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HIDDEN MARKOV MODEL FOR PARAMETER ESTIMATION OF A RANDOM WALK IN A MARKOV ENVIRONMENT

机译:马尔可夫环境中随机漫步的参数估计的隐马尔可夫模型

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摘要

We focus on the parametric estimation of the distribution of a Markov environment from the observation of a single trajectory of a one-dimensional nearest-neighbor path evolving in this random environment. In the ballistic case, as the length of the path increases, we prove consistency, asymptotic normality and efficiency of the maximum likelihood estimator. Our contribution is two-fold: we cast the problem into the one of parameter estimation in a hidden Markov model (HMM) and establish that the bivariate Markov chain underlying this HMM is positive Harris recurrent. We provide different examples of setups in which our results apply, in particular that of DNA unzipping model, and we give a simple synthetic experiment to illustrate those results.
机译:我们着眼于在此随机环境中演化的一维最近邻路径的单个轨迹的观察中,对马尔可夫环境分布的参数估计。在弹道情况下,随着路径长度的增加,我们证明了一致性,渐近正态性和最大似然估计器的效率。我们的贡献是双重的:将问题转化为隐马尔可夫模型(HMM)的参数估计之一,并确定该HMM背后的双变量马尔可夫链为正哈里斯递归。我们提供了适用于我们的结果的设置的不同示例,尤其是DNA解压缩模型的示例,并且我们给出了一个简单的合成实验来说明这些结果。

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