Universiteit Leiden

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Dissertation

Information-theoretic partition-based models for interpretable machine learning

In this dissertation, we study partition-based models that can be used both for interpretable predictive modeling and for understanding data via interpretable patterns.

Author
L. Yang
Date
20 September 2024
Links
Thesis in Leiden Repository

Specifically, we study probabilistic rule-based models for multi-class classification and histogram models for discretization, explanatory data analysis, and conditional mutual information estimation.

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