<?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>olawaleawe.r-universe.dev</title><link>https://olawaleawe.r-universe.dev</link><description>Recent package updates in olawaleawe</description><generator>R-universe</generator><image><url>https://github.com/olawaleawe.png</url><title>R packages by olawaleawe</title><link>https://olawaleawe.r-universe.dev</link></image><lastBuildDate>Thu, 18 Jun 2026 15:33:46 GMT</lastBuildDate><item><title>[olawaleawe] civic.icarm 0.2.0</title><author>olawaleawe@gmail.com (Olushina Olawale Awe)</author><description>A general-purpose framework for Interpretable
Civic-Accountable and Responsible Machine Learning (ICARM).
Works with any clean tabular data and automatically detects
whether a task is binary classification, multi-class
classification, or regression from the target variable type.
Provides a single unified entry point civic_fit() alongside
tidy interfaces for global and local model explanations,
group-level fairness auditing, probability calibration,
multi-model comparison, threshold analysis, and reproducible
audit trails. Designed to support the DataCitizen-Pro research
agenda at Ludwigsburg University of Education: developing data
literacy, statistical reasoning, and democratic judgment
formation in civic and political teacher education. References:
Biecek (2018) &lt;doi:10.18637/jss.v085.i04&gt;, Kuhn (2008)
&lt;doi:10.18637/jss.v028.i05&gt;, Awe (2025)
&lt;https://github.com/Olawaleawe/civic.icarm&gt;.</description><link>https://github.com/r-universe/olawaleawe/actions/runs/27775918540</link><pubDate>Thu, 18 Jun 2026 15:33:46 GMT</pubDate><r:package>civic.icarm</r:package><r:version>0.2.0</r:version><r:status>success</r:status><r:repository>https://olawaleawe.r-universe.dev</r:repository><r:upstream>https://github.com/olawaleawe/civic.icarm</r:upstream></item></channel></rss>