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An efficient MCMC algorithm for continuous PH distributions

机译:一种高效的MCMC算法,用于连续pH分布

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This paper proposes an MCMC (Markov chain Monte Carlo) algorithm for estimating continuous phasetype distributions (CPHs). In Bayes estimation, it is well known that MCMC is one of the most useful and practical methods. The concrete MCMC algorithm for CPHs was developed by using Markov jump processes by Bladt et al. (2003). However, the existing MCMC algorithm spends much computation time in some cases. In this paper, we propose a new sampling algorithm which is based on uniformization technique and backward likelihood computation. The proposed algorithm is easier to implement and is more efficient in terms of computation time than the existing method.
机译:本文提出了一种用于估计连续分布(CPH)的MCMC(Markov链蒙特卡罗)算法。 在贝叶斯估计中,众所周知,MCMC是最有用和最实用的方法之一。 通过Bladt等人使用Markov跳跃过程开发了Cphs的具体MCMC算法。 (2003)。 但是,现有的MCMC算法在某些情况下花费了许多计算时间。 在本文中,我们提出了一种新的采样算法,其基于均匀化技术和向后似然计算。 所提出的算法更容易实现并且在计算时间比现有方法更高效。

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