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Support Vector Machine Training for Improved Hidden Markov Modeling

机译:支持向量机训练,用于改进的隐马尔可夫建模

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摘要

We present a discriminative training algorithm, that uses support vector machines (SVMs), to improve the classification of discrete and continuous output probability hidden Markov models (HMMs). The algorithm uses a set of maximum-likelihood (ML) trained HMM models as a baseline system, and an SVM training scheme to rescore the results of the baseline HMMs. It turns out that the rescoring model can be represented as an unnormalized HMM. We describe two algorithms for training the unnormalized HMM models for both the discrete and continuous cases. One of the algorithms results in a single set of unnormalized HMMs that can be used in the standard recognition procedure (the Viterbi recognizer), as if they were plain HMMs. We use a toy problem and an isolated noisy digit recognition task to compare our new method to standard ML training. Our experiments show that SVM rescoring of hidden Markov models typically reduces the error rate significantly compared to standard ML training.
机译:我们提出一种判别式训练算法,该算法使用支持向量机(SVM)来改进离散和连续输出概率隐马尔可夫模型(HMM)的分类。该算法使用一组经过最大似然(ML)训练的HMM模型作为基准系统,并使用SVM训练方案对基准HMM的结果进行评分。事实证明,计分模型可以表示为非标准化HMM。我们描述了两种针对离散和连续案例训练非规范化HMM模型的算法。其中一种算法会产生一组未标准化的HMM,可以在标准识别过程(维特比识别器)中使用它们,就像它们是普通的HMM一样。我们使用玩具问题和孤立的嘈杂数字识别任务来将我们的新方法与标准ML训练进行比较。我们的实验表明,与标准ML训练相比,隐马尔可夫模型的SVM记录通常可以大大降低错误率。

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