4.7 Article

Alleviating the attribute conditional independence and IID assumptions of averaged one-dependence estimator by double weighting

期刊

KNOWLEDGE-BASED SYSTEMS
卷 250, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.knosys.2022.109078

关键词

Bayesian network classifier; Attribute weighting; Model weighting; Generative learning; Discriminative learning

资金

  1. National Key Research and Development Program of China [2019YFC180 4804]
  2. Scientific and Technological Developing Scheme of Jilin Province [20200201281JC]
  3. High Performance Computing Center of Jilin University, China

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This research focuses on improving the performance of Bayesian network classifiers by using a double weighting scheme in AODE. Experimental evaluations show that attribute weighting and model weighting are complementary, and DWAODE demonstrates significant advantages in terms of zero-one loss, bias-variance decomposition, RMSE, Friedman and Nemenyi tests.
Learning Bayesian network classifiers (BNCs) from data is NP-hard. Of numerous BNCs, averaged onedependence estimator (AODE) performs extremely well against more sophisticated newcomers, and its trade-off between bias and variance can be attributed to the independence assumption and i.i.d. assumption, which respectively address the issues of structure complexity and data complexity. To alleviate these assumptions and improve AODE, we propose to apply double weighting, including attribute weighting and model weighting, to finely tune the estimates of conditional probability based on generative learning and joint probability based on discriminative learning, respectively. Instance weighting is introduced to define the information-theoretic metrics for identifying the variation in probability distributions for different data points. This highly scalable learning approach can establish a decision boundary that is specifically tailored to each instance. Our extensive experimental evaluation on 34 datasets from the UCI machine learning repository shows that, attribute weighting and model weighting are complementary although they can work separately. The proposed AODE applying double weighting schema, called DWAODE, is a competitive alternative to other weighting approaches. The experimental results show that DWAODE demonstrates significant advantage in terms of zero-one loss, bias-variance decomposition, RMSE (root mean squared error), Friedman and Nemenyi tests. (c) 2022 Elsevier B.V. All rights reserved.

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