High-dimensional multi-study robust factor model
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To robustly extract meaningful features from data derived from multiple heterogeneous sources, we introduce a high-dimensional multi-study robust factor model, called MultiRFM, which learns latent features and accounts for the heterogeneity among sources.
“MultiRFM” depends on the ‘Rcpp’ and ‘RcppArmadillo’ package, which requires appropriate setup of computer. For the users that have set up system properly for compiling C++ files, the following installation command will work.
### Install from CRAN
install.packages("MultiRFM")
### Install from github
if (!require("remotes", quietly = TRUE))
install.packages("remotes")
remotes::install_github("feiyoung/MultiRFM")
For usage examples and guided walkthroughs, check the
vignettes directory of the repo.
For the codes in simulation study, check the simuCodes
directory of the repo.
MultiRFM version 1.1 released! (2024-12-11)