SDLGASNov 14, 2022

Exploiting Device and Audio Data to Tag Music with User-Aware Listening Contexts

arXiv:2211.07250v11 citationsh-index: 49
Originality Incremental advance
AI Analysis

This addresses the need for fully automated context-aware music recommendation systems, though it is incremental as it builds on existing user-aware autotaggers.

The paper tackles the problem of automatically generating situational playlists by inferring user context from streaming data and profiles, showing the system is feasible but performance decreases with new users, tracks, or more context classes.

As music has become more available especially on music streaming platforms, people have started to have distinct preferences to fit to their varying listening situations, also known as context. Hence, there has been a growing interest in considering the user's situation when recommending music to users. Previous works have proposed user-aware autotaggers to infer situation-related tags from music content and user's global listening preferences. However, in a practical music retrieval system, the autotagger could be only used by assuming that the context class is explicitly provided by the user. In this work, for designing a fully automatised music retrieval system, we propose to disambiguate the user's listening information from their stream data. Namely, we propose a system which can generate a situational playlist for a user at a certain time 1) by leveraging user-aware music autotaggers, and 2) by automatically inferring the user's situation from stream data (e.g. device, network) and user's general profile information (e.g. age). Experiments show that such a context-aware personalized music retrieval system is feasible, but the performance decreases in the case of new users, new tracks or when the number of context classes increases.

Code Implementations1 repo
Foundations

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