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Causal Entropy and Information Gain for Measuring Causal Control

Title: Causal Entropy and Information Gain for Measuring Causal Control
Authors: Simoes, Francisco Nunes Ferreira Quialheiro; Dastani, Mehdi; van Ommen, Thijs; Sub Intelligent Systems; Sub Algorithmic Data Analysis; Intelligent Systems; Nowaczyk, Sławomir; Biecek, Przemysław; Chung, Neo Christopher; Vallati, Mauro; Skruch, Paweł; Jaworek-Korjakowska, Joanna; Parkinson, Simon; Nikitas, Alexandros; Atzmüller, Martin; Kliegr, Tomáš; Schmid, Ute; Bobek, Szymon; Lavrac, Nada; Peeters, Marieke; van Dierendonck, Roland; Robben, Saskia; Mercier-Laurent, Eunika; Kayakutlu, Gülgün; Owoc, Mieczyslaw Lech; Mason, Karl; Wahid, Abdul; Bruno, Pierangela; Calimeri, Francesco; Cauteruccio, Francesco; Terracina, Giorgio; Wolter, Diedrich; Leidner, Jochen L.; Kohlhase, Michael; Dimitrova, Vania
Publication Year: 2024
Subject Terms: Causal Inference; Explainable Artificial Intelligence; Information Theory; Interpretable Machine Learning; Taverne; General Computer Science; General Mathematics
Description: Artificial intelligence models and methods commonly lack causal interpretability. Despite the advancements in interpretable machine learning (IML) methods, they frequently assign importance to features which lack causal influence on the outcome variable. Selecting causally relevant features among those identified as relevant by these methods, or even before model training, would offer a solution. Feature selection methods utilizing information theoretical quantities have been successful in identifying statistically relevant features. However, the information theoretical quantities they are based on do not incorporate causality, rendering them unsuitable for such scenarios. To address this challenge, this article proposes information theoretical quantities that incorporate the causal structure of the system, which can be used to evaluate causal importance of features for some given outcome variable. Specifically, we introduce causal versions of entropy and mutual information, termed causal entropy and causal information gain, which are designed to assess how much control a feature provides over the outcome variable. These newly defined quantities capture changes in the entropy of a variable resulting from interventions on other variables. Fundamental results connecting these quantities to the existence of causal effects are derived. The use of causal information gain in feature selection is demonstrated, highlighting its superiority over standard mutual information in revealing which features provide control over a chosen outcome variable. Our investigation paves the way for the development of methods with improved interpretability in domains involving causation.
Document Type: book part
File Description: application/pdf
Language: English
ISSN: 1865-0929
Relation: https://dspace.library.uu.nl/handle/1874/482488
Availability: https://dspace.library.uu.nl/handle/1874/482488
Rights: info:eu-repo/semantics/OpenAccess
Accession Number: edsbas.623B45CE
Database: BASE