HTLR: Bayesian Logistic Regression with Heavy-Tailed Priors
Efficient Bayesian multinomial logistic regression based on heavy-tailed
  (hyper-LASSO, non-convex) priors. The posterior of coefficients and hyper-parameters
  is sampled with restricted Gibbs sampling for leveraging the high-dimensionality and
  Hamiltonian Monte Carlo for handling the high-correlation among coefficients. A detailed
  description of the method: Li and Yao (2018), 
  Journal of Statistical Computation and Simulation, 88:14, 2827-2851, <arXiv:1405.3319>.
| Version: | 
0.4-4 | 
| Depends: | 
R (≥ 3.1.0) | 
| Imports: | 
Rcpp (≥ 0.12.0), BCBCSF, glmnet, magrittr | 
| LinkingTo: | 
Rcpp (≥ 0.12.0), RcppArmadillo | 
| Suggests: | 
ggplot2, corrplot, testthat (≥ 2.1.0), bayesplot, knitr, rmarkdown | 
| Published: | 
2022-10-22 | 
| Author: | 
Longhai Li   [aut,
    cre],
  Steven Liu [aut] | 
| Maintainer: | 
Longhai Li  <longhai at math.usask.ca> | 
| BugReports: | 
https://github.com/longhaiSK/HTLR/issues | 
| License: | 
GPL-3 | 
| URL: | 
https://longhaisk.github.io/HTLR/ | 
| NeedsCompilation: | 
yes | 
| SystemRequirements: | 
C++11 | 
| Citation: | 
HTLR citation info  | 
| Materials: | 
README NEWS  | 
| CRAN checks: | 
HTLR results | 
Documentation:
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