks to Marie Beisemann.
- Allow using the
bridge_sampler method even if prior
samples are drawn within the model. (#485)
- Specify post-processing functions of custom families directly in
custom_family.
- Select a subset of coefficients in
fixef,
ranef, and coef via argument
pars. (#520)
- Allow to
overwrite already stored fit indices when
using add_ic.
Other changes
- Ignore argument
resp when post-processing univariate
models thanks to Ruben Arslan. (#488)
- Deprecate argument
ordinal of
marginal_effects. (#491)
- Deprecate argument
exact_loo of kfold.
(#510)
- Deprecate usage of
binomial families without specifying
trials.
- No longer sample from priors of population-level intercepts when
using the default intercept parameterization.
Bug fixes
- Correctly sample from LKJ correlation priors thanks to Donald
Williams.
- Remove stored fit indices when calling
update on
brmsfit objects thanks to Emmanuel Charpentier. (#490)
- Fix problems when predicting a single data point using spline models
thanks to Emmanuel Charpentier. (#494)
- Set
Post.Prob = 1 if Evid.Ratio = Inf in
method hypothesis thanks to Andrew Milne. (#509)
- Ensure correct handling of argument
file in
brm_multiple.
brms 2.4.0
New features
- Define custom variables in all of Stan’s program blocks via function
stanvar. (#459)
- Change the scope of non-linear parameters to be global within
univariate models. (#390)
- Allow to automatically group predictor values in Gaussian processes
specified via
gp. This may lead to a considerable increase
in sampling efficiency. (#300)
- Compute LOO-adjusted R-squared using method
loo_R2.
- Compute non-linear predictors outside of a loop over observations by
means of argument
loop in brmsformula.
- Fit non-linear mixture models. (#456)
- Fit censored or truncated mixture models. (#469)
- Allow
horseshoe and lasso priors to be set
on special population-level effects.
- Allow vectors of length greater one to be passed to
set_prior.
- Conveniently save and load fitted model objects in
brm
via argument file. (#472)
- Display posterior probabilities in the output of
hypothesis.
Other changes
- Deprecate argument
stan_funs in brm in
favor of using the stanvars argument for the specification
of custom Stan functions.
- Deprecate arguments
flist and ... in
nlf.
- Deprecate argument
dpar in lf and
nlf.
Bug fixes
- Allow custom families in mixture models thanks to Noam Ross.
(#453)
- Ensure compatibility with mice version 3.0.
(#455)
- Fix naming of correlation parameters of group-level terms with
multiple subgroups thanks to Kristoffer Magnusson. (#457)
- Improve scaling of default priors in
lognormal models
(#460).
- Fix multiple problems in the post-processing of categorical
models.
- Fix validation of nested grouping factors in post-processing methods
when passing new data thanks to Liam Kendall.
brms 2.3.1
New features
- Allow censoring and truncation in zero-inflated and hurdle models.
(#430)
- Export zero-inflated and hurdle distribution functions.
Other changes
- Improve sampling efficiency of the ordinal families
cumulative, sratio, and cratio.
(#433)
- Allow to specify a single k-fold subset in method
kfold. (#441)
Bug fixes
- Fix a problem in
launch_shinystan due to which the
maximum treedepth was not correctly displayed thanks to Paul Galpern.
(#431)
brms 2.3.0
Features
- Extend
cor_car to support intrinsic CAR models in
pairwise difference formulation thanks to the case study of Mitzi
Morris.
- Compute
loo and related methods for non-factorizable
normal models.
Other changes
- Rename quantile columns in
posterior_summary. This
affects the output of predict and related methods if
summary = TRUE. (#425)
- Use hashes to check if models have the same response values when
performing model comparisons. (#414)
- No longer set
pointwise dynamically in loo
and related methods. (#416)
- No longer show information criteria in the summary output.
- Simplify internal workflow to implement native response
distributions. (#421)
Bug fixes
- Allow
cor_car in multivariate models with residual
correlations thanks to Quentin Read. (#427)
- Fix a problem in the Stan code generation of distributional
beta models thanks to Hans van Calster. (#404)
- Fix
launch_shinystan.brmsfit so that all parameters are
now shown correctly in the diagnose tab. (#340)
brms 2.2.0
Features
- Specify custom response distributions with function
custom_family. (#381)
- Model missing values and measurement error in responses using the
mi addition term. (#27, #343)
- Allow missing values in predictors using
mi terms on
the right-hand side of model formulas. (#27)
- Model interactions between the special predictor terms
mo, me, and mi. (#313)
- Introduce methods
model_weights and
loo_model_weights providing several options to compute
model weights. (#268)
- Introduce method
posterior_average to extract posterior
samples averaged across models. (#386)
- Allow hyperparameters of group-level effects to vary over the levels
of a categorical covariate using argument
by in function
gr. (#365)
- Allow predictions of measurement-error models with new data.
(#335)
- Pass user-defined variables to Stan via
stanvar. (#219,
#357)
- Allow ordinal families in mixture models. (#389)
- Model covariates in multi-membership structures that vary over the
levels of the grouping factor via
mmc terms. (#353)
- Fit shifted log-normal models via family
shifted_lognormal. (#218)
- Specify nested non-linear formulas.
- Introduce function
make_conditions to ease preparation
of conditions for marginal_effects.
Other changes
- Change the parameterization of
weibull and
exgaussian models to be consistent with other model
classes. Post-processing of related models fitted with earlier version
of brms is no longer possible.
- Treat integer responses in
ordinal models as directly
indicating categories even if the lowest integer is not one.
- Improve output of the
hypothesis method thanks to the
ideas of Matti Vuorre. (#362)
- Always plot
by variables as facets in
marginal_smooths.
- Deprecate the
cor_bsts correlation structure.
Bug fixes
- Allow the
: operator to combine groups in
multi-membership terms thanks to Gang Chen.
- Avoid an unexpected error when calling
LOO with
argument reloo = TRUE thanks to Peter Konings. (#348)
- Fix problems in
predict when applied to categorical
models thanks to Lydia Andreyevna Krasilnikova and Thomas Vladeck.
(#336, #345)
- Allow truncation in multivariate models with missing values thanks
to Malte Lau Petersen. (#380)
- Force time points to be unique within groups in autocorrelation
structures thanks to Ruben Arslan. (#363)
- Fix problems when post-processing multiple uncorrelated group-level
terms of the same grouping factor thanks to Ivy Jansen. (#374)
- Fix a problem in the Stan code of multivariate
weibull
and frechet models thanks to the GitHub user philj1s.
(#375)
- Fix a rare error when post-processing
binomial models
thanks to the GitHub user SeanH94. (#382)
- Keep attributes of variables when preparing the
model.frame thanks to Daniel Luedecke. (#393)
brms 2.1.0
Features
- Fit models on multiple imputed datasets via
brm_multiple thanks to Ruben Arslan. (#27)
- Combine multiple
brmsfit objects via function
combine_models.
- Compute model averaged posterior predictions with method
pp_average. (#319)
- Add new argument
ordinal to
marginal_effects to generate special plots for ordinal
models thanks to the idea of the GitHub user silberzwiebel. (#190)
- Use informative inverse-gamma priors for length-scale parameters of
Gaussian processes. (#275)
- Compute hypotheses for all levels of a grouping factor at once using
argument
scope in method hypothesis.
(#327)
- Vectorize user-defined
Stan functions exported via
export_functions using argument
vectorize.
- Allow predicting new data in models with ARMA autocorrelation
structures.
Bug fixes
- Correctly recover noise-free coefficients through
me
terms thanks to Ruben Arslan. As a side effect, it is no longer possible
to define priors on noise-free Xme variables directly, but
only on their hyper-parameters meanme and
sdme.
- Fix problems in renaming parameters of the
cor_bsts
structure thanks to Joshua Edward Morten. (#312)
- Fix some unexpected errors when predicting from ordinal models
thanks to David Hervas and Florian Bader. (#306, #307, #331)
- Fix problems when estimating and predicting multivariate ordinal
models thanks to David West. (#314)
- Fix various minor problems in autocorrelation structures thanks to
David West. (#320)
brms 2.0.1
Features
- Export the helper functions
posterior_summary and
posterior_table both being used to summarize posterior
samples and predictions.
Bug fixes
- Fix incorrect computation of intercepts in
acat and
cratio models thanks to Peter Phalen. (#302)
- Fix
pointwise computation of LOO and
WAIC in multivariate models with estimated residual
correlation structure.
- Fix problems in various S3 methods sometimes requiring unused
variables to be specified in
newdata.
- Fix naming of Stan models thanks to Hao Ran Lai.
brms 2.0.0
This is the second major release of brms. The main new
feature are generalized multivariate models, which now support
everything already possible in univariate models, but with multiple
response variables. Further, the internal structure of the package has
been improved considerably to be easier to maintain and extend in the
future. In addition, most deprecated functionality and arguments have
been removed to provide a clean new start for the package. Models fitted
with brms 1.0 or higher should remain fully compatible with
brms 2.0.
Features
- Add support for generalized multivariate models, where each of the
univariate models may have a different family and autocorrelation
structure. Residual correlations can be estimated for multivariate
gaussian and student models. All features
supported in univariate models are now also available in multivariate
models. (#3)
- Specify different formulas for different categories in
categorical models.
- Add weakly informative default priors for the parameter class
Intercept to improve convergence of more complex
distributional models.
- Optionally display the MC standard error in the
summary
output. (#280)
- Add argument
re.form as an alias of
re_formula to the methods posterior_predict,
posterior_linpred, and predictive_error for
consistency with other packages making use of these methods. (#283)
Other changes
- Refactor many parts of the package to make it more consistent and
easier to extend.
- Show the link functions of all distributional parameters in the
summary output. (#277)
- Reduce working memory requirements when extracting posterior samples
for use in
predict and related methods thanks to Fanyi
Zhang. (#224)
- Remove deprecated aliases of functions and arguments from the
package. (#278)
- No longer support certain prior specifications, which were
previously labeled as deprecated.
- Remove the deprecated addition term
disp from the
package.
- Remove old versions of methods
fixef,
ranef, coef, and VarCorr.
- No longer support models fitted with
brms < 1.0,
which used the multivariate 'trait' syntax originally
deprecated in brms 1.0.
- Make posterior sample extraction in the
summary method
cleaner and less error prone.
- No longer fix the seed for random number generation in
brm to avoid unexpected behavior in simulation
studies.
Bug fixes
- Store
stan_funs in brmsfit objects to
allow using update on models with user-defined Stan
functions thanks to Tom Wallis. (#288)
- Fix problems in various post-processing methods when applied to
models with the reserved variable
intercept in group-level
terms thanks to the GitHub user ASKurz. (#279)
- Fix an unexpected error in
predict and related methods
when setting sample_new_levels = "gaussian" in models with
only one group-level effect. Thanks to Timothy Mastny. (#286)
brms 1.10.2
Features
- Allow setting priors on noise-free variables specified via function
me.
- Add arguments
Ksub, exact_loo and
group to method kfold for defining omitted
subsets according to a grouping variable or factor.
- Allow addition argument
se in skew_normal
models.
Bug fixes
- Ensure correct behavior of horseshoe and lasso priors in
multivariate models thanks to Donald Williams.
- Allow using
identity links on all parameters of the
wiener family thanks to Henrik Singmann. (#276)
- Use reasonable dimnames in the output of
fitted when
returning linear predictors of ordinal models thanks to the GitHub user
atrolle. (#274)
- Fix problems in
marginal_smooths occurring for
multi-membership models thanks to Hans Tierens.
brms 1.10.0
Features
- Rebuild monotonic effects from scratch to allow specifying
interactions with other variables. (#239)
- Introduce methods
posterior_linpred and
posterior_interval for consistency with other model fitting
packages based on Stan.
- Introduce function
theme_black providing a black
ggplot2 theme.
- Specify special group-level effects within the same terms as
ordinary group-level effects.
- Add argument
prob to summary, which allows
to control the width of the computed uncertainty intervals. (#259)
- Add argument
newdata to the kfold
method.
- Add several arguments to the
plot method of
marginal_effects to improve control over the appearences of
the plots.
Other changes
- Use the same noise-free variables for all model parts in measurement
error models. (#257)
- Make names of local-level terms used in the
cor_bsts
structure more informative.
- Store the
autocor argument within
brmsformula objects.
- Store posterior and prior samples in separate slots in the output of
method
hypothesis.
- No longer change the default theme of
ggplot2 when
attaching brms. (#256)
- Make sure signs of estimates are not dropped when rounding to zero
in
summary.brmsfit. (#263)
- Refactor parts of
extract_draws and
linear_predictor to be more consistent with the rest of the
package.
Bug fixes
- Do not silence the
Stan parser when calling
brm to get informative error messages about invalid
priors.
- Fix problems with spaces in priors passed to
set_prior.
- Handle non
data.frame objects correctly in
hypothesis.default.
- Fix a problem relating to the colour of points displayed in
marginal_effects.
brms 1.9.0
Features
- Perform model comparisons based on marginal likelihoods using the
methods
bridge_sampler, bayes_factor, and
post_prob all powered by the bridgesampling
package.
- Compute a Bayesian version of R-squared with the
bayes_R2 method.
- Specify non-linear models for all distributional parameters.
- Combine multiple model formulas using the
+ operator
and the helper functions lf, nlf, and
set_nl.
- Combine multiple priors using the
+ operator.
- Split the
nlpar argument of set_prior into
the three arguments resp, dpar, and
nlpar to allow for more flexible prior specifications.
Other changes
- Refactor parts of the package to prepare for the implementation of
more flexible multivariate models in future updates.
- Keep all constants in the log-posterior in order for
bridge_sampler to be working correctly.
- Reduce the amount of renaming done within the
stanfit
object.
- Rename argument
auxpar of fitted.brmsfit
to dpar.
- Use the
launch_shinystan generic provided by the
shinystan package.
- Set
bayesplot::theme_default() as the default
ggplot2 theme when attaching brms.
- Include citations of the
brms overview paper as
published in the Journal of Statistical Software.
Bug fixes
- Fix problems when calling
fitted with
hurdle_lognormal models thanks to Meghna Krishnadas.
- Fix problems when predicting
sigma in
asym_laplace models thanks to Anna Josefine Sorensen.
brms 1.8.0
Features
- Fit conditional autoregressive (CAR) models via function
cor_car thanks to the case study of Max Joseph.
- Fit spatial autoregressive (SAR) models via function
cor_sar. Currently works for families gaussian
and student.
- Implement skew normal models via family
skew_normal.
Thanks to Stephen Martin for suggestions on the parameterization.
- Add method
reloo to perform exact cross-validation for
problematic observations and kfold to perform k-fold
cross-validation thanks to the Stan Team.
- Regularize non-zero coefficients in the
horseshoe prior
thanks to Juho Piironen and Aki Vehtari.
- Add argument
new_objects to various post-processing
methods to allow for passing of data objects, which cannot be passed via
newdata.
- Improve parallel execution flexibility via the
future
package.
Other changes
- Improve efficiency and stability of ARMA models.
- Throw an error when the intercept is removed in an ordinal model
instead of silently adding it back again.
- Deprecate argument
threshold in brm and
instead recommend passing threshold directly to the ordinal
family functions.
- Throw an error instead of a message when invalid priors are
passed.
- Change the default value of the
autocor slot in
brmsfit objects to an empty cor_brms
object.
- Shorten
Stan code by combining declarations and
definitions where possible.
Bug fixes
- Fix problems in
pp_check when the variable specified in
argument x has attributes thanks to Paul Galpern.
- Fix problems when computing fitted values for truncated discrete
models based on new data thanks to Nathan Doogan.
- Fix unexpected errors when passing models, which did not properly
initialize, to various post-processing methods.
- Do not accidently drop the second dimension of matrices in
summary.brmsfit for models with only a single
observation.
brms 1.7.0
Features
- Fit latent Gaussian processes of one or more covariates via function
gp specified in the model formula (#221).
- Rework methods
fixef, ranef,
coef, and VarCorr to be more flexible and
consistent with other post-processing methods (#200).
- Generalize method
hypothesis to be applicable on all
objects coercible to a data.frame (#198).
- Visualize predictions via spaghetti plots using argument
spaghetti in marginal_effects and
marginal_smooths.
- Introduce method
add_ic to store and reuse information
criteria in fitted model objects (#220).
- Allow for negative weights in multi-membership grouping
structures.
- Introduce an
as.array method for brmsfit
objects.
Other changes
- Show output of code in HTML vignettes thanks to Ben Goodrich
(#158).
- Resolve citations in PDF vignettes thanks to Thomas Kluth
(#223).
- Improve sampling efficiency for
exgaussian models
thanks to Alex Forrence (#222).
- Also transform data points when using argument
transform in marginal_effects thanks to Markus
Gesmann.
Bug fixes
- Fix an unexpected error in
marginal_effects occurring
for some models with autocorrelation terms thanks to Markus
Gesmann.
- Fix multiple problems occurring for models with the
cor_bsts structure thanks to Andrew Ellis.
brms 1.6.1
Features
- Implement zero-one-inflated beta models via family
zero_one_inflated_beta.
- Allow for more link functions in zero-inflated and hurdle
models.
Other changes
- Ensure full compatibility with
bayesplot version
1.2.0.
- Deprecate addition argument
disp.
Bug fixes
- Fix problems when setting priors on coefficients of auxiliary
parameters when also setting priors on the corresponding coefficients of
the mean parameter. Thanks to Matti Vuorre for reporting this bug.
- Allow ordered factors to be used as grouping variables thanks to the
GitHub user itissid.
brms 1.6.0
Features
- Fit finite mixture models using family function
mixture.
- Introduce method
pp_mixture to compute posterior
probabilities of mixture component memberships thanks to a discussion
with Stephen Martin.
- Implement different ways to sample new levels of grouping factors in
predict and related methods through argument
sample_new_levels. Thanks to Tom Wallis and Jonah Gabry for
a detailed discussion about this feature.
- Add methods
loo_predict, loo_linpred, and
loo_predictive_interval for computing LOO predictions
thanks to Aki Vehtari and Jonah Gabry.
- Allow using
offset in formulas of non-linear and
auxiliary parameters.
- Allow sparse matrix multiplication in non-linear and distributional
models.
- Allow using the
identity link for all auxiliary
parameters.
- Introduce argument
negative_rt in predict
and posterior_predict to distinguish responses on the upper
and lower boundary in wiener diffusion models thanks to
Guido Biele.
- Introduce method
control_params to conveniently extract
control parameters of the NUTS sampler.
- Introduce argument
int_conditions in
marginal_effects for enhanced plotting of two-way
interactions thanks to a discussion with Thomas Kluth.
- Improve flexibility of the
conditions argument of
marginal_effects.
- Extend method
stanplot to correctly handle some new
mcmc_ plots of the bayesplot package.
Other changes
- Improve the
update method to only recompile models when
the Stan code changes.
- Warn about divergent transitions when calling
summary
or print on brmsfit objects.
- Warn about unused variables in argument
conditions when
calling marginal_effects.
- Export and document several distribution functions that were
previously kept internal.
Bug fixes
- Fix problems with the inclusion of offsets occurring for more
complicated formulas thanks to Christian Stock.
- Fix a bug that led to invalid Stan code when sampling from priors in
intercept only models thanks to Tom Wallis.
- Correctly check for category specific group-level effects in
non-ordinal models thanks to Wayne Folta.
- Fix problems in
pp_check when specifying argument
newdata together with arguments x or
group.
- Rename the last column in the output of
hypothesis to
"star" in order to avoid problems with zero length column
names thanks to the GitHub user puterleat.
- Add a missing new line statement at the end of the
summary output thanks to Thomas Kluth.
brms 1.5.1
Features
- Allow
horseshoe and lasso priors to be
applied on population-level effects of non-linear and auxiliary
parameters.
- Force recompiling
Stan models in
update.brmsfit via argument recompile.
Other changes
- Avoid indexing of matrices in non-linear models to slightly improve
sampling speed.
Bug fixes
- Fix a severe problem (introduced in version 1.5.0), when predicting
Beta models thanks to Vivian Lam.
- Fix problems when summarizing some models fitted with older version
of
brms thanks to Vivian Lam.
- Fix checks of argument
group in method
pp_check thanks to Thomas K.
- Get arguments
subset and nsamples working
correctly in marginal_smooths.
brms 1.5.0
Features
- Implement the generalized extreme value distribution via family
gen_extreme_value.
- Improve flexibility of the
horseshoe prior thanks to
Juho Piironen.
- Introduce auxiliary parameter
mu as an alternative to
specifying effects within the formula argument in function
brmsformula.
- Return fitted values of auxiliary parameters via argument
auxpar of method fitted.
- Add vignette
"brms_multilevel", in which the advanced
formula syntax of brms is explained in detail using several
examples.
Other changes
- Refactor various parts of the package to ease implementation of
mixture and multivariate models in future updates. This should not have
any user visible effects.
- Save the version number of
rstan in element
version of brmsfit objects.
Bug fixes
- Fix a rare error when predicting
von_mises models
thanks to John Kirwan.
brms 1.4.0
Features
- Fit quantile regression models via family
asym_laplace
(asymmetric Laplace distribution).
- Specify non-linear models in a (hopefully) more intuitive way using
brmsformula.
- Fix auxiliary parameters to certain values through
brmsformula.
- Allow
family to be specified in
brmsformula.
- Introduce family
frechet for modelling strictly
positive responses.
- Allow truncation and censoring at the same time.
- Introduce function
prior_ allowing to specify priors
using one-sided formulas or quote.
- Pass priors to
Stan directly without performing any
checks by setting check = FALSE in
set_prior.
- Introduce method
nsamples to extract the number of
posterior samples.
- Export the main formula parsing function
parse_bf.
- Add more options to customize two-dimensional surface plots created
by
marginal_effects or marginal_smooths.
Other changes
- Change structure of
brmsformula objects to be more
reliable and easier to extend.
- Make sure that parameter
nu never falls below
1 to reduce convergence problems when using family
student.
- Deprecate argument
nonlinear.
- Deprecate family
geometric.
- Rename
cov_fixed to cor_fixed.
- Make handling of addition terms more transparent by exporting and
documenting related functions.
- Refactor helper functions of the
fitted method to be
easier to extend in the future.
- Remove many units tests of internal functions and add tests of
user-facing functions instead.
- Import some generics from
nlme instead of
lme4 to remove dependency on the latter one.
- Do not apply
structure to NULL anymore to
get rid of warnings in R-devel.
Bug fixes
- Fix problems when fitting smoothing terms with factors as
by variables thanks to Milani Chaloupka.
- Fix a bug that could cause some monotonic effects to be ignored in
the
Stan code thanks to the GitHub user bschneider.
- Make sure that the data of models with only a single observation are
compatible with the generated
Stan code.
- Handle argument
algorithm correctly in
update.brmsfit.
- Fix a bug sometimes causing an error in
marginal_effects when using family wiener
thanks to Andrew Ellis.
- Fix problems in
fitted when applied to
zero_inflated_beta models thanks to Milani Chaloupka.
- Fix minor problems related to the prediction of autocorrelated
models.
- Fix a few minor bugs related to the backwards compatibility of
multivariate and related models fitted with
brms <
1.0.0.
brms 1.3.1
Features
- Introduce the auxiliary parameter
disc
(‘discrimination’) to be used in ordinal models. By default it is not
estimated but fixed to one.
- Create
marginal_effects plots of two-way interactions
of variables that were not explicitely modeled as interacting.
Other changes
- Move
rstan to ‘Imports’ and Rcpp to
‘Depends’ in order to avoid loading rstan into the global
environment automatically.
Bug fixes
- Fix a bug leading to unexpected errors in some S3 methods when
applied to ordinal models.
brms 1.3.0
Features
- Fit error-in-variables models using function
me in the
model formulae.
- Fit multi-membership models using function
mm in
grouping terms.
- Add families
exgaussian (exponentially modified
Gaussian distribution) and wiener (Wiener diffusion model
distribution) specifically suited to handle for response times.
- Add the
lasso prior as an alternative to the
horseshoe prior for sparse models.
- Add the methods
log_posterior,
nuts_params, rhat, and neff_ratio
for brmsfit objects to conveniently access quantities used
to diagnose sampling behavior.
- Combine chains in method
as.mcmc using argument
combine_chains.
- Estimate the auxiliary parameter
sigma in models with
known standard errors of the response by setting argument
sigma to TRUE in addition function
se.
- Allow visualizing two-dimensional smooths with the
marginal_smooths method.
Other changes
- Require argument
data to be explicitely specified in
all user facing functions.
- Refactor the
stanplot method to use
bayesplot on the backend.
- Use the
bayesplot theme as the default in all plotting
functions.
- Add the abbreviations
mo and cs to specify
monotonic and category specific effects respectively.
- Rename generated variables in the data.frames returned by
marginal_effects to avoid potential naming conflicts.
- Deprecate argument
cluster and use the native
cores argument of rstan instead.
- Remove argument
cluster_type as it is no longer
required to apply forking.
- Remove the deprecated
partial argument.
brms 1.2.0
Features
- Add the new family
hurdle_lognormal specifically suited
for zero-inflated continuous responses.
- Introduce the
pp_check method to perform various
posterior predictive checks using the bayesplot
package.
- Introduce the
marginal_smooths method to better
visualize smooth terms.
- Allow varying the scale of global shrinkage parameter of the
horseshoe prior.
- Add functions
prior and prior_string as
aliases of set_prior, the former allowing to pass arguments
without quotes "" using non-standard evaluation.
- Introduce four new vignettes explaining how to fit non-linear
models, distributional models, phylogenetic models, and monotonic
effects respectively.
- Extend the
coef method to better handle category
specific group-level effects.
- Introduce the
prior_summary method for
brmsfit objects to obtain a summary of prior distributions
applied.
- Sample from the prior of the original population-level intercept
when
sample_prior = TRUE even in models with an internal
temporary intercept used to improve sampling efficiency.
- Introduce methods
posterior_predict,
predictive_error and log_lik as (partial)
aliases of predict, residuals, and
logLik respectively.
Other changes
- Improve computation of Bayes factors in the
hypothesis
method to be less influenced by MCMC error.
- Improve documentation of default priors.
- Refactor internal structure of some formula and prior evaluating
functions. This should not have any user visible effects.
- Use the
bayesplot package as the new backend of
plot.brmsfit.
Bug fixes
- Better mimic
mgcv when parsing smooth terms to make
sure all arguments are correctly handled.
- Avoid an error occurring during the prediction of new data when
grouping factors with only a single factor level were supplied thanks to
Tom Wallis.
- Fix
marginal_effects to consistently produce plots for
all covariates in non-linear models thanks to David Auty.
- Improve the
update method to better recognize
situations where recompliation of the Stan code is
necessary thanks to Raphael P.H.
- Allow to correctly
update the sample_prior
argument to value "only".
- Fix an unexpected error occurring in many S3 methods when the
thinning rate is not a divisor of the total number of posterior samples
thanks to Paul Zerr.
brms 1.1.0
Features
- Estimate monotonic group-level effects.
- Estimate category specific group-level effects.
- Allow
t2 smooth terms based on multiple
covariates.
- Estimate interval censored data via the addition argument
cens in the model formula.
- Allow to compute
residuals also based on predicted
values instead of fitted values.
Other changes
- Use the prefix
bcs in parameter names of category
specific effects and the prefix bm in parameter names of
monotonic effects (instead of the prefix b) to simplify
their identification.
- Ensure full compatibility with
ggplot2 version
2.2.
Bug fixes
- Fix a bug that could result in incorrect threshold estimates for
cumulative and sratio models thanks to Peter
Congdon.
- Fix a bug that sometimes kept distributional
gamma
models from being compiled thanks to Tim Beechey.
- Fix a bug causing an error in
predict and related
methods when two-level factors or logical variables were used as
covariates in non-linear models thanks to Martin Schmettow.
- Fix a bug causing an error when passing lists to additional
arguments of smoothing functions thanks to Wayne Folta.
- Fix a bug causing an error in the
prior_samples method
for models with multiple group-level terms that refer to the same
grouping factor thanks to Marco Tullio Liuzza.
- Fix a bug sometimes causing an error when calling
marginal_effects for weighted models.
brms 1.0.1
\subsection{MINOR CHANGES
- Center design matrices inside the Stan code instead of inside
make_standata.
- Get rid of several warning messages occurring on CRAN.
brms 1.0.0
This is one of the largest updates of brms since its
initial release. In addition to many new features, the multivariate
'trait' syntax has been removed from the package as it was
confusing for users, required much special case coding, and was hard to
maintain. See help(brmsformula) for details of the formula
syntax applied in brms.
Features
- Allow estimating correlations between group-level effects defined
across multiple formulae (e.g., in non-linear models) by specifying IDs
in each grouping term via an extended
lme4 syntax.
- Implement distributional regression models allowing to fully predict
auxiliary parameters of the response distribution. Among many other
possibilities, this can be used to model heterogeneity of
variances.
- Zero-inflated and hurdle models do not use multivariate syntax
anymore but instead have special auxiliary parameters named
zi and hu defining zero-inflation / hurdle
probabilities.
- Implement the
von_mises family to model circular
responses.
- Introduce the
brmsfamily function for convenient
specification of family objects.
- Allow predictions of
t2 smoothing terms for new
data.
- Feature vectors as arguments for the addition argument
trunc in order to model varying truncation points.
Other changes
- Remove the
cauchy family after several months of
deprecation.
- Make sure that group-level parameter names are unambiguous by adding
double underscores thanks to the idea of the GitHub user schmettow.
- The
predict method now returns predicted probabilities
instead of absolute frequencies of samples for ordinal and categorical
models.
- Compute the linear predictor in the model block of the Stan program
instead of in the transformed parameters block. This avoids saving
samples of unnecessary parameters to disk. Thanks goes to Rick Arrano
for pointing me to this issue.
- Colour points in
marginal_effects plots if
sensible.
- Set the default of the
robust argument to
TRUE in marginal_effects.brmsfit.
Bug fixes
- Fix a bug that could occur when predicting factorial response
variables for new data. Only affects categorical and ordinal
models.
- Fix a bug that could lead to duplicated variable names in the Stan
code when sampling from priors in non-linear models thanks to Tom
Wallis.
- Fix problems when trying to pointwise evaluate non-linear formulae
in
logLik.brmsfit thanks to Tom Wallis.
- Ensure full compatibility of the
ranef and
coef methods with non-linear models.
- Fix problems that occasionally occurred when handling
dplyr datasets thanks to the GitHub user Atan1988.
brms 0.10.0
Features
- Add support for generalized additive mixed models (GAMMs). Smoothing
terms can be specified using the
s and t2
functions in the model formula.
- Introduce
as.data.frame and as.matrix
methods for brmsfit objects.
Other changes
- The
gaussian("log") family no longer implies a
log-normal distribution, but a normal distribution with log-link to
match the behavior of glm. The log-normal distribution can
now be specified via family lognormal.
- Update syntax of
Stan models to match the recommended
syntax of Stan 2.10.
Bug fixes
- The
ngrps method should now always return the correct
result for non-linear models.
- Fix problems in
marginal_effects for models using the
reserved variable intercept thanks to Frederik Aust.
- Fix a bug in the
print method of
brmshypothesis objects that could lead to duplicated and
thus invalid row names.
- Residual standard deviation parameters of multivariate models are
again correctly displayed in the output of the
summary
method.
- Fix problems when using variational Bayes algorithms with
brms while having rstan >= 2.10.0 installed
thanks to the GitHub user cwerner87.
brms 0.9.1
Features
- Allow the ‘/’ symbol in group-level terms in the
formula argument to indicate nested grouping
structures.
- Allow to compute
WAIC and LOO based on the
pointwise log-likelihood using argument pointwise to
substantially reduce memory requirements.
Other changes
- Add horizontal lines to the errorbars in
marginal_effects plots for factors.
Bug fixes
- Fix a bug that could lead to a cryptic error message when changing
some parts of the model
formula using the
update method.
- Fix a bug that could lead to an error when calling
marginal_effects for predictors that were generated with
the base::scale function thanks to Tom Wallis.
- Allow interactions of numeric and categorical predictors in
marginal_effects to be passed to the effects
argument in any order.
- Fix a bug that could lead to incorrect results of
predict and related methods when called with
newdata in models using the poly function
thanks to Brock Ferguson.
- Make sure that user-specified factor contrasts are always applied in
multivariate models.
brms 0.9.0
Features
- Add support for
monotonic effects allowing to use
ordinal predictors without assuming their categories to be
equidistant.
- Apply multivariate formula syntax in categorical models to
considerably increase modeling flexibility.
- Add the addition argument
disp to define multiplicative
factors on dispersion parameters. For linear models, disp
applies to the residual standard deviation sigma so that it
can be used to weight observations.
- Treat the fixed effects design matrix as sparse by using the
sparse argument of brm. This can considerably
reduce working memory requirements if the predictors contain many
zeros.
- Add the
cor_fixed correlation structure to allow for
fixed user-defined covariance matrices of the response variable.
- Allow to pass self-defined
Stan functions via argument
stan_funs of brm.
- Add the
expose_functions method allowing to expose
self-defined Stan functions in R.
- Extend the functionality of the
update method to allow
all model parts to be updated.
- Center the fixed effects design matrix also in multivariate models.
This may lead to increased sampling speed in models with many
predictors.
Other changes
- Refactor
Stan code and data generating functions to be
more consistent and easier to extent.
- Improve checks of user-define prior specifications.
- Warn about models that have not converged.
- Make sure that regression curves computed by the
marginal_effects method are always smooth.
- Allow to define category specific effects in ordinal models directly
within the
formula argument.
Bug fixes
- Fix problems in the generated
Stan code when using very
long non-linear model formulas thanks to Emmanuel Charpentier.
- Fix a bug that prohibited to change priors on single standard
deviation parameters in non-linear models thanks to Emmanuel
Charpentier.
- Fix a bug that prohibited to use nested grouping factors in
non-linear models thanks to Tom Wallis.
- Fix a bug in the linear predictor computation within
R,
occurring for ordinal models with multiple category specific effects.
This could lead to incorrect outputs of predict,
fitted, and logLik for these models.
- Make sure that the global
"contrasts" option is not
used when post-processing a model.
brms 0.8.0
Features
- Implement generalized non-linear models, which can be specified with
the help of the
nonlinear argument in
brm.
- Compute and plot marginal effects using the
marginal_effects method thanks to the help of Ruben
Arslan.
- Implement zero-inflated beta models through family
zero_inflated_beta thanks to the idea of Ali Roshan
Ghias.
- Allow to restrict domain of fixed effects and autocorrelation
parameters using new arguments
lb and ub in
function set_prior thanks to the idea of Joel Gombin.
- Add an
as.mcmc method for compatibility with the
coda package.
- Allow to call the
WAIC, LOO, and
logLik methods with new data.
Other changes
- Make sure that
brms is fully compatible with
loo version 0.1.5.
- Optionally define the intercept as an ordinary fixed effect to avoid
the reparametrization via centering of the fixed effects design
matrix.
- Do not compute the WAIC in
summary by default anymore
to reduce computation time of the method for larger models.
- The
cauchy family is now deprecated and will be removed
soon as it often has convergence issues and not much practical
application anyway.
- Change the default settings of the number of chains and warmup
samples to the defaults of
rstan (i.e.,
chains = 4 and warmup = iter / 2).
- Do not remove bad behaving chains anymore as they may point to
general convergence problems that are dangerous to ignore.
- Improve flexibility of the
theme argument in all
plotting functions.
- Only show the legend once per page, when computing trace and density
plots with the
plot method.
- Move code of self-defined
Stan functions to
inst/chunks and incorporate them into the models using
rstan::stanc_builder. Also, add unit tests for these
functions.
Bug fixes
- Fix problems when predicting with
newdata for
zero-inflated and hurdle models thanks to Ruben Arslan.
- Fix problems when predicting with
newdata if it is a
subset of the data stored in a brmsfit object thanks to
Ruben Arslan.
- Fix data preparation for multivariate models if some responses are
NA thanks to Raphael Royaute.
- Fix a bug in the
predict method occurring for some
multivariate models so that it now always returns the predictions of all
response variables, not just the first one.
- Fix a bug in the log-likelihood computation of
hurdle_poisson and hurdle_negbinomial models.
This may lead to minor changes in the values obtained by
WAIC and LOO for these models.
- Fix some backwards compatibility issues of models fitted with
version <= 0.5.0 thanks to Ulf Koether.
brms 0.7.0
Features
- Use variational inference algorithms as alternative to the NUTS
sampler by specifying argument
algorithm in the
brm function.
- Implement beta regression models through family
Beta.
- Implement zero-inflated binomial models through family
zero_inflated_binomial.
- Implement multiplicative effects for family
bernoulli
to fit (among others) 2PL IRT models.
- Generalize the
formula argument for zero-inflated and
hurdle models so that predictors can be included in only one of the two
model parts thanks to the idea of Wade Blanchard.
- Combine fixed and random effects estimates using the new
coef method.
- Call the
residuals method with newdata
thanks to the idea of Friederike Holz-Ebeling.
- Allow new levels of random effects grouping factors in the
predict, fitted, and residuals
methods using argument allow_new_levels.
- Selectively exclude random effects in the
predict,
fitted, and residuals methods using argument
re_formula.
- Add a
plot method for objects returned by method
hypothesis to visualize prior and posterior distributions
of the hypotheses being tested.
Other changes
- Improve evaluation of the response part of the
formula
argument to reliably allow terms with more than one variable (e.g.,
y/x ~ 1).
- Improve sampling efficiency of models containing many fixed effects
through centering the fixed effects design matrix thanks to Wayne
Folta.
- Improve sampling efficiency of models containing uncorrelated random
effects specified by means of
(random || group) terms in
formula thanks to Ali Roshan Ghias.
- Utilize user-defined functions in the
Stan code of
ordinal models to improve readability as well as sampling
efficiency.
- Make sure that model comparisons using
LOO or
WAIC are only performed when models are based on the same
responses.
- Use some generic functions of the
lme4 package to avoid
unnecessary function masking. This leads to a change in the argument
order of method VarCorr.
- Change the
ggplot theme in the plot method
through argument theme.
- Remove the
n. prefix in arguments n.iter,
n.warmup, n.thin, n.chains, and
n.cluster of the brm function. The old
argument names remain usable as deprecated aliases.
- Amend names of random effects parameters to simplify matching with
their respective grouping factor levels.
Bug fixes
- Fix a bug in the
hypothesis method that could cause
valid model parameters to be falsely reported as invalid.
- Fix a bug in the
prior_samples method that could cause
prior samples of parameters of the same class to be artificially
correlated.
- Fix
Stan code of linear models with moving-average
effects and non-identity link functions so that they no longer contain
code related solely to autoregressive effects.
- Fix a bug in the evaluation of
formula that could cause
complicated random effects terms to be falsely treated as fixed
effects.
- Fix several bugs when calling the
fitted and
predict methods with newdata thanks to Ali
Roshan Ghias.
brms 0.6.0
Features
- Add support for zero-inflated and hurdle models thanks to the idea
of Scott Baldwin.
- Implement inverse gaussian models through family
inverse.gaussian.
- Allow to specify truncation boundaries of the response variable
thanks to the idea of Maciej Beresewicz.
- Add support for autoregressive (AR) effects of residuals, which can
be modeled using the
cor_ar and cor_arma
functions.
- Stationary autoregressive-moving-average (ARMA) effects of order one
can now also be fitted using special covariance matrices.
- Implement multivariate student-t models.
- Binomial and ordinal families now support the
cauchit
link function.
- Allow family functions to be used in the
family
argument.
- Easy access to various
rstan plotting functions using
the stanplot method.
- Implement horseshoe priors to model sparsity in fixed effects
coefficients thanks to the idea of Josh Chang.
- Automatically scale default standard deviation priors so that they
remain only weakly informative independent on the response scale.
- Report model weights computed by the
loo package when
comparing multiple fitted models.
Other changes
- Separate the fixed effects Intercept from other fixed effects in the
Stan code to slightly improve sampling efficiency.
- Move autoregressive (AR) effects of the response from the
cor_ar to the cor_arr function as the result
of implementing AR effects of residuals.
- Improve checks on argument
newdata used in the
fitted and predict method.
- Method
standata is now the only way to extract data
that was passed to Stan from a brmsfit
object.
- Slightly improve
Stan code for models containing no
random effects.
- Change the default prior of the degrees of freedom of the
student family to gamma(2,0.1).
- Improve readability of the output of method
VarCorr.
- Export the
make_stancode function to give users direct
access to Stan code generated by brms.
- Rename the
brmdata function to
make_standata. The former remains usable as a deprecated
alias.
- Improve documentation to better explain differences in
autoregressive effects across R packages.
Bug fixes
- Fix a bug that could cause an unexpected error when the
predict method was called with newdata.
- Avoid side effects of the
rstan compilation routines
that could occasionally cause R to crash.
- Make
brms work correctly with loo version
0.1.3 thanks to Mauricio Garnier Villarreal and Jonah Gabry.
- Fix a bug that could cause WAIC and LOO estimates to be slightly
incorrect for
gaussian models with log
link.
brms 0.5.0
Features
- Compute the Watanabe-Akaike information criterion (WAIC) and
leave-one-out cross-validation (LOO) using the
loo
package.
- Provide an interface to
shinystan with S3 method
launch_shiny.
- New functions
get_prior and set_prior to
make prior specifications easier.
- Log-likelihood values and posterior predictive samples can now be
calculated within R after the model has been fitted.
- Make predictions based on new data using S3 method
predict.
- Allow for customized covariance structures of grouping factors with
multiple random effects.
- New S3 methods
fitted and residuals to
compute fitted values and residuals, respectively.
Other changes
- Arguments
WAIC and predict are removed
from the brm function, as they are no longer
necessary.
- New argument
cluster_type in function brm
allowing to choose the cluster type created by the parallel
package.
- Remove chains that fail to initialize while sampling in parallel
leaving the other chains untouched.
- Redesign trace and density plots to be faster and more stable.
- S3 method
VarCorr now always returns covariance
matrices regardless of whether correlations were estimated.
Bug fixes
- Fix a bug in S3 method
hypothesis related to the
calculation of Bayes-factors for point hypotheses.
- User-defined covariance matrices that are not strictly positive
definite for numerical reasons should now be handled correctly.
- Fix problems when a factor is used as fixed effect and as random
effects grouping variable at the same time thanks to Ulf Koether.
- Fix minor issues with internal parameter naming.
- Perform additional checking on user defined priors.
brms 0.4.1
Features
- Allow for sampling from all specified proper priors in the
model.
- Compute Bayes-factors for point hypotheses in S3 method
hypothesis.
Bug fixes
- Fix a bug that could cause an error for models with multiple
grouping factors thanks to Jonathan Williams.
- Fix a bug that could cause an error for weighted poisson and
exponential models.
brms 0.4.0
Features
- Implement the Watanabe-Akaike Information Criterion (WAIC).
- Implement the
||-syntax for random effects allowing for
the estimation of random effects standard deviations without the
estimation of correlations.
- Allow to combine multiple grouping factors within one random effects
argument using the interaction symbol
:.
- Generalize S3 method
hypothesis to be used with all
parameter classes not just fixed effects. In addition, one-sided
hypothesis testing is now possible.
- Introduce new family
multigaussian allowing for
multivariate normal regression.
- Introduce new family
bernoulli for dichotomous response
variables as a more efficient alternative to families
binomial or categorical in this special
case.
Other changes
- Slightly change the internal structure of brms to reflect that
rstan is finally on CRAN.
- Thoroughly check validity of the response variable before the data
is passed to
Stan.
- Prohibit variable names containing double underscores
__ to avoid naming conflicts.
- Allow function calls with several arguments
(e.g.
poly(x,3)) in the formula argument of function
brm.
- Always center random effects estimates returned by S3 method
ranef around zero.
- Prevent the use of customized covariance matrices for grouping
factors with multiple random effects for now.
- Remove any experimental
JAGS code from the
package.
Bug fixes
- Fix a bug in S3 method
hypothesis leading to an error
when numbers with decimal places were used in the formulation of the
hypotheses.
- Fix a bug in S3 method
ranef that caused an error for
grouping factors with only one random effect.
- Fix a bug that could cause the fixed intercept to be wrongly
estimated in the presence of multiple random intercepts thanks to Jarrod
Hadfield.
brms 0.3.0
Features
- Introduce new methods
parnames and
posterior_samples for class ‘brmsfit’ to extract parameter
names and posterior samples for given parameters, respectively.
- Introduce new method
hypothesis for class
brmsfit allowing to test non-linear hypotheses concerning
fixed effects.
- Introduce new argument
addition in function brm to get
a more flexible approach in specifying additional information on the
response variable (e.g., standard errors for meta-analysis).
Alternatively, this information can also be passed to the
formula argument directly.
- Introduce weighted and censored regressions through argument
addition of function brm.
- Introduce new argument
cov.ranef in the
brm function allowing for customized covariance structures
of random effects thanks to the idea of Boby Mathew.
- Introduce new argument
autocor in function brm allowing
for autocorrelation of the response variable.
- Introduce new functions
cor.ar, cor.ma,
and cor.arma, to be used with argument autocor
for modeling autoregressive, moving-average, and
autoregressive-moving-average models.
Other changes
- Amend parametrization of random effects to increase efficiency of
the sampling algorithms.
- Improve vectorization of sampling statements.
Bug fixes
- Fix a bug that could cause an error when fitting poisson models
while
predict = TRUE.
- Fix a bug that caused an error when sampling only one chain while
silent = TRUE.
brms 0.2.0
Features
- New S3 class
brmsfit to be returned by the
brm function.
- New methods for class
brmsfit: summary,
print, plot, predict,
fixef, ranef, VarCorr,
nobs, ngrps, and formula.
- Introduce new argument
silent in the brm
function, allowing to suppress most of Stan’s intermediate
output.
- Introduce new families
negbinomial (negative binomial)
and geometric to allow for more flexibility in modeling
count data.
Other changes
- Amend warning and error messages to make them more informative.
- Correct examples in the documentation.
- Extend the README file.
Bug fixes
- Fix a bug that caused problems when formulas contained more
complicated function calls.
- Fix a bug that caused an error when posterior predictives were
sampled for family
cumulative.
- Fix a bug that prohibited to use of improper flat priors for
parameters that have proper priors by default.
brms 0.1.0