Ning Lin, Ping-Chia Tsai, Yu-An Chen, Homer H. Chen
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引用次数: 10
Abstract
Most existing systems recommend songs to the user based on the popularity of songs and singers. However, the system proposed in this paper is driven by an emerging and somewhat different need in the music industry-promoting new talents. The system recommends songs based on the novelty of singers (or artists) and their similarity to the user's favorite artists. Novel artists whose popularity is on the rise have a higher priority to be recommended. Specifically, given a user's favorite artists, the system first determines the candidate artists based on their similarity with the favorite artists and then selects those who have a higher novelty score than the favorite artists. Then, the system outputs a playlist composed of the most popular songs of the selected artists. The proposed system can be integrated into most existing systems. Its performance is evaluated using the Spotify Radio Recommender as a reference and a pool of 100 subjects recruited on campus. Experimental results show that our system achieves a high novelty score and a competitive user-preference score.
大多数现有的系统都是根据歌曲和歌手的受欢迎程度向用户推荐歌曲。然而,本文提出的制度是由音乐产业对新人才的需求驱动的,这种需求是新兴的,有些不同。该系统根据歌手(或艺术家)的新颖性以及与用户喜爱的艺术家的相似性来推荐歌曲。受欢迎程度上升的小说作家优先被推荐。具体来说,给定用户最喜欢的艺术家,系统首先根据他们与最喜欢的艺术家的相似性来确定候选艺术家,然后选择那些比最喜欢的艺术家具有更高新颖性得分的艺术家。然后,系统输出一个由所选艺术家最受欢迎的歌曲组成的播放列表。所提出的系统可以集成到大多数现有系统中。它的表现是用Spotify Radio Recommender作为参考,以及从校园招募的100名受试者来评估的。实验结果表明,该系统获得了较高的新颖性得分和具有竞争力的用户偏好得分。