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Component-based discriminative classification for hidden Markov models

机译:隐马尔可夫模型的基于组件的判别分类

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摘要

Hidden Markov models (HMMs) have been successfully applied to a wide range of sequence modeling problems. In the classification context, one of the simplest approaches is to train a single HMM per class. A test sequence is then assigned to the class whose HMM yields the maximum a posterior (MAP) probability. This generative scenario works well when the models are correctly estimated. However, the results can become poor when improper models are employed, due to the lack of prior knowledge, poor estimates, violated assumptions or insufficient training data. To improve the results in these cases we propose to combine the descriptive strengths of HMMs with discriminative classifiers. This is achieved by training feature-based classifiers in an HMM-induced vector space defined by specific components of individual hidden Markov models. We introduce four major ways of building Such vector spaces and study which trained combiners are useful in which context. Moreover, we motivate and discuss the merit of our method in comparison to dynamic kernels, in particular, to the Fisher Kernel approach.
机译:隐马尔可夫模型(HMM)已成功应用于各种序列建模问题。在分类上下文中,最简单的方法之一是为每个班级训练一个HMM。然后将一个测试序列分配给其HMM产生最大后验(MAP)概率的类别。当正确估计模型时,这种生成方案效果很好。但是,由于缺乏先验知识,估计差,违反假设或训练数据不足,如果采用不正确的模型,结果可能会变差。为了改善这些情况下的结果,我们建议将HMM的描述强度与判别式分类器结合起来。这是通过在HMM诱导的向量空间中训练基于特征的分类器来实现的,该向量空间由单个隐马尔可夫模型的特定组件定义。我们介绍了构建此类向量空间的四种主要方法,并研究了哪些训练有素的组合器在哪种情况下有用。此外,与动态内核相比,尤其是与Fisher Kernel方法相比,我们激励并讨论了我们方法的优点。

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