用变形语言模型改进词法丰富的语音实时识别

Balázs Tarján, György Szaszák, T. Fegyó, P. Mihajlik
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引用次数: 1

摘要

变压器模型已经成为自然语言理解的最新技术,它们在自动语音识别(ASR)中的语言建模应用也很有前景。尽管基于Transformer的语言模型被证明可以提高ASR性能,但它们的计算复杂性使得它们在实时系统中的应用相当具有挑战性。研究还表明,这种语言模型的知识可以转移到传统的n-gram模型中,适合于实时解码。本文研究了这种迁移方法在词法丰富的语言和实时场景中的适应性。我们提出了一种基于Transformer语言模型的基于子词的神经文本增强新方法,该方法基于统计数据驱动的方法,将训练语料库重新标记为子词。我们证明,ASR性能可以通过减少词汇量和减少内存消耗来增强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Real-time Recognition of Morphologically Rich Speech with Transformer Language Model
Transformer models have become to state-of-the-art in natural language understanding, their use for language modeling in Automatic Speech Recognition (ASR) is also promising. Albeit Transformer based language models were shown to improve ASR performance, their computational complexity makes their application in real-time systems quite challenging. It has been also shown that the knowledge of such language models can be transferred to traditional n-gram models, suitable for real-time decoding. This paper investigates the adaptation of this transfer approach to morphologically rich languages, and in a real time scenario. We propose a new method for subword-based neural text augmentation with a Transformer language model, which consists in retokenizing the training corpus into subwords, based on a statistical data-driven approach. We demonstrate that ASR performance can be augmented by yet reducing the vocabulary size and alleviating memory consumption.
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