@inproceedings{8771792f7e2e4a1c91f8cdfab317a284,
title = "A Counterfactual Framework for Learning and Evaluating Explanations for Recommender Systems",
abstract = "In the field of recommender systems, explainability remains a pivotal yet challenging aspect. To address this, we introduce the Learning to eXplain Recommendations (LXR) framework, a post-hoc, model-agnostic approach designed for providing counterfactual explanations. LXR is compatible with any differentiable recommender algorithm and scores the relevance of user data in relation to recommended items. A distinctive feature of LXR is its use of novel self-supervised counterfactual loss terms, which effectively highlight the most influential user data responsible for a specific recommended item. Additionally, we propose several innovative counterfactual evaluation metrics specifically tailored for assessing the quality of explanations in recommender systems. Our code is available on our GitHub repository: https://github.com/DeltaLabTLV/LXR.",
keywords = "attributions, counterfactual explanations, explainable ai, explanation evaluation, interpretability, recommender systems",
author = "Oren Barkan and Veronika Bogina and Liya Gurevitch and Yuval Asher and Noam Koenigstein",
note = "Publisher Copyright: {\textcopyright} 2024 Owner/Author.; 33rd ACM Web Conference, WWW 2024 ; Conference date: 13-05-2024 Through 17-05-2024",
year = "2024",
month = may,
day = "13",
doi = "10.1145/3589334.3645560",
language = "الإنجليزيّة",
series = "WWW 2024 - Proceedings of the ACM Web Conference",
pages = "3723--3733",
booktitle = "WWW 2024 - Proceedings of the ACM Web Conference",
}