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Improving The Accuracy of Na?ve Bayes Algorithm for Hoax Classification Using Particle Swarm Optimization

机译:利用粒子群优化提高对Hoax分类的Na ve贝叶斯算法的准确性

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Hoax news circulation is very widespread which occurs in the media information, both print and online media. For some people hoax news can only appear on the online media. But printed medias also often include hoax news in their published news. In the present era, it is very important providing information with relevant and additional facts otherwise it is categorized as hoax. Therefore, hoax classification approach is needed. This paper focuses on improving the accuracy of hoax classification in textual documents contents. Naive Bayes algorithm is used to train dataset with the use of PSO in the algorithm. Experiment is conducted with the trained model over 600 documents. It shows that feature selection with PSO affects the classification results performed using Na?ve Bayes. Accuracy increased from 91.17% without using feature selection, to 92.33% when feature selection is carried out using PSO.
机译:Hoax新闻循环非常普遍,其在媒体信息中发生在印刷和在线媒体中。对于某些人来说,Hoax新闻只能出现在线媒体上。但印刷媒体通常还包括其发布的新闻中的恶作剧新闻。在目前的时代,非常重要的提供相关和其他事实的信息,否则它被分类为恶作剧。因此,需要欺骗分类方法。本文侧重于提高文本文档内容中的恶作剧分类的准确性。 Naive Bayes算法用于在算法中使用PSO培训数据集。实验是在600多种文件中使用培训的型号进行。它表明,具有PSO的特征选择会影响使用NA ve Bayes进行的分类结果。精度从91.17%增加而不使用特征选择,在使用PSO进行特征选择时为92.33%。

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