统计语言模型的自监督判别训练

Puyang Xu, D. Karakos, S. Khudanpur
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引用次数: 36

摘要

提出了一种新的用于自动语音识别(ASR)语言模型估计的自监督判别训练方法。不像传统的判别训练方法需要转录语音,只需要非转录语音和大的文本语料库。假设语言模型的指数形式,就像在最大熵估计中所做的那样,但是模型是使用一个判别标准从文本中训练的,该标准针对的是在第一次通过ASR输出格中实际看到的单词混淆。具体来说,模型参数的估计是为了最大化文本语料库中单词w与测试语音中单词w的队列之间的似然比,即w在测试格中与之竞争的其他单词。实证结果表明,在大词汇量ASR任务上,4克语言模型在统计学上有显著改善。
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Self-supervised discriminative training of statistical language models
A novel self-supervised discriminative training method for estimating language models for automatic speech recognition (ASR) is proposed. Unlike traditional discriminative training methods that require transcribed speech, only untranscribed speech and a large text corpus is required. An exponential form is assumed for the language model, as done in maximum entropy estimation, but the model is trained from the text using a discriminative criterion that targets word confusions actually witnessed in first-pass ASR output lattices. Specifically, model parameters are estimated to maximize the likelihood ratio between words w in the text corpus and w's cohorts in the test speech, i.e. other words that w competes with in the test lattices. Empirical results are presented to demonstrate statistically significant improvements over a 4-gram language model on a large vocabulary ASR task.
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