Popularity Bias in Collaborative Filtering-Based Multimedia Recommender Systems
March 01, 2022 Β· Declared Dead Β· π International Workshop on Algorithmic Bias in Search and Recommendation
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Authors
Dominik Kowald, Emanuel Lacic
arXiv ID
2203.00376
Category
cs.IR: Information Retrieval
Cross-listed
cs.AI
Citations
29
Venue
International Workshop on Algorithmic Bias in Search and Recommendation
Last Checked
4 months ago
Abstract
Multimedia recommender systems suggest media items, e.g., songs, (digital) books and movies, to users by utilizing concepts of traditional recommender systems such as collaborative filtering. In this paper, we investigate a potential issue of such collaborative-filtering based multimedia recommender systems, namely popularity bias that leads to the underrepresentation of unpopular items in the recommendation lists. Therefore, we study four multimedia datasets, i.e., LastFm, MovieLens, BookCrossing and MyAnimeList, that we each split into three user groups differing in their inclination to popularity, i.e., LowPop, MedPop and HighPop. Using these user groups, we evaluate four collaborative filtering-based algorithms with respect to popularity bias on the item and the user level. Our findings are three-fold: firstly, we show that users with little interest into popular items tend to have large user profiles and thus, are important data sources for multimedia recommender systems. Secondly, we find that popular items are recommended more frequently than unpopular ones. Thirdly, we find that users with little interest into popular items receive significantly worse recommendations than users with medium or high interest into popularity.
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