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SPIRAL: Efficient and Exact Model Identification for Hidden Markov Models

机译:螺旋:隐马尔可夫模型的有效和精确的模型识别

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Hidden Markov models (HMMs) have received considerable attention in various communities (e.g, speech recognition, neurology and bioinformatic) since many applications that use HMM have emerged. The goal of this work is to identify efficiently and correctly the model in a given dataset that yields the state sequence with the highest likelihood with respect to the query sequence. We propose SPIRAL, a fast search method for HMM datasets. To reduce the search cost, SPIRAL efficiently prunes a significant number of search candidates by applying successive approximations when estimating likelihood. We perform several experiments to verify the effectiveness of SPIRAL. The results show that SPIRAL is more than 500 times faster than the naive method.
机译:自从出现了许多使用HMM的应用程序以来,隐马尔可夫模型(HMM)在各个社区(例如语音识别,神经病学和生物信息学)都受到了相当大的关注。这项工作的目标是在给定的数据集中高效,正确地识别模型,从而得出相对于查询序列而言可能性最高的状态序列。我们提出SPIRAL,这是一种针对HMM数据集的快速搜索方法。为了降低搜索成本,SPIRAL通过在估计似然时应用逐次逼近来有效地修剪大量搜索候选对象。我们进行了几次实验,以验证SPIRAL的有效性。结果表明,SPIRAL比单纯方法快500倍以上。

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