Stochastic margin-based structure learning of Bayesian network classifiers

作者:

Highlights:

摘要

The margin criterion for parameter learning in graphical models gained significant impact over the last years. We use the maximum margin score for discriminatively optimizing the structure of Bayesian network classifiers. Furthermore, greedy hill-climbing and simulated annealing search heuristics are applied to determine the classifier structures. In the experiments, we demonstrate the advantages of maximum margin optimized Bayesian network structures in terms of classification performance compared to traditionally used discriminative structure learning methods. Stochastic simulated annealing requires less score evaluations than greedy heuristics. Additionally, we compare generative and discriminative parameter learning on both generatively and discriminatively structured Bayesian network classifiers. Margin-optimized Bayesian network classifiers achieve similar classification performance as support vector machines. Moreover, missing feature values during classification can be handled by discriminatively optimized Bayesian network classifiers, a case where purely discriminative classifiers usually require mechanisms to complete unknown feature values in the data first.

论文关键词:Bayesian network classifier,Discriminative learning,Maximum margin learning,Structure learning

论文评审过程:Received 29 November 2011, Revised 24 May 2012, Accepted 4 August 2012, Available online 16 August 2012.

论文官网地址:https://doi.org/10.1016/j.patcog.2012.08.007