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Main Authors: Lin, Siyi, Gao, Chongming, Chen, Jiawei, Zhou, Sheng, Hu, Binbin, Feng, Yan, Chen, Chun, Wang, Can
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.12008
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author Lin, Siyi
Gao, Chongming
Chen, Jiawei
Zhou, Sheng
Hu, Binbin
Feng, Yan
Chen, Chun
Wang, Can
author_facet Lin, Siyi
Gao, Chongming
Chen, Jiawei
Zhou, Sheng
Hu, Binbin
Feng, Yan
Chen, Chun
Wang, Can
contents Recommendation Systems (RS) are often plagued by popularity bias. When training a recommendation model on a typically long-tailed dataset, the model tends to not only inherit this bias but often exacerbate it, resulting in over-representation of popular items in the recommendation lists. This study conducts comprehensive empirical and theoretical analyses to expose the root causes of this phenomenon, yielding two core insights: 1) Item popularity is memorized in the principal spectrum of the score matrix predicted by the recommendation model; 2) The dimension collapse phenomenon amplifies the relative prominence of the principal spectrum, thereby intensifying the popularity bias. Building on these insights, we propose a novel debiasing strategy that leverages a spectral norm regularizer to penalize the magnitude of the principal singular value. We have developed an efficient algorithm to expedite the calculation of the spectral norm by exploiting the spectral property of the score matrix. Extensive experiments across seven real-world datasets and three testing paradigms have been conducted to validate the superiority of the proposed method.
format Preprint
id arxiv_https___arxiv_org_abs_2404_12008
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle How Do Recommendation Models Amplify Popularity Bias? An Analysis from the Spectral Perspective
Lin, Siyi
Gao, Chongming
Chen, Jiawei
Zhou, Sheng
Hu, Binbin
Feng, Yan
Chen, Chun
Wang, Can
Information Retrieval
Artificial Intelligence
Recommendation Systems (RS) are often plagued by popularity bias. When training a recommendation model on a typically long-tailed dataset, the model tends to not only inherit this bias but often exacerbate it, resulting in over-representation of popular items in the recommendation lists. This study conducts comprehensive empirical and theoretical analyses to expose the root causes of this phenomenon, yielding two core insights: 1) Item popularity is memorized in the principal spectrum of the score matrix predicted by the recommendation model; 2) The dimension collapse phenomenon amplifies the relative prominence of the principal spectrum, thereby intensifying the popularity bias. Building on these insights, we propose a novel debiasing strategy that leverages a spectral norm regularizer to penalize the magnitude of the principal singular value. We have developed an efficient algorithm to expedite the calculation of the spectral norm by exploiting the spectral property of the score matrix. Extensive experiments across seven real-world datasets and three testing paradigms have been conducted to validate the superiority of the proposed method.
title How Do Recommendation Models Amplify Popularity Bias? An Analysis from the Spectral Perspective
topic Information Retrieval
Artificial Intelligence
url https://arxiv.org/abs/2404.12008