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Boosting Input/Output Hidden Markov Models for Sequence Classification

机译:促进输入/输出隐马尔可夫Markov模型进行序列分类

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Input/output hidden Markov model (IOHMM) has turned out to be effective in sequential data processing via supervised learning. However, there are several difficulties, e.g. model selection, unexpected local optima and high computational complexity, which hinder an IOHMM from yielding the satisfactory performance in sequence classification. Unlike previous efforts, this paper presents an ensemble learning approach to tackle the aforementioned problems of the IOHMM. As a result, simple IOHMMs of different topological structures are used as base learners in our boosting algorithm and thus an ensemble of simple IOHMMs tend to tackle a complicated sequence classification problem without the need of explicit model selection. Simulation results in text-dependent speaker identification demonstrate the effectiveness of boosted IOHMMs for sequence classification.
机译:输入/输出隐马尔可夫模型(IOHMM)已原始通过监督学习的顺序数据处理有效。但是,有几个困难,例如困难。模型选择,意外的本地OptimA和高计算复杂性,其妨碍了IOHMM在序列分类中产生令人满意的性能。与以往的努力不同,本文提出了一种解决IOHMM的上述问题的集合学习方法。结果,在升压算法中使用不同拓扑结构的简单IOHMMS作为基础学习者,因此简单的IOHMMS的集合倾向于在不需要显式模型选择的情况下解决复杂的序列分类问题。文本依赖扬声器识别的仿真结果证明了升压IOHMMS序列分类的有效性。

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