基于线性规划的语音识别n-gram语言模型判别训练

Vladimir Magdin, Hui Jiang
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引用次数: 5

摘要

提出了一种基于n元语言模型的判别训练算法,用于大词汇量连续语音识别。该算法使用最大互信息估计(MMIE)来构建一个目标函数,该函数涉及在正确转录和它们的竞争假设之间计算的度量,这些度量被编码为由维特比解码过程生成的词图。将非线性MMIE目标函数近似为一个线性目标函数,利用em型辅助函数,将n-gram语言模型的判别训练转化为一个线性规划问题,可以通过多种凸优化工具有效地求解。在SPINE1语音识别语料库上的实验结果表明,该判别训练方法优于传统的基于折扣的最大似然估计方法。在SPINE1语音识别任务中,单词错误率相对降低了近3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discriminative training of n-gram language models for speech recognition via linear programming
This paper presents a novel discriminative training algorithm for n-gram language models for use in large vocabulary continuous speech recognition. The algorithm uses Maximum Mutual Information Estimation (MMIE) to build an objective function that involves a metric computed between correct transcriptions and their competing hypotheses, which are encoded as word graphs generated from the Viterbi decoding process. The nonlinear MMIE objective function is approximated by a linear one using an EM-style auxiliary function, thus converting the discriminative training of n-gram language models into a linear programing problem, which can be efficiently solved by many convex optimization tools. Experimental results on the SPINE1 speech recognition corpus have shown that the proposed discriminative training method can outperform the conventional discounting-based maximum likelihood estimation methods. A relative reduction in word error rate of close to 3% has been observed on the SPINE1 speech recognition task.
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