Published November 10, 2024 | Version v1
Conference paper Open
Augment, Drop & Swap: Improving Diversity in LLM Captions for Efficient Music-Text Representation Learning
Description
Audio-text contrastive models have become a powerful approach in music representation learning. Despite their empirical success, however, little is known about the influence of key design choices on the quality of music-text representations learnt through this framework. In this work, we expose these design choices within the constraints of limited data and computation budgets, and establish a more solid understanding of their impact grounded in empirical observations along three axes: the choice of base encoders, the level of curation in training data, and the use of text augmentation. We find that data curation is the single most important factor for music-text contrastive training in resource-constrained scenarios. Motivated by this insight, we introduce two novel techniques, Augmented View Dropout and TextSwap, which increase the diversity and descriptiveness of text inputs seen in training. Through our experiments we demonstrate that these are effective at boosting performance across different pre-training regimes, model architectures, and downstream data distributions, without incurring higher computational costs or requiring additional training data.
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DOI
10.5281/zenodo.14877485
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- Conference paper
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- ISMIR
- Imprint
- Proceedings of the 25th International Society for Music Information Retrieval Conference, 938-945. San Francisco, California, USA and Online.
- Conference
- International Society for Music Information Retrieval Conference (ISMIR 2024), San Francisco, California, USA and Online, November 10-14, 2024
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Creative Commons Attribution 4.0 International
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- Created
- February 16, 2025
- Modified
- February 16, 2025