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Consistent Estimation of Partition Markov Models

机译:分区马尔可夫模型的一致估计

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The Partition Markov Model characterizes the process by a partition L of the state space, where the elements in each part of L share the same transition probability to an arbitrary element in the alphabet. This model aims to answer the following questions: what is the minimal number of parameters needed to specify a Markov chain and how to estimate these parameters. In order to answer these questions, we build a consistent strategy for model selection which consist of: giving a size n realization of the process, finding a model within the Partition Markov class, with a minimal number of parts to represent the process law. From the strategy, we derive a measure that establishes a metric in the state space. In addition, we show that if the law of the process is Markovian, then, eventually, when n goes to infinity, L will be retrieved. We show an application to model internet navigation patterns.
机译:分区马尔可夫模型通过状态空间的分区L来表征过程,其中L的每个部分中的元素对字母表中的任意元素都具有相同的转移概率。该模型旨在回答以下问题:指定马尔可夫链所需的最少参数数量是多少,以及如何估算这些参数。为了回答这些问题,我们建立了一个模型选择的一致策略,该策略包括:给出过程的大小n,在Partition Markov类中找到一个模型,用最少的零件来表示过程定律。从该策略中,我们得出一种在状态空间中建立度量的度量。另外,我们表明,如果过程定律是马尔可夫定律,那么最终,当n变为无穷大时,将检索L。我们展示了一个用于建模互联网导航模式的应用程序。

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