Personalized Recommendations for Music Genre Exploration

Yu Liang, M. Willemsen
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引用次数: 12

Abstract

Most recommender systems generate recommendations to match the user's current preference. However, users sometimes might have the goal to develop new preferences away from their current preference and use the recommender to guide them towards it. In this paper, we asked users to select a new genre to explore and studied what kind of recommendations would be more helpful for users to start exploring this new music taste. Three different recommendation methods are tested: one non-personalized which recommends the most representative tracks of the genre, one personalized method which considers songs from the new genre that best matches users' current preferences, and one mixed method which makes a trade-off between the two approaches. A comparative design was used in a user experiment in which participants were asked to evaluate the differences between the personalized method/mixed method and the non-personalized baseline. The mixed method results in recommendations that are more accurate and representative for the new genre than the personalized method. Users' perceived helpfulness for exploring the new genre is positively related to both perceived accuracy and perceived representativeness of the recommended items. Besides, recommendations from the mixed method are perceived more helpful for users high on Musical Sophistication Index for Active Engagement (MSAE). To our knowledge, this is one of the first studies using a recommender system to support users' preference development, and provides insights in how recommender systems can help users attain new goals and tastes.
音乐流派探索个性化推荐
大多数推荐系统都会根据用户当前的偏好生成推荐。然而,用户有时可能有一个目标,即在当前偏好之外开发新的偏好,并使用推荐器来引导他们实现这一目标。在本文中,我们要求用户选择一种新的音乐类型进行探索,并研究什么样的推荐对用户开始探索这种新的音乐品味更有帮助。我们测试了三种不同的推荐方法:一种是非个性化的推荐方法,它推荐最具代表性的音乐类型;一种个性化的推荐方法,它考虑最符合用户当前偏好的新类型歌曲;还有一种混合的推荐方法,它在两种方法之间进行权衡。在用户实验中使用了比较设计,参与者被要求评估个性化方法/混合方法与非个性化基线之间的差异。混合方法产生的推荐比个性化方法更准确,更能代表新类型。用户对新类型探索的感知帮助与推荐项目的感知准确性和感知代表性均呈正相关。此外,混合方法的推荐对音乐成熟度指数(MSAE)较高的用户更有帮助。据我们所知,这是第一个使用推荐系统来支持用户偏好发展的研究之一,并为推荐系统如何帮助用户实现新的目标和品味提供了见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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