Popularity bias is the idea that a recommender system will unduly favor popular artists when recommending artists to users. As such, they may contribute to a winner-take-all marketplace in which a small number of artists receive nearly all of the attention, while similarly meritorious artists are unlikely to be discovered. In this paper, we attempt to measure popularity bias in three state-of-art recommender system models (e.g., SLIM, Multi-VAE, WRMF) and on three commercial music streaming services (Spotify, Amazon Music, YouTube). We find that the most accurate model (SLIM) also has the most popularity bias while less accurate models have less popularity bias. We also find no evidence of popularity bias in the commercial recommendations based on a simulated user experiment.
翻译:大众偏见是这样一种观点,即推荐人制度在向用户推荐艺术家时会不适当地偏向受欢迎的艺术家。 因此,他们可能会促成一个赢家通吃市场,在这个市场中,少数艺术家几乎得到所有的关注,而类似的优秀艺术家则不太可能被发现。 在本文中,我们试图测量三种最先进的推荐人制度模式(如SLIM、多VAE、WEMF)和三种商业音乐流服务(Spotefy、亚马逊音乐、YouTube)中的受欢迎偏向性。 我们发现最准确的模式(SLIM)也有最受欢迎的偏向性,而不太准确的模式则不那么受欢迎性。 在基于模拟用户实验的商业建议中,我们也没有发现任何受欢迎偏向的证据。