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Incremental Bayesian Classification for Chinese Question Sentences Based on Fuzzy Feedback

机译:基于模糊反馈的中文问题句子增量贝叶斯分类

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Aiming at problems such as fixed training set and lacking of completed information in traditional Bayesian classification, incremental learning mechanism is introduced. Combining with the characteristics of question sentences in Chinese question answering system, Semi-Naive Bayesian model is used to construct classifier. In order to make prior distribution of samples lean to even distribution, samples whose posterior probability approach 1/n (n: number of classes) were selected and appended into training set. The approaching extent of samples is described by fuzzy set, the fuzzy distinguish result is returned to classifier, therefore a fuzzy feedback mechanism is formed. Incremental Semi-Naive Bayesian classifier based on fuzzy feedback is proposed in this paper. The results of experiments show that this Bayesian classification can improve the accuracy of classifier effectively.
机译:旨在诸如固定培训集和缺乏在传统贝叶斯分类中缺乏完成信息的问题,引入了增量学习机制。结合中文答案系统中的问题句子的特征,半天真贝叶斯模型用于构建分类器。为了使样品的先前分配倾向于偶数分布,选择后概率方法1 / N(N:类别数量)的样本并附在训练集中。采样的接近范围是由模糊集描述的,模糊区分结果返回到分类器,因此形成模糊反馈机构。本文提出了基于模糊反馈的增量半野贝叶斯分类器。实验结果表明,这种贝叶斯分类可以有效地提高分级器的准确性。

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