Music Recommendation Systems: Techniques, Use Cases, and Challenges

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Abstract

This chapter gives an introduction to music recommender systems, considering the unique characteristics of the music domain. We take a user-centric perspective, by organizing our discussion with respect to current use cases and challenges. More precisely, we categorize music recommendation tasks into three major types of use cases: basic music recommendation, lean-in exploration, and lean-back listening. Subsequently, we explain the main categories of music recommender systems from a technical perspective, including content-based filtering, sequential recommendation, and recent psychology-inspired approaches. To round off the chapter, we provide a discussion of challenges faced in music recommendation research and practice, and of approaches that address these challenges. Topics we address here include creating multi-faceted recommendation lists, considering intrinsic user characteristics, making fair recommendations, explaining recommendations, evaluation, dealing with missing and negative feedback, designing user interfaces, and providing open tools and data sources.

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Schedl, M., Knees, P., McFee, B., & Bogdanov, D. (2022). Music Recommendation Systems: Techniques, Use Cases, and Challenges. In Recommender Systems Handbook: Third Edition (pp. 927–971). Springer US. https://doi.org/10.1007/978-1-0716-2197-4_24

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