SDAIAug 18, 2025

MATPAC++: Enhanced Masked Latent Prediction for Self-Supervised Audio Representation Learning

arXiv:2508.12709v14 citationsh-index: 30
Originality Incremental advance
AI Analysis

This work provides an incremental enhancement for researchers in audio and music processing by improving representation quality in self-supervised learning.

The paper tackles the problem of improving self-supervised audio representation learning by addressing ambiguity in masked latent prediction, resulting in state-of-the-art performance on AudioSet and downstream tasks with enhanced efficiency in music data.

Masked latent prediction has emerged as a leading paradigm in self-supervised learning (SSL), especially for general audio and music representation learning. While recent methods have demonstrated strong performance, the role of the predictor module used at the output of such SSL systems remains mainly overlooked, despite being crucial for solving the pretext task at hand. In particular, this module should be able to deal with the ambiguity inherent in audio content, especially when it is composed of multiple sound sources. This work proposes a novel enhancement: integrating Multiple Choice Learning (MCL) to explicitly model prediction ambiguity and improve representation quality. We build on top of the recently proposed MATPAC system, improving its prediction and unsupervised classification pretext tasks with MCL. We extensively evaluate our method, MATPAC++, through both linear probing across multiple downstream tasks and fine-tuning on AudioSet, employing a unified protocol that enables rigorous and fair comparisons with state-of-the-art SSL approaches. Results show that our proposal achieves state-of-the-art when fine-tuned on AudioSet and overall state-of-the-art scores on downstream tasks. Additionally, we examine domain specialisation by training exclusively on music data, where our model achieves state-of-the-art performance with significantly improved efficiency.

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