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An Implementation of Support Vector Machine on the Multi-Label Classification of English-Translated Quranic Verses

机译:对英语翻译Quranic Verses多标签分类的支持向量机的实现

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One of the attempts to understand the meaning and content of the Quran, the central religious text of Islam, is the topic classification of Quranic verses. Verse topic classification aims to help the reader, so he can easily and quickly find information or knowledge contained in the Quran. In this paper, we build a classification model for the topics of English- translated Quranic verses using Support Vector Machine (SVM). The problem of classification of topics of Quranic verses is categorized as a multi-label classification problem. Hence, we design an SVM-based classifier to solve the multi-label classification of topics of Quranic verses. We also implement several techniques such as preprocessing, feature extraction, and dimensionality reduction to solve this problem. Then, we use Hamming Loss as a performance measure to evaluate our proposed classifier model. We find that our proposed model yields outstanding results.
机译:其中一个试图了解古兰经,伊斯兰教的中央宗教文本的意义和内容,是古兰经诗歌的主题。 Verse主题分类旨在帮助读者,因此他可以轻松快速地找到古兰经中包含的信息或知识。在本文中,我们使用支持向量机(SVM)构建英语翻译Quranic Verses主题的分类模型。 QURANIC VERSES主题分类问题被分类为多标签分类问题。因此,我们设计了一个基于SVM的分类器,解决了Quranic Verses主题的多标签分类。我们还实现了多种技术,例如预处理,特征提取和维度减少以解决这个问题。然后,我们使用汉明损失作为评估我们所提出的分类器模型的性能措施。我们发现我们的拟议模型产生了出色的结果。

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