多观测序列隐马尔可夫模型参数的改进估计

Richard I. A. Davis, B. Lovell, T. Caelli
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引用次数: 48

摘要

隐马尔可夫模型(hmm)在模式识别中的巨大流行是由于能够通过Baum-Welch和其他重新估计过程从观察序列中“学习”模型参数。在从一组观测序列而不是单个序列中进行HMM参数估计的情况下,我们需要找到在给定整个观测序列集的情况下使估计模型的似然值最大化的参数的技术。本研究的重要性在于,从多个观测值中估计参数的HMM模型比从任何单个观测序列中学习的HMM模型的可能性要高许多个数量级,从而大大提高了HMM“学习”的有效性。在本文中,我们提出的技术通常比Rabiner的著名方法在可见和未见序列上更有可能找到模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved estimation of hidden Markov model parameters from multiple observation sequences
The huge popularity of hidden Markov models (HMMs) in pattern recognition is due to the ability to "learn" model parameters from an observation sequence through Baum-Welch and other re-estimation procedures. In the case of HMM parameter estimation from an ensemble of observation sequences, rather than a single sequence, we require techniques for finding the parameters which maximize the likelihood of the estimated model given the entire set of observation sequences. The importance of this study is that HMMs with parameters estimated from multiple observations are shown to be many orders of magnitude more probable than HMM models learned from any single observation sequence - thus the effectiveness of HMM "learning" is greatly enhanced. In this paper we present techniques that usually find models significantly more likely than Rabiner's well-known method on both seen and unseen sequences.
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