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Autori principali: Jin, Jiarui, He, Zexue, Yang, Mengyue, Zhang, Weinan, Yu, Yong, Wang, Jun, McAuley, Julian
Natura: Preprint
Pubblicazione: 2024
Soggetti:
Accesso online:https://arxiv.org/abs/2401.12553
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author Jin, Jiarui
He, Zexue
Yang, Mengyue
Zhang, Weinan
Yu, Yong
Wang, Jun
McAuley, Julian
author_facet Jin, Jiarui
He, Zexue
Yang, Mengyue
Zhang, Weinan
Yu, Yong
Wang, Jun
McAuley, Julian
contents Ranking items regarding individual user interests is a core technique of multiple downstream tasks such as recommender systems. Learning such a personalized ranker typically relies on the implicit feedback from users' past click-through behaviors. However, collected feedback is biased toward previously highly-ranked items and directly learning from it would result in a "rich-get-richer" phenomenon. In this paper, we propose a simple yet sufficient unbiased learning-to-rank paradigm named InfoRank that aims to simultaneously address both position and popularity biases. We begin by consolidating the impacts of those biases into a single observation factor, thereby providing a unified approach to addressing bias-related issues. Subsequently, we minimize the mutual information between the observation estimation and the relevance estimation conditioned on the input features. By doing so, our relevance estimation can be proved to be free of bias. To implement InfoRank, we first incorporate an attention mechanism to capture latent correlations within user-item features, thereby generating estimations of observation and relevance. We then introduce a regularization term, grounded in conditional mutual information, to promote conditional independence between relevance estimation and observation estimation. Experimental evaluations conducted across three extensive recommendation and search datasets reveal that InfoRank learns more precise and unbiased ranking strategies.
format Preprint
id arxiv_https___arxiv_org_abs_2401_12553
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle InfoRank: Unbiased Learning-to-Rank via Conditional Mutual Information Minimization
Jin, Jiarui
He, Zexue
Yang, Mengyue
Zhang, Weinan
Yu, Yong
Wang, Jun
McAuley, Julian
Information Retrieval
Ranking items regarding individual user interests is a core technique of multiple downstream tasks such as recommender systems. Learning such a personalized ranker typically relies on the implicit feedback from users' past click-through behaviors. However, collected feedback is biased toward previously highly-ranked items and directly learning from it would result in a "rich-get-richer" phenomenon. In this paper, we propose a simple yet sufficient unbiased learning-to-rank paradigm named InfoRank that aims to simultaneously address both position and popularity biases. We begin by consolidating the impacts of those biases into a single observation factor, thereby providing a unified approach to addressing bias-related issues. Subsequently, we minimize the mutual information between the observation estimation and the relevance estimation conditioned on the input features. By doing so, our relevance estimation can be proved to be free of bias. To implement InfoRank, we first incorporate an attention mechanism to capture latent correlations within user-item features, thereby generating estimations of observation and relevance. We then introduce a regularization term, grounded in conditional mutual information, to promote conditional independence between relevance estimation and observation estimation. Experimental evaluations conducted across three extensive recommendation and search datasets reveal that InfoRank learns more precise and unbiased ranking strategies.
title InfoRank: Unbiased Learning-to-Rank via Conditional Mutual Information Minimization
topic Information Retrieval
url https://arxiv.org/abs/2401.12553