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首页> 外文期刊>Journal of Computers >Incremental Na?ve Bayesian Learning Algorithm based on Classification Contribution Degree
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Incremental Na?ve Bayesian Learning Algorithm based on Classification Contribution Degree

机译:基于分类贡献程度的增量NA?ve贝叶斯学习算法

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—In order to improve the ability of gradual learning on the training set gotten in batches of Naive Bayesian classifier, an incremental Naïve Bayesian learning algorithm is improved with the research on the existing incremental Naïve Bayesian learning algorithms. Aiming at the problems with the existing incremental amending sample selection strategy, the paper introduced the concept of sample Classification Contribution Degree in the process of incremental learning, based on the comprehensive consideration about classification discrimination, noisy and redundancy of the new training data. The definition and theoretical analysis of sample Classification Contribution Degree is given in this paper. Then the paper proposed the incremental Naïve Bayesian classification method based on the Classification Contribution Degree. The experimental results show that the algorithm simplified the incremental learning process, improved the classification accuracy of incremental learning.
机译:- 为了提高逐步学习培训集的能力,批量生产贝叶斯分类器的培训集,这是一个增量的Naïve贝叶斯学习算法,随着现有增量Naïve贝叶斯学习算法的研究得到了改善。针对现有增量修正修正样品选择策略的问题,本文介绍了逐步学习过程中样本分类贡献程度的概念,基于对新培训数据的分类歧视,嘈杂和冗余的综合考虑。本文给出了样品分类贡献度的定义和理论分析。然后本文提出了基于分类贡献度的增量Naïve贝叶斯分类方法。实验结果表明,该算法简化了增量学习过程,提高了增量学习的分类准确性。

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