Bias and Debias in Recommender System: A Survey and Future Directions
Jiawei Chen, Hande Dong, Xiang Wang, Fuli Feng, Meng Wang, Xiangnan He

TL;DR
This paper systematically surveys biases in recommender systems, categorizing seven types, analyzing their impacts, and proposing a taxonomy for debiasing methods, highlighting open challenges and future research directions.
Contribution
It provides the first comprehensive, systematic organization and definition of biases in recommender systems and reviews existing debiasing approaches.
Findings
Seven types of biases identified and defined.
A taxonomy for organizing debiasing methods proposed.
Highlights open challenges and future directions.
Abstract
While recent years have witnessed a rapid growth of research papers on recommender system (RS), most of the papers focus on inventing machine learning models to better fit user behavior data. However, user behavior data is observational rather than experimental. This makes various biases widely exist in the data, including but not limited to selection bias, position bias, exposure bias, and popularity bias. Blindly fitting the data without considering the inherent biases will result in many serious issues, e.g., the discrepancy between offline evaluation and online metrics, hurting user satisfaction and trust on the recommendation service, etc. To transform the large volume of research models into practical improvements, it is highly urgent to explore the impacts of the biases and perform debiasing when necessary. When reviewing the papers that consider biases in RS, we find that, to…
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Bandit Algorithms Research · Smart Grid Energy Management
