Abstract
Direct dependencies and conditional dependencies in restricted Bayesian network classifiers (BNCs) are two basic kinds of dependencies. Traditional approaches, such as filter and wrapper, have proved to be beneficial to identify non-significant dependencies one by one, whereas the high computational overheads make them inefficient especially for those BNCs with high structural complexity. Study of the distributions of information-theoretic measures provides a feasible approach to identifying non-significant dependencies in batch that may help increase the structure reliability and avoid overfitting. In this paper, we investigate two extensions to the k-dependence Bayesian classifier, MI-based feature selection, and CMI-based dependence selection. These two techniques apply a novel adaptive thresholding method to filter out redundancy and can work jointly. Experimental results on 30 datasets from the UCI machine learning repository demonstrate that adaptive thresholds can help distinguish between dependencies and independencies and the proposed algorithm achieves competitive classification performance compared to several state-of-the-art BNCs in terms of 0–1 loss, root mean squared error, bias, and variance.
Funder
National Natural Science Foundation of China
Subject
General Physics and Astronomy
Reference42 articles.
1. Probabilistic Reasoning in Intelligent Systems: Networks of Plausible Inference;Pearl,1988
2. Scalable learning of Bayesian network classifiers;Martínez;J. Mach. Learn. Res.,2016
3. Pattern Classification and Scene Analysis;Duda,1973
4. Steps toward Artificial Intelligence
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