Mixture of Informed Experts for Multilingual Speech Recognition

Neeraj Gaur, B. Farris, Parisa Haghani, Isabel Leal, Pedro J. Moreno, Manasa Prasad, B. Ramabhadran, Yun Zhu
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引用次数: 26

Abstract

When trained on related or low-resource languages, multilingual speech recognition models often outperform their monolingual counterparts. However, these models can suffer from loss in performance for high resource or unrelated languages. We investigate the use of a mixture-of-experts approach to assign per-language parameters in the model to increase network capacity in a structured fashion. We introduce a novel variant of this approach, ‘informed experts’, which attempts to tackle inter-task conflicts by eliminating gradients from other tasks in these task-specific parameters. We conduct experiments on a real-world task with English, French and four dialects of Arabic to show the effectiveness of our approach. Our model matches or outperforms the monolingual models for almost all languages, with gains of as much as 31% relative. Our model also outperforms the baseline multilingual model for all languages by up to 9% relative.
多语言语音识别的知情专家混合
当对相关语言或低资源语言进行训练时,多语言语音识别模型通常优于单语言语音识别模型。然而,对于高资源或不相关的语言,这些模型可能会遭受性能损失。我们研究了使用混合专家方法来分配模型中的每种语言参数,以结构化的方式增加网络容量。我们介绍了这种方法的一种新变体,“知情专家”,它试图通过消除这些任务特定参数中其他任务的梯度来解决任务间冲突。我们用英语、法语和四种阿拉伯语方言在现实世界的任务中进行了实验,以证明我们方法的有效性。我们的模型与几乎所有语言的单语模型相匹配或优于单语模型,相对收益高达31%。我们的模型也比所有语言的基准多语言模型相对高出9%。
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