<?xml version="1.0" encoding="utf-8" ?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom" xmlns:r="https://r-universe.dev"><channel><title>ldongeunl.r-universe.dev</title><link>https://ldongeunl.r-universe.dev</link><description>Recent package updates in ldongeunl</description><generator>R-universe</generator><image><url>https://github.com/ldongeunl.png</url><title>R packages by ldongeunl</title><link>https://ldongeunl.r-universe.dev</link></image><lastBuildDate>Mon, 26 Jan 2026 13:06:34 GMT</lastBuildDate><item><title>[ldongeunl] bartXViz 1.0.11</title><author>ldongeun.leel@gmail.com (Dong-eun Lee)</author><description>Complex machine learning models are often difficult to
interpret. Shapley values serve as a powerful tool to
understand and explain why a model makes a particular
prediction. This package computes variable contributions using
permutation-based Shapley values for Bayesian Additive
Regression Trees (BART) and its extension with
Post-Stratification (BARP). The permutation-based SHAP method
proposed by Strumbel and Kononenko (2014)
&lt;doi:10.1007/s10115-013-0679-x&gt; is grounded in data obtained
via MCMC sampling. Similar to the BART model introduced by
Chipman, George, and McCulloch (2010) &lt;doi:10.1214/09-AOAS285&gt;,
this package leverages Bayesian posterior samples generated
during model estimation, allowing variable contributions to be
computed without requiring additional sampling. The BART model
is designed to work with the following R packages: 'BART'
&lt;doi:10.18637/jss.v097.i01&gt;, 'bartMachine'
&lt;doi:10.18637/jss.v070.i04&gt;, and 'dbarts'
&lt;https://CRAN.R-project.org/package=dbarts&gt;. For XGBoost and
baseline adjustments, the approach by Lundberg et al. (2020)
&lt;doi:10.1038/s42256-019-0138-9&gt; is also considered. The BARP
model proposed by Bisbee (2019) &lt;doi:10.1017/S0003055419000480&gt;
was implemented with reference to
&lt;https://github.com/jbisbee1/BARP&gt; and is designed to work with
modified functions based on that implementation. BARP extends
post-stratification by computing variable contributions within
each stratum defined by stratifying variables. The resulting
Shapley values are visualized through both global and local
explanation methods.</description><link>https://github.com/r-universe/ldongeunl/actions/runs/28668647647</link><pubDate>Mon, 26 Jan 2026 13:06:34 GMT</pubDate><r:package>bartXViz</r:package><r:version>1.0.11</r:version><r:status>success</r:status><r:repository>https://ldongeunl.r-universe.dev</r:repository><r:upstream>https://github.com/ldongeunl/bartxviz</r:upstream></item></channel></rss>