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Penalized Logistic Regression With HMM Log-Likelihood Regressors for Speech Recognition

机译:使用HMM对数似然回归器进行惩罚性Logistic回归以进行语音识别

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摘要

Hidden Markov models (HMMs) are powerful generative models for sequential data that have been used in automatic speech recognition for more than two decades. Despite their popularity, HMMs make inaccurate assumptions about speech signals, thereby limiting the achievable performance of the conventional speech recognizer. Penalized logistic regression (PLR) is a well-founded discriminative classifier with long roots in the history of statistics. Its classification performance is often compared with that of the popular support vector machine (SVM). However, for speech classification, only limited success with PLR has been reported, partially due to the difficulty with sequential data. In this paper, we present an elegant way of incorporating HMMs in the PLR framework. This leads to a powerful discriminative classifier that naturally handles sequential data. In this approach, speech classification is done using affine combinations of HMM log-likelihoods. We believe that such combinations of HMMs lead to a more accurate classifier than the conventional HMM-based classifier. Unlike similar approaches, we jointly estimate the HMM parameters and the PLR parameters using a single training criterion. The extension to continuous speech recognition is done via rescoring of N-best lists or lattices.
机译:隐马尔可夫模型(HMM)是用于顺序数据的强大生成模型,已经在自动语音识别中使用了20多年。尽管HMM颇受欢迎,但它们对语音信号做出了不准确的假设,从而限制了常规语音识别器可实现的性能。惩罚逻辑回归(PLR)是一个有根据的判别式分类器,源于统计历史。通常将其分类性能与流行的支持向量机(SVM)进行比较。但是,对于语音分类,仅报道了PLR的成功有限,部分是由于顺序数据的困难。在本文中,我们提出了一种将HMM整合到PLR框架中的优雅方法。这导致了一个强大的判别分类器,可以自然地处理顺序数据。在这种方法中,语音分类是使用HMM对数似然的仿射组合完成的。我们相信,与传统的基于HMM的分类器相比,此类HMM组合可导致更准确的分类器。与类似的方法不同,我们使用单个训练准则共同估算HMM参数和PLR参数。连续语音识别的扩展是通过对N个最佳列表或网格进行记录来完成的。

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