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Application of Na?ve Bayes, Decision Tree, and K-Nearest Neighbors for Automated Text Classification

机译:朴素贝叶斯,决策树和K最近邻在自动文本分类中的应用

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Nowadays, many applications that use large data have been developed due to the existence of the Internet of Things. These applications are translated into different languages and require automated text classification (ATC). The ATC process depends on the content of one or more predefined classes. However, this process is problematic for the Arabic translation of the data. This study aims to solve this issue by investigating the performances of three classification algorithms, namely, k-nearest neighbor (KNN), decision tree (DT), and nave Bayes (NB) classifiers, on Saudi Press Agency datasets. Results showed that the NB algorithm outperformed DT and KNN algorithms in terms of precision, recall, and F1. In future works, a new algorithm that can improve the handling of the ATC problem will be developed.
机译:如今,由于物联网的存在,已经开发了许多使用大数据的应用程序。这些应用程序被翻译成不同的语言,并且需要自动文本分类(ATC)。 ATC过程取决于一个或多个预定义类的内容。但是,此过程对于数据的阿拉伯语翻译是有问题的。本研究旨在通过调查三种分类算法在沙特新闻社数据集上的性能,即k最近邻(KNN),决策树(DT)和nave Bayes(NB)分类器来解决此问题。结果表明,在精度,查全率和F1方面,NB算法优于DT和KNN算法。在未来的工作中,将开发一种可以改善ATC问题处理能力的新算法。

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