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A linear memory algorithm for Baum-Welch training

机译:Baum-Welch训练的线性记忆算法

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摘要

Background:Baum-Welch training is an expectation-maximisation algorithm for training the emission and transition probabilities of hidden Markov models in a fully automated way. It can be employed as long as a training set of annotated sequences is known, and provides a rigorous way to derive parameter values which are guaranteed to be at least locally optimal. For complex hidden Markov models such as pair hidden Markov models and very long training sequences, even the most efficient algorithms for Baum-Welch training are currently too memory-consuming. This has so far effectively prevented the automatic parameter training of hidden Markov models that are currently used for biological sequence analyses.
机译:背景:Baum-Welch训练是一种期望最大化算法,用于以完全自动化的方式训练隐马尔可夫模型的发射和跃迁概率。只要知道带注释的序列的训练集就可以使用它,并且提供了一种严格的方法来导出保证至少局部最优的参数值。对于复杂的隐马尔可夫模型,例如成对隐马尔可夫模型和非常长的训练序列,即使是最有效的Baum-Welch训练算法,目前也非常消耗内存。迄今为止,这有效地防止了当前用于生物序列分析的隐马尔可夫模型的自动参数训练。

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