Combining Contrastive and Non-Contrastive Losses for Fine-Tuning Pretrained Models in Speech Analysis

Florian Lux, Ching-Yi Chen, Ngoc Thang Vu
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引用次数: 1

Abstract

Embedding paralinguistic properties is a challenging task as there are only a few hours of training data available for domains such as emotional speech. One solution to this problem is to pretrain a general self-supervised speech representation model on large amounts of unlabeled speech. This pretrained model is then finetuned to a specific task. Paralinguistic properties however have notoriously high class variance, making the finetuning ineffective. In this work, we propose a two step approach to this. First we improve the embedding space, then we train an adapter to bridge the gap from the embedding space to a classification task. In order to improve the class invariance we use a combination of contrastive and non-contrastive losses to explicitly optimize for class invariant, yet discriminative features. Our approach consistently outperforms baselines that are finetuned end-to-end on multiple tasks and surpasses a benchmark on state-of-the-art emotion classification.
结合对比和非对比损失对语音分析中预训练模型进行微调
嵌入副语言属性是一项具有挑战性的任务,因为只有几个小时的训练数据可用于情感语音等领域。解决这个问题的一种方法是在大量的未标记语音上预训练一个通用的自监督语音表示模型。这个预训练的模型然后被微调到一个特定的任务。然而,副语言属性具有非常高的类别差异,使得微调无效。在这项工作中,我们提出了一个两步走的方法。首先我们改进嵌入空间,然后我们训练一个适配器来弥合嵌入空间与分类任务之间的差距。为了提高类不变性,我们使用对比和非对比损失的组合来显式优化类不变性,但有区别的特征。我们的方法始终优于对多个任务进行端到端微调的基线,并且超过了最先进的情感分类基准。
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