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Bayesian Prediction Model Based on Attribute Weighting and Kernel Density Estimations

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  • Zhong-Liang Xiang
  • Xiang-Ru Yu
  • Dae-Ki Kang

Abstract

Although naïve Bayes learner has been proven to show reasonable performance in machine learning, it often suffers from a few problems with handling real world data. First problem is conditional independence; the second problem is the usage of frequency estimator. Therefore, we have proposed methods to solve these two problems revolving around naïve Bayes algorithms. By using an attribute weighting method, we have been able to handle conditional independence assumption issue, whereas, for the case of the frequency estimators, we have found a way to weaken the negative effects through our proposed smooth kernel method. In this paper, we have proposed a compact Bayes model, in which a smooth kernel augments weights on likelihood estimation. We have also chosen an attribute weighting method which employs mutual information metric to cooperate with the framework. Experiments have been conducted on UCI benchmark datasets and the accuracy of our proposed learner has been compared with that of standard naïve Bayes. The experimental results have demonstrated the effectiveness and efficiency of our proposed learning algorithm.

Suggested Citation

  • Zhong-Liang Xiang & Xiang-Ru Yu & Dae-Ki Kang, 2015. "Bayesian Prediction Model Based on Attribute Weighting and Kernel Density Estimations," Mathematical Problems in Engineering, Hindawi, vol. 2015, pages 1-7, October.
  • Handle: RePEc:hin:jnlmpe:170324
    DOI: 10.1155/2015/170324
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