基于SMOTE技术的古兰经主题分类

Bassam Arkok, A. Zeki
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引用次数: 2

摘要

本文旨在运用SMOTE方法,对古兰经中经文数量不同的主题进行分类。SMOTE用于重新平衡这些古兰经主题的少数班级样本。此外,SMOTE与许多分类器相结合,以选择最佳的古兰经分类技术。同时,研究了SMOTE的k值,为古兰经数据集选择最佳值,提高不平衡分类的性能。SMOTE是用许多分类器来实现的,以选择最好的一个。结果表明,在使用SMOTE方法对古兰经主题进行分类时,投票感知器分类器是最好的分类技术。同时得出SMOTE方法中K数的最佳取值范围为[1,10],以获得更高的古兰经分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Quranic Topics Using SMOTE Technique
This paper aims to classify the Quranic topics that differ in their number of verses by applying the SMOTE technique. SMOTE is used to rebalance samples of minority classes in these Quranic topics. Moreover, SMOTE is combined with many classifiers to choose the best technique for the Quranic classification. Also, the k-values of SMOTE were studied to select the best values for the Quranic datasets and improve the performance of imbalanced classification. The SMOTE was implemented with many classifiers to choose the best one. The results showed that the Voted Perceptron classifier was the best technique when implemented with the SMOTE method to classify the Quranic topics. Also, it is concluded that the best range of K numbers in SMOTE method is [1, 10], to obtain the higher performance of Quranic classification.
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