Constrained discriminative training of N-gram language models

A. Rastrow, A. Sethy, B. Ramabhadran
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引用次数: 8

Abstract

In this paper, we present a novel version of discriminative training for N-gram language models. Language models impose language specific constraints on the acoustic hypothesis and are crucial in discriminating between competing acoustic hypotheses. As reported in the literature, discriminative training of acoustic models has yielded significant improvements in the performance of a speech recognition system, however, discriminative training for N-gram language models (LMs) has not yielded the same impact. In this paper, we present three techniques to improve the discriminative training of LMs, namely updating the back-off probability of unseen events, normalization of the N-gram updates to ensure a probability distribution and a relative-entropy based global constraint on the N-gram probability updates. We also present a framework for discriminative adaptation of LMs to a new domain and compare it to existing linear interpolation methods. Results are reported on the Broadcast News and the MIT lecture corpora. A modest improvement of 0.2% absolute (on Broadcast News) and 0.3% absolute (on MIT lectures) was observed with discriminatively trained LMs over state-of-the-art systems.
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N-gram语言模型的约束判别训练
在本文中,我们提出了一种新的N-gram语言模型的判别训练方法。语言模型对声学假设施加了特定的语言约束,对于区分相互竞争的声学假设至关重要。据文献报道,声学模型的判别性训练已经显著提高了语音识别系统的性能,然而,N-gram语言模型(LMs)的判别性训练并没有产生同样的影响。在本文中,我们提出了三种改进LMs判别训练的技术,即更新未见事件的回退概率,对N-gram更新进行归一化以确保概率分布,以及基于相对熵的N-gram概率更新的全局约束。我们还提出了一种LMs对新域的判别适应框架,并将其与现有的线性插值方法进行了比较。结果报告在广播新闻和麻省理工学院的讲座语料库。在最先进的系统上,通过判别训练的LMs可以观察到0.2%的绝对改进(在广播新闻上)和0.3%的绝对改进(在麻省理工学院的讲座上)。
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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