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Bayesian Naive Bayes classifiers to text classification

机译:贝叶斯朴素贝叶斯分类器到文本分类

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摘要

>Text classification is the task of assigning predefined categories to natural language documents, and it can provide conceptual views of document collections. The Naïve Bayes (NB) classifier is a family of simple probabilistic classifiers based on a common assumption that all features are independent of each other, given the category variable, and it is often used as the baseline in text classification. However, classical NB classifiers with multinomial, Bernoulli and Gaussian event models are not fully Bayesian. This study proposes three Bayesian counterparts, where it turns out that classical NB classifier with Bernoulli event model is equivalent to Bayesian counterpart. Finally, experimental results on20 newsgroupsandWebKBdata sets show that the performance of Bayesian NB classifier with multinomial event model is similar to that of classical counterpart, but Bayesian NB classifier with Gaussian event model is obviously better than classical counterpart.
机译: >文本分类是为自然语言文档分配预定义类别的任务,它可以提供文档集合的概念性视图。朴素贝叶斯(NB)分类器是一个简单的概率分类器,基于一个共同的假设:给定类别变量,所有功能都彼此独立,并且通常用作文本分类的基准。但是,具有事件,伯努利和高斯事件模型的经典NB分类器并不是完全的贝叶斯模型。这项研究提出了三个贝叶斯对应物,事实证明,具有伯努利事件模型的经典NB分类器等效于贝叶斯对应物。最后,对 20个新闻组 WebKB 数据集的实验结果表明,具有多项式事件模型的贝叶斯NB分类器的性能与经典对应项相似,而具有贝叶斯NB分类器的经典事件具有相似的性能。高斯事件模型明显优于经典事件模型。

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