Text Classification of Translated Qur'anic Verses Using Supervised Learning Algorithm

Dhea Ananda, Syahida Nurhidayarnis, Tiara Afrah Afifah, Muhammad Anang Ramadhan, Ilvan Mahendra
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Abstract

The Quran, comprising Allah's absolute divine messages, serves as guidance. Although reading the Quran with tafsir proves beneficial, it may not offer a comprehensive understanding of the entire message conveyed by the Al-Quran. This is due to the Quran addressing diverse topics within each surah, necessitating readers to reference interconnected verses throughout the entire chapter for a holistic interpretation. However, given the extensive and varied verses, obtaining accurate translations for each verse can be a complex and time-consuming endeavor. Therefore, it becomes imperative to categorize the translated text of Quranic verses into distinct classes based on their primary content, utilizing Fuzzy C-Means, Random Forest, and Support Vector Machine. The analysis, considering the obtained Davies-Bouldin Index (DBI) value, reveals that cluster 9 emerges as the optimal cluster for classifying QS An-Nisa data, exhibiting the lowest DBI value of 4.30. Notably, the Random Forest algorithm demonstrates higher accuracy compared to the SVM algorithm, achieving an accuracy rate of 66.37%, while the SVM algorithm attains an accuracy of 50.56%.
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使用监督学习算法对《古兰经》译文进行文本分类
古兰经》由真主的绝对神谕组成,具有指导作用。虽然阅读《古兰经》的塔夫西尔(tafsir)证明是有益的,但它可能无法全面理解《古兰经》传达的全部信息。这是因为《古兰经》在每个经节中都涉及不同的主题,读者必须参考整个章节中相互关联的经文,才能获得全面的解释。然而,由于经文内容广泛且多种多样,为每段经文获取准确的译文可能是一项复杂而耗时的工作。因此,当务之急是利用模糊 C-Means、随机森林和支持向量机,根据《古兰经》经文的主要内容将其翻译文本分为不同的类别。考虑到所获得的戴维斯-博尔丁指数(DBI)值,分析表明第 9 组是对《古兰经》An-Nisa 数据进行分类的最佳组群,其 DBI 值最低,为 4.30。值得注意的是,与 SVM 算法相比,随机森林算法的准确率更高,达到了 66.37%,而 SVM 算法的准确率为 50.56%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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