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A Bayesian Approach for Classicification of Continuous-Time Markov Sources

机译:贝叶斯探究连续时间马尔可夫源的分类方法

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A Bayesian approach for classification of Markov source is developed and studied. Each of M sources is described by a continuous-time, discrete-state Markov chain All states and times of transitions between states can be observed perfectly but the transition rate matrices which establish the parameters of the sources are not known a priori. A Bayesian training samples that consist of a member function from each chain. This leads to an iterative computationally simple classification algorithm.
机译:开发并研究了Markov源分类的贝叶斯途径。 M个源中的每一个由连续时间,离散状态马尔可夫链描述所有状态和状态之间的转换时间可以完全观察到,但是建立源参数的过渡速率矩阵不知道先验。一个贝叶斯训练样本,包括来自每个链的成员函数。这导致迭代计算简单的分类算法。

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