Diversity in the Music Listening Experience: Insights from Focus Group Interviews
January 25, 2022 Β· Declared Dead Β· π Conference on Human Information Interaction and Retrieval
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Authors
Lorenzo Porcaro, Emilia GΓ³mez, Carlos Castillo
arXiv ID
2201.10249
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.IR
Citations
9
Venue
Conference on Human Information Interaction and Retrieval
Last Checked
4 months ago
Abstract
Music listening in today's digital spaces is highly characterized by the availability of huge music catalogues, accessible by people all over the world. In this scenario, recommender systems are designed to guide listeners in finding tracks and artists that best fit their requests, having therefore the power to influence the diversity of the music they listen to. Albeit several works have proposed new techniques for developing diversity-aware recommendations, little is known about how people perceive diversity while interacting with music recommendations. In this study, we interview several listeners about the role that diversity plays in their listening experience, trying to get a better understanding of how they interact with music recommendations. We recruit the listeners among the participants of a previous quantitative study, where they were confronted with the notion of diversity when asked to identify, from a series of electronic music lists, the most diverse ones according to their beliefs. As a follow-up, in this qualitative study we carry out semi-structured interviews to understand how listeners may assess the diversity of a music list and to investigate their experiences with music recommendation diversity. We report here our main findings on 1) what can influence the diversity assessment of tracks and artists' music lists, and 2) which factors can characterize listeners' interaction with music recommendation diversity.
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