HMM错分类概率的定界

Christoforos Keroglou, C. Hadjicostis
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引用次数: 1

摘要

本文考虑了在两个已知隐马尔可夫模型(hmm)之间对观测序列进行分类的问题。我们使用最小化错误概率(即错误分类的概率)的分类器,并且我们感兴趣的是通过计算错误的先验概率(在进行任何观察之前)来评估其性能。这个概率(分类器做出错误决策的概率)可以作为观察序列长度的函数,通过将所有可能的观察序列的错误分类概率相加,并由其相应的概率加权得到。为了避免与精确误差概率计算相关的高复杂性,我们建立了误差概率的上界,并找到了该上界随观测步数指数趋近于零的充分必要条件。我们将重点放在具有相同语言的两个hmm之间的分类上,这是最难表征的情况;我们的方法可以很容易地应用于任意两个hmm之间的分类。我们得到的边界也可以用来近似两个给定hmm之间的不相似度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bound on the probability of HMM misclassification
In this paper we consider the problem of classifying a sequence of observations among two known hidden Markov models (HMMs). We use a classifier that minimizes the probability of error (i.e., the probability of misclassification), and we are interested in assessing its performance by computing the a priori probability of error (before any observations are made). This probability (that the classifier makes an incorrect decision) can be obtained, as a function of the length of the sequence of observations, by summing up the probability of misclassification over all possible observation sequences, weighted by their corresponding probabilities. In an effort to avoid the high complexity associated with the computation of the exact probability of error, we establish an upper bound on the probability of error, and we find the necessary and sufficient conditions for this bound to tend to zero exponentially with the number of observation steps. We focus on classification among two HMMs that have the same language, which is the most difficult case to characterize; our approach can easily be applied to classification among any two arbitrary HMMs. The bound we obtain can also be used to approximate the dissimilarity between the two given HMMs.
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