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Learning Audio Embeddings with User Listening Data for Content-Based Music Recommendation

Ke Chen, Beici Liang, Xiaoshuan Ma, Minwei Gu

202137 citationsDOI

Abstract

Personalized recommendation on new track releases has always been a challenging problem in the music industry. To combat this problem, we first explore user listening history and demographics to construct a user embedding representing the user’s music preference. With the user embedding and audio data from user’s liked and disliked tracks, an audio embedding can be obtained for each track using metric learning with Siamese networks. For a new track, we can decide the best group of users to recommend by computing the similarity between the track’s audio embedding and different user embeddings, respectively. The proposed system yields state-of-the-art performance on content-based music recommendation tested with millions of users and tracks. Also, we extract audio embeddings as features for music genre classification tasks. The results show the generalization ability of our audio embeddings.

Topics & Concepts

Computer scienceEmbeddingActive listeningMetric (unit)GeneralizationConstruct (python library)MultimediaTrack (disk drive)Similarity (geometry)PreferenceSpeech recognitionHuman–computer interactionArtificial intelligenceImage (mathematics)MathematicsSociologyOperations managementCommunicationEconomicsOperating systemStatisticsMathematical analysisProgramming languageMusic and Audio ProcessingMusic Technology and Sound StudiesNeuroscience and Music Perception