The goal of orthoDr is to use an orthogonality constrained optimization algorithm to solve a variety of dimension reduction problems in the semiparametric framework.
You can install the released version of orthoDr from CRAN with:
This package implements the orthogonality constrained (Stiefel manifold) optimization approach proposed by Wen & Yin (2013). A drop-in solver ortho_optim() works just the same as the optim() function. Relying on this optimization approach, we also implemented a collection of dimension reduction models for survival analysis, regression, and personalized medicine.
We also implemented several methods and functions for comparison, testing and utilization purposes
hMave: This is a direct R translation of the hMave MATLAB code by Xia, Zhang & Xu (2010)pSAVE: partial-SAVE in Feng, Wen, Yu & Zhu (2013)dist_cross(): kernel distances matrix between two sets of data, as an extension of dist()distance(): distance correlation between two linear spacessilverman(): Silverman’s rule of thumb bandwidth