Longitudinal Impact of Preference Biases on Recommender Systems' Performance
成果类型:
Article
署名作者:
Zhou, Meizi; Zhang, Jingjing; Adomaviciusc, Gediminas
署名单位:
Boston University; Indiana University System; Indiana University Bloomington; University of Minnesota System; University of Minnesota Twin Cities
刊物名称:
INFORMATION SYSTEMS RESEARCH
ISSN/ISSBN:
1047-7047
DOI:
10.1287/isre.2021.0133
发表日期:
2024
页码:
1634-1656
关键词:
Ratings
sales
摘要:
Research studies have shown that recommender systems' predictions that are observed by users can cause biases in users' postconsumption preference ratings. This can happen as part of the standard, normal system use, where biases are typically caused by the system's inherent prediction errors (i.e., because of the less-than-perfect accuracy of recommendation methods). Because users' preference ratings are typically fed back to the system as training data for future predictions, this process is likely to influence the performance of the system in the long run. We use a simulation approach to study the longitudinal impact of preference biases (and their magnitude) on the dynamics of recommender systems' performance. Our simulation results show that preference biases significantly impair the system's prediction performance (i.e., prediction accuracy) as well as users' consumption outcomes (i.e., consumption relevance and diversity) over time. The impact is nonlinear to the size of the bias, that is, large bias causes disproportionately large negative effects. Also, items that are less popular and less distinctive (in terms of their content) are affected more by preference biases. Furthermore, given the impact of preference bias on the recommender systems' performance, we explore the problem of debiasing user-submitted ratings. We empirically demonstrate that relying solely on historical rating data is unlikely to be effective in debiasing. We also propose and evaluate two debiasing approaches that take into account additional relevant information that can be collected by recommendation platforms. Our findings provide important implications for the design of recommender systems.
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