emBayes
Robust Bayesian Variable Selection via Expectation-Maximization
Variable selection methods have been extensively developed for analyzing highdimensional omics data within both the frequentist and Bayesian frameworks. This package provides implementations of the spike-and-slab quantile (group) LASSO which have been developed along the line of Bayesian hierarchical models but deeply rooted in frequentist regularization methods by utilizing Expectation–Maximization (EM) algorithm. The spike-and-slab quantile LASSO can handle data irregularity in terms of skewness and outliers in response variables, compared to its non-robust alternative, the spike-and-slab LASSO, which has also been implemented in the package. In addition, procedures for fitting the spike-and-slab quantile group LASSO and its non-robust counterpart have been implemented in the form of quantile/least-square varying coefficient mixed effect models for high-dimensional longitudinal data. The core module of this package is developed in 'C++'.
Versions across snapshots
| Version | Repository | File | Size |
|---|---|---|---|
0.1.6 |
rolling source/ R- | emBayes_0.1.6.tar.gz |
119.5 KiB |
0.1.6 |
latest source/ R- | emBayes_0.1.6.tar.gz |
119.5 KiB |
0.1.6 |
2026-04-09 windows/windows R-4.5 | emBayes_0.1.6.zip |
653.7 KiB |