A Multi-Label Classification on Topics of Quranic Verses in English Translation Using Tree Augmented Naïve Bayes

Al Mira Khonsa Izzaty, M. S. Mubarok, Nanang Saiful Huda, Adiwijaya
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引用次数: 16

Abstract

Quran is an eternal miracle for depicting its linguistic perfection, truth, and validating of the latest scientific research. Every Muslims must conceive and implement the commandments, also avoid the prohibitions mentioned in the Quran. Each verse of the Quran has a different meaning, and one verse in the Quran can depict one or more topics of class that can be studied. To ease learning and to understand the verses of Quran, each of them needs to be classified appropriately on its different topics. In this research, the model of classification was built that is able to identify the topics classes of each verse of Quran by multi-label classification approach. The model was built using Tree Augmented Naïve Bayes (TAN). In order to improve performance, Mutual Information (MI) is employed to select dependent variables. The results show that the classification model built using TAN with MI obtained best performance with average Hamming Loss of 0.1121, while the model built using TAN without MI obtained average Hamming Loss of 0.1208.
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基于树增广的古兰经主题多标签分类Naïve贝叶斯
古兰经是一个永恒的奇迹,它描绘了语言的完美,真理,并证实了最新的科学研究。每个穆斯林都必须理解和执行诫命,也要避免古兰经中提到的禁令。《古兰经》的每一节经文都有不同的含义,《古兰经》中的一节经文可以描述一个或多个可以学习的课程主题。为了便于学习和理解《古兰经》的经文,每节经文都需要根据其不同的主题进行适当的分类。本研究通过多标签分类方法,建立了能够识别古兰经各节经文主题类别的分类模型。模型采用Tree Augmented Naïve Bayes (TAN)建立。为了提高性能,采用互信息(MI)来选择因变量。结果表明,使用TAN和MI构建的分类模型获得了最好的性能,平均Hamming Loss为0.1121,而使用TAN不使用MI构建的模型获得的平均Hamming Loss为0.1208。
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