Abstract

Like in many other research areas, deep learning (DL) is increasingly adopted in music recommender systems (MRS). Deep neural networks are used in this area particularly for extracting latent factors of music items from audio signals or metadata and for learning sequential patterns of music items (tracks or artists) from music playlists or listening sessions. Latent item factors are commonly integrated into content-based filtering and hybrid MRS, whereas sequence models of music items are used for sequential music recommendation, e.g., automatic playlist continuation. This review article explains particularities of the music domain in RS research. It gives an overview of the state of the art that employs deep learning for music recommendation. The discussion is structured according to the dimensions of neural network type, input data, recommendation approach (content-based filtering, collaborative filtering, or both), and task (standard or sequential music recommendation). In addition, we discuss major challenges faced in MRS, in particular in the context of the current research on deep learning.

Highlights

  • Research on music recommendation systems (MRS) is spiraling [1]

  • Research on MRS has emerged from two distinct communities, i.e., music information retrieval (MIR) and recommender systems (RS), with different focuses, perspectives, and terminologies

  • This article aims at raising awareness of such subtle differences between the MIR, RS, and other related communities such as information retrieval and multimedia. When it comes to music recommendation, the RS community, in particular represented by authors in the ACM Recommender Systems (RecSys)3 conference proceedings, has embraced the emerging topic of MRS in the past few years

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Summary

INTRODUCTION

Research on music recommendation systems (MRS) is spiraling [1]. Despite their potential, neural network architectures are still surprisingly sparsely adopted for MRS, even though the number of respective publications is increasing. We discuss the most recent research that involves DL in the context of MRS and we identify possible reasons for the still limited adoption of DL techniques in this recommendation domain. Research on MRS has emerged from two distinct communities, i.e., music information retrieval (MIR) and recommender systems (RS), with different focuses, perspectives, and terminologies

Music Information Retrieval
Recommender Systems
WHY MUSIC IS DIFFERENT
CONTENT-BASED AND HYBRID APPROACHES
SEQUENCE-AWARE MUSIC RECOMMENDATION
Findings
CURRENT CHALLENGES
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