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BNFinder2: Faster Bayesian network learning and Bayesian classification

机译:BNFinder2:更快的贝叶斯网络学习和贝叶斯分类

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摘要

>Summary: Bayesian Networks (BNs) are versatile probabilistic models applicable to many different biological phenomena. In biological applications the structure of the network is usually unknown and needs to be inferred from experimental data. BNFinder is a fast software implementation of an exact algorithm for finding the optimal structure of the network given a number of experimental observations. Its second version, presented in this article, represents a major improvement over the previous version. The improvements include (i) a parallelized learning algorithm leading to an order of magnitude speed-ups in BN structure learning time; (ii) inclusion of an additional scoring function based on mutual information criteria; (iii) possibility of choosing the resulting network specificity based on statistical criteria and (iv) a new module for classification by BNs, including cross-validation scheme and classifier quality measurements with receiver operator characteristic scores.>Availability and implementation: BNFinder2 is implemented in python and freely available under the GNU general public license at the project Web site , together with a user’s manual, introductory tutorial and supplementary methods.>Contact: or >Supplementary information: are available at Bioinformatics online.
机译:>摘要:贝叶斯网络(BN)是适用于多种不同生物现象的通用概率模型。在生物应用中,网络的结构通常是未知的,需要从实验数据中推断出来。 BNFinder是一种精确算法的快速软件实现,可以通过大量实验观察来找到网络的最佳结构。本文介绍的第二个版本代表对以前版本的重大改进。改进措施包括:(i)并行学习算法导致BN结构学习时间加快一个数量级; (ii)根据共同信息标准增加评分功能; (iii)有可能根据统计标准选择最终的网络特异性,并且(iv)通过BN进行分类的新模块,包括交叉验证方案和具有接收者操作员特征评分的分类器质量测量。>可用性和实现: BNFinder2是用python实现的,可在GNU通用公共许可下在项目网站上免费获得,以及用户手册,入门教程和补充方法。>联系:或>补充信息: 可从生物信息学在线获得。

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