Augment, Drop & Swap: Improving Diversity in LLM Captions for Efficient Music-Text Representation Learning

Ilaria Manco, Justin Salamon, Oriol Nieto
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Abstract

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.
增强、删除和交换:提高 LLM 字幕的多样性,实现高效的音乐-文本表征学习
音频-文本对比模型已成为音乐表述学习的一种强有力的方法。尽管在实证方面取得了成功,但人们对关键设计选择对通过该框架学习的音乐-文本呈现质量的影响知之甚少。在这项工作中,我们揭示了在有限的数据和计算预算约束下的设计选择,并根据三个方面的经验观察,对其影响建立了更扎实的理解:基础编码器的选择、训练数据的饱和度以及文本增强的使用。我们发现,在资源有限的情况下,数据饱和度是音乐-文本对比训练的最重要因素。我们通过实验证明,在不同的预训练机制、模型架构和下游数据分布中,这两种技术都能有效提高性能,而且不会增加计算成本或要求额外的训练数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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