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Hauptverfasser: Ning, Wentao, Cheng, Reynold, Yan, Xiao, Kao, Ben, Huo, Nan, Haldar, Nur AI Hasan, Tang, Bo
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2402.07425
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author Ning, Wentao
Cheng, Reynold
Yan, Xiao
Kao, Ben
Huo, Nan
Haldar, Nur AI Hasan
Tang, Bo
author_facet Ning, Wentao
Cheng, Reynold
Yan, Xiao
Kao, Ben
Huo, Nan
Haldar, Nur AI Hasan
Tang, Bo
contents Global popularity (GP) bias is the phenomenon that popular items are recommended much more frequently than they should be, which goes against the goal of providing personalized recommendations and harms user experience and recommendation accuracy. Many methods have been proposed to reduce GP bias but they fail to notice the fundamental problem of GP, i.e., it considers popularity from a \textit{global} perspective of \textit{all users} and uses a single set of popular items, and thus cannot capture the interests of individual users. As such, we propose a user-aware version of item popularity named \textit{personal popularity} (PP), which identifies different popular items for each user by considering the users that share similar interests. As PP models the preferences of individual users, it naturally helps to produce personalized recommendations and mitigate GP bias. To integrate PP into recommendation, we design a general \textit{personal popularity aware counterfactual} (PPAC) framework, which adapts easily to existing recommendation models. In particular, PPAC recognizes that PP and GP have both direct and indirect effects on recommendations and controls direct effects with counterfactual inference techniques for unbiased recommendations. All codes and datasets are available at \url{https://github.com/Stevenn9981/PPAC}.
format Preprint
id arxiv_https___arxiv_org_abs_2402_07425
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Debiasing Recommendation with Personal Popularity
Ning, Wentao
Cheng, Reynold
Yan, Xiao
Kao, Ben
Huo, Nan
Haldar, Nur AI Hasan
Tang, Bo
Information Retrieval
Global popularity (GP) bias is the phenomenon that popular items are recommended much more frequently than they should be, which goes against the goal of providing personalized recommendations and harms user experience and recommendation accuracy. Many methods have been proposed to reduce GP bias but they fail to notice the fundamental problem of GP, i.e., it considers popularity from a \textit{global} perspective of \textit{all users} and uses a single set of popular items, and thus cannot capture the interests of individual users. As such, we propose a user-aware version of item popularity named \textit{personal popularity} (PP), which identifies different popular items for each user by considering the users that share similar interests. As PP models the preferences of individual users, it naturally helps to produce personalized recommendations and mitigate GP bias. To integrate PP into recommendation, we design a general \textit{personal popularity aware counterfactual} (PPAC) framework, which adapts easily to existing recommendation models. In particular, PPAC recognizes that PP and GP have both direct and indirect effects on recommendations and controls direct effects with counterfactual inference techniques for unbiased recommendations. All codes and datasets are available at \url{https://github.com/Stevenn9981/PPAC}.
title Debiasing Recommendation with Personal Popularity
topic Information Retrieval
url https://arxiv.org/abs/2402.07425