IRAILGJul 3, 2025

Content filtering methods for music recommendation: A review

arXiv:2507.02282v14 citationsh-index: 8
Originality Synthesis-oriented
AI Analysis

It tackles the challenge of sparse user interactions in music streaming for improved recommendation accuracy, but is incremental as it reviews existing methods.

This review addresses the sparsity problem in music recommendation by examining content filtering methods to mitigate biases in collaborative filtering, exploring techniques like LLM-based lyrical analysis and audio signal processing.

Recommendation systems have become essential in modern music streaming platforms, shaping how users discover and engage with songs. One common approach in recommendation systems is collaborative filtering, which suggests content based on the preferences of users with similar listening patterns to the target user. However, this method is less effective on media where interactions are sparse. Music is one such medium, since the average user of a music streaming service will never listen to the vast majority of tracks. Due to this sparsity, there are several challenges that have to be addressed with other methods. This review examines the current state of research in addressing these challenges, with an emphasis on the role of content filtering in mitigating biases inherent in collaborative filtering approaches. We explore various methods of song classification for content filtering, including lyrical analysis using Large Language Models (LLMs) and audio signal processing techniques. Additionally, we discuss the potential conflicts between these different analysis methods and propose avenues for resolving such discrepancies.

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