Package: sahpm 1.0.1

Arnab Maity

sahpm: Variable Selection using Simulated Annealing

Highest posterior model is widely accepted as a good model among available models. In terms of variable selection highest posterior model is often the true model. Our stochastic search process SAHPM based on simulated annealing maximization method tries to find the highest posterior model by maximizing the model space with respect to the posterior probabilities of the models. This package currently contains the SAHPM method only for linear models. The codes for GLM will be added in future.

Authors:Arnab Maity [aut, cre], Sanjib Basu [ctb]

sahpm_1.0.1.tar.gz
sahpm_1.0.1.zip(r-4.7)sahpm_1.0.1.zip(r-4.6)sahpm_1.0.1.zip(r-4.5)
sahpm_1.0.1.tgz(r-4.6-any)sahpm_1.0.1.tgz(r-4.5-any)
sahpm_1.0.1.tar.gz(r-4.7-any)sahpm_1.0.1.tar.gz(r-4.6-any)
sahpm_1.0.1.tgz(r-4.6-emscripten)
manual.pdf |manual.html
card.svg |card.png
sahpm/json (API)

# Install 'sahpm' in R:
install.packages('sahpm', repos = c('https://cranhaven.r-universe.dev', 'https://cloud.r-project.org'))

Bug tracker:https://github.com/cranhaven/cranhaven.r-universe.dev/issues

On CRAN:

Conda:

archivedpackagesr-universe

2.40 score 5 stars 100 downloads 1 exports 1 dependencies

Last updated from:4e15be3dc3 (on package/sahpm). Checks:7 NOTE, 2 OK. Indexed: no.

TargetResultTimeFilesSyslog
linux-devel-x86_64NOTE79
source / vignettesOK163
linux-release-x86_64NOTE92
macos-release-arm64NOTE88
macos-oldrel-arm64NOTE106
windows-develNOTE64
windows-releaseNOTE84
windows-oldrelNOTE95
wasm-releaseOK85

Exports:sahpmlm

Dependencies:mvtnorm