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Estimating discrete Markov models from various incomplete data schemes

机译:从各种不完整数据方案中估计离散马尔可夫模型

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摘要

The parameters of a discrete stationary Markov model are transition probabilities between states. Traditionally, data consist in sequences of observed states for a given number of individuals over the whole observation period. In such a case, the estimation of transition probabilities is straightforwardly made by counting one-step moves from a given state to another. In many real-life problems, however, the inference is much more difficult as state sequences are not fully observed, namely the state of each individual is known only for some given values of the time variable. A review of the problem is given, focusing on Monte Carlo Markov Chain (MCMC) algorithms to perform Bayesian inference and evaluate posterior distributions of the transition probabilities in this missing-data framework. Leaning on the dependence between the rows of the transition matrix, an adaptive MCMC mechanism accelerating the classical Metropolis-Hastings algorithm is then proposed and empirically studied.
机译:离散平稳马尔可夫模型的参数是状态之间的转移概率。传统上,数据包含整个观察期内给定数量个体的观察状态序列。在这种情况下,可以通过计算从给定状态到另一状态的单步移动来直接进行转移概率的估计。但是,在许多现实生活中的问题中,由于无法完全观察到状态序列,所以推论要困难得多,也就是说,仅对于某些给定的时间变量值,才知道每个人的状态。对该问题进行了综述,重点介绍了蒙特卡洛马尔可夫链(MCMC)算法,以执行贝叶斯推断并评估此缺失数据框架中转移概率的后验分布。依靠过渡矩阵各行之间的依赖关系,提出了一种可加速经典Metropolis-Hastings算法的自适应MCMC机制,并进行了实证研究。

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