Publication | Open Access
Conditions Under Which Conditional Independence and Scoring Methods Lead to Identical Selection of Bayesian Network Models
39
Citations
8
References
2013
Year
Bayesian StatisticEngineeringConditional IndependenceNetwork AnalysisBayesian InferenceCausal InferenceBayesian Network StructuresData ScienceBayesian Network ModelsBiostatisticsPublic HealthProbabilistic Graph TheoryStatisticsSocial Network AnalysisBayesian Hierarchical ModelingComplete DataGraphical ModelBayesian NetworkComputer ScienceBayesian NetworksBayesian StatisticsGraph TheoryStatistical InferenceScoring Methods LeadIdentical Selection
It is often stated in papers tackling the task of inferring Bayesian network structures from data that there are these two distinct approaches: (i) Apply conditional independence tests when testing for the presence or otherwise of edges; (ii) Search the model space using a scoring metric. Here I argue that for complete data and a given node ordering this division is a myth, by showing that cross entropy methods for checking conditional independence are mathematically identical to methods based upon discriminating between models by their overall goodness-of-fit logarithmic scores.
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