SDAILGASJul 11, 2023

On the Effectiveness of Speech Self-supervised Learning for Music

DeepMindMILA
arXiv:2307.05161v114 citationsh-index: 42
Originality Incremental advance
AI Analysis

This addresses the problem of adapting speech SSL to music for researchers in music information retrieval, but it is incremental as it builds on existing speech models.

The study investigated applying speech self-supervised learning models to music data, finding that training with music improves performance on 13 music information retrieval tasks, though limitations exist in modeling polyphonic information.

Self-supervised learning (SSL) has shown promising results in various speech and natural language processing applications. However, its efficacy in music information retrieval (MIR) still remains largely unexplored. While previous SSL models pre-trained on music recordings may have been mostly closed-sourced, recent speech models such as wav2vec2.0 have shown promise in music modelling. Nevertheless, research exploring the effectiveness of applying speech SSL models to music recordings has been limited. We explore the music adaption of SSL with two distinctive speech-related models, data2vec1.0 and Hubert, and refer to them as music2vec and musicHuBERT, respectively. We train $12$ SSL models with 95M parameters under various pre-training configurations and systematically evaluate the MIR task performances with 13 different MIR tasks. Our findings suggest that training with music data can generally improve performance on MIR tasks, even when models are trained using paradigms designed for speech. However, we identify the limitations of such existing speech-oriented designs, especially in modelling polyphonic information. Based on the experimental results, empirical suggestions are also given for designing future musical SSL strategies and paradigms.

Foundations

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