使用混合推荐系统,结合文本和音频的功能,自动播放列表延续

Andrés Ferraro, D. Bogdanov, Jisang Yoon, Kwangseob Kim, Xavier Serra
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引用次数: 15

摘要

ACM RecSys挑战赛2018的重点是在自动播放列表延续的背景下进行音乐推荐。在本文中,我们描述了我们解决问题的方法,以及我们团队Cocoplaya提交的最终混合系统。这个系统包括使用排名融合将两个不同模型产生的推荐组合在一起。第一个模型基于矩阵分解,它结合了来自曲目音频和播放列表标题的信息。第二个模型根据典型的曲目在播放列表中的接近度来生成推荐。所提出的方法是有效的,并且实现了良好的整体性能,我们的模型在挑战排行榜的创意轨道上排名第四。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic playlist continuation using a hybrid recommender system combining features from text and audio
The ACM RecSys Challenge 2018 focuses on music recommendation in the context of automatic playlist continuation. In this paper, we describe our approach to the problem and the final hybrid system that was submitted to the challenge by our team Cocoplaya. This system consists in combining the recommendations produced by two different models using ranking fusion. The first model is based on Matrix Factorization and it incorporates information from tracks' audio and playlist titles. The second model generates recommendations based on typical track co-occurrences considering their proximity in the playlists. The proposed approach is efficient and achieves a good overall performance, with our model ranked 4th on the creative track of the challenge leaderboard.
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