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GlobalMIT: learning globally optimal dynamic bayesian network with the mutual information test criterion

机译:GlobalMIT:使用互信息测试标准学习全局最优动态贝叶斯网络

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Motivation: Dynamic Bayesian networks (DBN) are widely applied in modeling various biological networks including the gene regulatory network (GRN). Due to the NP-hard nature of learning static Bayesian network structure, most methods for learning DBN also employ either local search such as hill climbing, or a meta stochastic global optimization framework such as genetic algorithm or simulated annealing.Results: This article presents GlobalMIT, a toolbox for learning the globally optimal DBN structure from gene expression data. We propose using a recently introduced information theoretic-based scoring metric named mutual information test (MIT). With MIT, the task of learning the globally optimal DBN is efficiently achieved in polynomial time.
机译:动机:动态贝叶斯网络(DBN)被广泛应用于各种生物网络的建模,包括基因调控网络(GRN)。由于学习静态贝叶斯网络结构的NP困难性,大多数学习DBN的方法也采用局部搜索(例如爬山)或元随机全局优化框架(例如遗传算法或模拟退火)。结果:本文介绍GlobalMIT ,一个用于从基因表达数据中学习全局最佳DBN结构的工具箱。我们建议使用最近引入的基于信息理论的评分标准,称为互信息测试(MIT)。使用MIT,可以在多项式时间内有效地完成学习全局最佳DBN的任务。

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