有效的近邻音乐推荐

Malte Ludewig, Iman Kamehkhosh, Nick Landia, D. Jannach
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引用次数: 22

摘要

在现代音乐平台上,自动推荐要听的下一首歌曲或将其包含在播放列表中是一个常见的功能。相应地,学术研究中提出了各种确定要推荐的轨道的算法方法。其中最复杂的通常是基于概念上复杂的学习技术,这也可能需要大量的计算资源或专用硬件,如gpu。然而,最近的研究表明,概念上更简单的技术,例如,基于最近邻方案,在实践中可以作为这种技术的可行替代方案。在本文中,我们描述了一种用于下一轨道推荐的混合技术,该技术在ACM RecSys 2018挑战赛的背景下进行了评估。结合最近邻技术、标准矩阵分解算法和一小部分启发式算法,我们的团队KAENEN在“创意”赛道上获得了第三名,在“主要”赛道上获得了第七名,准确率仅比获胜团队低几个百分点。考虑到离线预测精度只是音乐推荐中几个可能的质量因素之一,从业者必须验证在现实应用中使用高度复杂的算法是否真的有必要提高准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective Nearest-Neighbor Music Recommendations
Automated recommendations for next tracks to listen to or to include in a playlist are a common feature on modern music platforms. Correspondingly, a variety of algorithmic approaches for determining tracks to recommend have been proposed in academic research. The most sophisticated among them are often based on conceptually complex learning techniques which can also require substantial computational resources or special-purpose hardware like GPUs. Recent research, however, showed that conceptually more simple techniques, e.g., based on nearest-neighbor schemes, can represent a viable alternative to such techniques in practice. In this paper, we describe a hybrid technique for next-track recommendation, which was evaluated in the context of the ACM RecSys 2018 Challenge. A combination of nearest-neighbor techniques, a standard matrix factorization algorithm, and a small set of heuristics led our team KAENEN to the 3rd place in the "creative" track and the 7th one in the "main" track, with accuracy results only a few percent below the winning teams. Given that offline prediction accuracy is only one of several possible quality factors in music recommendation, practitioners have to validate if slight accuracy improvements truly justify the use of highly complex algorithms in real-world applications.
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