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An Improved IAMB Algorithm for Markov Blanket Discovery
23
Citations
13
References
2010
Year
Typical Bayesian NetworkBayesian Decision TheoryEngineeringMachine LearningImproved Iamb AlgorithmPattern DiscoveryFeature SelectionMining MethodsOptimization-based Data MiningKnowledge Discovery In DatabasesData ScienceData MiningPattern RecognitionHidden Markov ModelBayesian MethodsPublic HealthMarkov BlanketKnowledge DiscoveryIamb AlgorithmBayesian NetworkComputer ScienceBayesian StatisticsRule InductionProbabilistic AnalysisStructure Discovery
Finding an efficient way to discover Markov blanket is one of the core issue s in data mining. This paper first discusses the problems existed in IAMB algorithm which is a typical algorithm for discovering the Markov b lanket of a target variable from the training dat a, and then proposes an improved algorithm λ -IAMB based on the improving approach which contains two aspects: code optimization and the improving strategy for conditional independence testing. E xperimental results show that λ -IAMB algorithm performs better than IAMB by finding Markov blanket of variables in typical Bayesian network and by testing the performance of them as feature selection method on some well-known real world datasets .
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