首页> 外文会议>International Conference on Data Warehousing and Knowledge Discovery(DaWaK 2007); 20070903-07; Regensburg(DE) >A Markov Blanket Based Strategy to Optimize the Induction of Bayesian Classifiers When Using Conditional Independence Learning Algorithms
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A Markov Blanket Based Strategy to Optimize the Induction of Bayesian Classifiers When Using Conditional Independence Learning Algorithms

机译:使用条件独立学习算法时基于Markov毯的贝叶斯分类器归纳优化策略

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摘要

A Bayesian Network (BN) is a multivariate joint probability distribution graphical representation that can be induced from data. The induction of a BN is a NP problem. Two main approaches can be used for inducing a BN from data, namely, Conditional Independence (CI) and the Heuristic Search (HS) based algorithms. When a BN is induced for classification purposes (Bayesian Classifier - BC), it is possible to impose some specific constraints aiming at an increase in computational efficiency. In this paper a new CI based algorithm (MarkovPC) to induce BCs from data is proposed. MarkovPC uses the Markov Blanket concept in order to impose some constraints and optimize the traditional PC algorithm. Experiments performed with ALARM BN, as well as other UCI and artificial domains revealed that MarkovPC tends to execute fewer comparisons than the traditional PC. The experiments also show that the MarkovPC produces competitive classification rates when compared with both, PC and Na?ve Bayes.
机译:贝叶斯网络(BN)是可以从数据中得出的多元联合概率分布图形表示。 BN的诱导是一个NP问题。可以使用两种主要方法从数据中得出BN,即基于条件独立(CI)和基于启发式搜索(HS)的算法。当出于分类目的而引入BN时(贝叶斯分类器-BC),有可能强加一些特定的约束以提高计算效率。本文提出了一种新的基于CI的算法(MarkovPC)来从数据中得出BC。 MarkovPC使用Markov Blanket概念来施加一些约束并优化传统PC算法。使用ALARM BN以及其他UCI和人工域进行的实验表明,与传统PC相比,MarkovPC倾向于执行较少的比较。实验还表明,与PC和朴素贝叶斯相比,MarkovPC产生了竞争性的分类率。

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