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Crank up the volume: preference bias amplification in collaborative recommendation (1909.06362v1)
Published 13 Sep 2019 in cs.IR, cs.LG, and stat.ML
Abstract: Recommender systems are personalized: we expect the results given to a particular user to reflect that user's preferences. Some researchers have studied the notion of calibration, how well recommendations match users' stated preferences, and bias disparity the extent to which mis-calibration affects different user groups. In this paper, we examine bias disparity over a range of different algorithms and for different item categories and demonstrate significant differences between model-based and memory-based algorithms.
- Kun Lin (5 papers)
- Nasim Sonboli (10 papers)
- Bamshad Mobasher (34 papers)
- Robin Burke (40 papers)