基于作者的圣训分类数据集(ABCD)

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
A. Ramzy, Marwan Torki, Mohamed Abdeen, O. Saif, Mustafa ElNainay, AbdAllah Alshanqiti, E. Nabil
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引用次数: 0

摘要

宗教研究是自然语言处理的丰富领域。原因是所有宗教都有书面的指示。在本文中,我们将NLP应用于伊斯兰圣训,这是先知穆罕默德、他的同伴或他的追随者的书面传统、言论、行动、认可和讨论。圣训由两部分组成:讲述者链(Sanad)和圣训内容(Matn)。圣训是通过一连串的叙述者从作者传给圣训书的作者。我们所解决的问题集中在根据圣训的叙述起源对其进行分类上。这一点之所以重要,有几个原因。首先,它有助于确定圣训的真实性和可靠性。其次,它有助于追踪叙事链,并识别参与传播圣训的叙事者。最后,它有助于理解圣训传播的历史和文化背景,以及讲述者的不同权威级别。据我们所知,根据我们的文献综述,在使用机器/深度学习方法之前,这个问题并没有得到解决。为了解决这个分类问题,我们创建了一个新颖的基于作者的圣训分类数据集(ABCD),该数据集收集自经典的圣训书籍。ABCD的大小是29K圣训,它包含唯一的18K叙述者,以及他们的所有信息。我们应用了机器学习(ML)和深度学习(DL)方法。ML分别应用于Sanad和Matn;然后,我们对DL做了同样的处理。结果显示,使用Matn输入数据,ML比DL表现更好,F1得分为77%。使用Sanad输入数据,DL的表现优于ML,F1得分为92%。我们在F1成绩的同时使用了准确性和召回率;文末对结果进行了详细说明。我们声称ABCD和报告的结果将激励社区在这一新领域开展工作。我们的数据集和结果将代表对同一问题进行进一步研究的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hadiths Classification Using a Novel Author-Based Hadith Classification Dataset (ABCD)
Religious studies are a rich land for Natural Language Processing (NLP). The reason is that all religions have their instructions as written texts. In this paper, we apply NLP to Islamic Hadiths, which are the written traditions, sayings, actions, approvals, and discussions of the Prophet Muhammad, his companions, or his followers. A Hadith is composed of two parts: the chain of narrators (Sanad) and the content of the Hadith (Matn). A Hadith is transmitted from its author to a Hadith book author using a chain of narrators. The problem we solve focuses on the classification of Hadiths based on their origin of narration. This is important for several reasons. First, it helps determine the authenticity and reliability of the Hadiths. Second, it helps trace the chain of narration and identify the narrators involved in transmitting Hadiths. Finally, it helps understand the historical and cultural contexts in which Hadiths were transmitted, and the different levels of authority attributed to the narrators. To the best of our knowledge, and based on our literature review, this problem is not solved before using machine/deep learning approaches. To solve this classification problem, we created a novel Author-Based Hadith Classification Dataset (ABCD) collected from classical Hadiths’ books. The ABCD size is 29 K Hadiths and it contains unique 18 K narrators, with all their information. We applied machine learning (ML), and deep learning (DL) approaches. ML was applied on Sanad and Matn separately; then, we did the same with DL. The results revealed that ML performs better than DL using the Matn input data, with a 77% F1-score. DL performed better than ML using the Sanad input data, with a 92% F1-score. We used precision and recall alongside the F1-score; details of the results are explained at the end of the paper. We claim that the ABCD and the reported results will motivate the community to work in this new area. Our dataset and results will represent a baseline for further research on the same problem.
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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