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Computational learning of the conditional phase-type (C-Ph) distribution Learning C-Ph distributions

机译:条件相型(C-Ph)分布的计算学习学习C-Ph分布

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摘要

This paper presents a new algorithm for learning the structure of a special type of Bayesian network. The conditional phase-type (C-Ph) distribution is a Bayesian network that models the probabilistic causal relationships between a skewed continuous variable, modelled by the Coxian phase-type distribution, a special type of Markov model, and a set of interacting discrete variables. The algorithm takes a data set as input and produces the structure, parameters and graphical representations of the fit of the C-Ph distribution as output. The algorithm, which uses a greedy-search technique and has been implemented in MATLAB, is evaluated using a simulated data set consisting of 20,000 cases. The results show that the original C-Ph distribution is recaptured and the fit of the network to the data is discussed.
机译:本文提出了一种用于学习特殊类型贝叶斯网络结构的新算法。条件相位类型(C-Ph)分布是一种贝叶斯网络,该模型对由Coxian相位类型分布,特殊类型的Markov模型和一组相互作用的离散变量建模的偏斜连续变量之间的概率因果关系进行建模。该算法将数据集作为输入,并生成C-Ph分布拟合的结构,参数和图形表示作为输出。该算法使用贪婪搜索技术并已在MATLAB中实现,并使用包含20,000个案例的模拟数据集对其进行了评估。结果表明,重新捕获了原始的C-Ph分布,并讨论了网络对数据的拟合。

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