Abstract

In this paper, we address the problem of modeling and predicting the music genre preferences of users. We introduce a novel user modeling approach, BLLu, which takes into account the popularity of music genres as well as temporal drifts of user listening behavior. To model these two factors, BLLu adopts a psychological model that describes how humans access information in their memory. We evaluate our approach on a standard dataset of Last.fm listening histories, which contains fine-grained music genre information. To investigate performance for different types of users, we assign each user a mainstreaminess value that corresponds to the distance between the user’s music genre preferences and the music genre preferences of the (Last.fm) mainstream. We adopt BLLu to model the listening habits and to predict the music genre preferences of three user groups: listeners of (i) niche, low-mainstream music, (ii) mainstream music, and (iii) medium-mainstream music that lies in-between. Our results show that BLLu provides the highest accuracy for predicting music genre preferences, compared to five baselines: (i) group-based modeling, (ii) user-based collaborative filtering, (iii) item-based collaborative filtering, (iv) frequency-based modeling, and (v) recency-based modeling. Besides, we achieve the most substantial accuracy improvements for the low-mainstream group. We believe that our findings provide valuable insights into the design of music recommender systems.

Highlights

  • Music recommender systems play a pivotal role in popular streaming platforms such as Last.fm,1 Pandora,2 or Spotify3 to help users find music that suits their taste

  • Work In this paper, we presented BLLu, an approach that utilizes the features of popularity and temporal drifts to model and predict music genre preferences via fine-grained genres

  • We divided the users into three groups based on the proximity of their music genre preferences to the mainstream: (i) LowMS, i.e., listeners of niche music, (ii) HighMS, i.e., listeners of mainstream music, and (iii) MedMS, i.e., listeners of music that lies in-between

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Summary

Introduction

Music recommender systems play a pivotal role in popular streaming platforms such as Last.fm, Pandora, or Spotify to help users find music that suits their taste. While music recommender systems can provide quality recommendations to listeners of popular music, related research (Schedl and Bauer, 2018; van den Oord et al, 2013) has shown that they tend to fail listeners who prefer niche artists and genres. We introduce a novel user modeling and genre prediction approach for users with different music consumption patterns and listening habits. The main problem we address in this work is how to exploit variations in listening habits to improve personalization for all three user groups. We investigate this problem by predicting the music genres a user is going to listen to in the future

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