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Predicting Semantic Categories in Text Based on Knowledge Graph Combined with Machine Learning Techniques

机译:基于知识图谱结合机器学习技术的文本语义类别预测

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摘要

The Quran and the Sunnah are the two principal elements of the Islamic religion, and the hadith is an interpreter of the Quran. Hadith is everything that the Messenger Muhammad said, whether it was a word, an action, or a good adjective of the Prophet. Given the status of the hadith of Muslims everywhere in the world, digging into it is the m ain perspective to evoke the guiding principles and institutions that Muslims must follow. The mining of the hadith has received much attention in recent times, but so far, the work has not been fully implemented. This study focuses on predicting the semantic categories of the unclassified hadith text based on its text. The model can distinguish between several categories to predict the optimal one such as ablution, fasting, Hajj, and Zakat. To achieve this goal, a Knowledge-Graphic (KG) prediction model was developed to improve machine learning classifiers from the standpoint of two unique traits. 1) Define pivotal terms that have high values. II) Taking into account all the paths of those pivotal terms through their convergence with the categories in the Knowledge-Graphic of all the paths that link them. We rely on six books with more than 30,000 hadith and 120 classifications. Empirically, we found optimistic results in combining the KG model and machine learning classifiers.
机译:《古兰经》和《圣训》是伊斯兰教的两个主要元素,圣训是《古兰经》的解释者。圣训是使者穆罕默德所说的一切,无论是先知的一句话、一个行动还是一个好的形容词。鉴于世界各地穆斯林圣训的地位,深入研究它是唤起穆斯林必须遵循的指导原则和制度的视角。圣训的挖掘近年来受到了很多关注,但到目前为止,这项工作尚未完全实施。本研究的重点是根据文本预测未分类圣训文本的语义类别。该模型可以区分几个类别来预测最佳类别,例如沐浴、禁食、朝觐和 Zakat。为了实现这一目标,开发了一种知识图学 (KG) 预测模型,从两个独特特征的角度改进机器学习分类器。1)定义具有高价值的关键术语。II) 通过这些关键术语与链接它们的所有路径的知识图中的类别的收敛,考虑这些术语的所有路径。我们依靠六本书,其中包含 30,000 多条圣训和 120 种分类。根据经验,我们发现将KG模型和机器学习分类器相结合的结果很乐观。

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