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Hidden Markov models: Multiple processes and model selection.

机译:隐藏的马尔可夫模型:多个过程和模型选择。

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摘要

This thesis considers two broad topics in the theory and application of hidden Markov models (HMMs): modelling multiple time series and model selection. Of particular interest is the application of these ideas to data collected on multiple sclerosis patients. Our results are, however, directly applicable to many different contexts in which HMMs are used.; One model selection issue that we address is the problem of estimating the number of hidden states in a HMM. We exploit the relationship between finite mixture models and HMMs to develop a method of consistently estimating the number of hidden states in a stationary HMM. This method involves the minimization of a penalized distance function.; Another such issue that we discuss is that of assessing the goodness-of-fit of a stationary HMM. We suggest a graphical technique that compares the empirical and estimated distribution functions, and show that, if the model is misspecified, the proposed plots will signal this lack of fit with high probability when the sample size is large. A unique feature of our technique is the plotting of both the univariate and multivariate distribution functions.; HMMs for multiple processes have not been widely studied. In this context, random effects may be a natural choice for capturing differences among processes. Building on the framework of generalized linear mixed models, we develop the theory required for implementing and interpreting HMMs with random effects and covariates. We consider the case where the random effects appear only in the conditional model for the observed data, as well as the more difficult setting where the random effects appear in the model for the hidden process. We discuss two methods of parameter estimation: direct maximum likelihood estimation and the EM algorithm. Finally, to determine whether the additional complexity introduced by the random effects is warranted, we develop a procedure for testing the significance of their variance components.; We conclude with a discussion of future work, with special attention to the problem of the design and analysis of multiple sclerosis clinical trials.
机译:本文考虑了隐马尔可夫模型(HMM)的理论和应用中的两个广泛主题:对多个时间序列建模和模型选择。这些想法在多发性硬化症患者收集的数据中的应用特别受关注。但是,我们的结果直接适用于使用HMM的许多不同环境。我们要解决的一个模型选择问题是估计HMM中隐藏状态数的问题。我们利用有限混合模型与HMM之间的关系来开发一种一致地估计固定HMM中隐藏状态数的方法。该方法涉及最小化惩罚距离函数。我们讨论的另一个此类问题是评估固定式HMM的拟合优度。我们建议使用一种图形技术来比较经验分布函数和估计的分布函数,并表明,如果模型指定不正确,建议的图将在样本量较大时以高概率表明缺乏拟合。我们技术的独特之处在于绘制单变量和多变量分布函数。用于多个过程的HMM尚未得到广泛研究。在这种情况下,随机效应可能是捕获过程之间差异的自然选择。基于广义线性混合模型的框架,我们开发了实现和解释具有随机效应和协变量的HMM所需的理论。我们考虑了随机效应仅出现在条件模型中观察到的数据的情况,以及更加困难的情况,即随机效应出现在模型中的隐藏过程。我们讨论了两种参数估计方法:直接最大似然估计和EM算法。最后,为了确定由随机效应引起的额外复杂性是否必要,我们开发了一种程序来测试其方差分量的重要性。我们以对未来工作的讨论作为结尾,特别关注多发性硬化症临床试验的设计和分析问题。

著录项

  • 作者

    MacKay, Rachel J.;

  • 作者单位

    The University of British Columbia (Canada).;

  • 授予单位 The University of British Columbia (Canada).;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2003
  • 页码 115 p.
  • 总页数 115
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 统计学;
  • 关键词

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