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Main Authors: Uriawan, Wisnu, Priyajie, Achmad Ajie, Gustian, Angga, Hidayat, Fikri Nur, Rafiudin, Sendi Ahmad, Zaelani, Muhamad Fikri
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.16694
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author Uriawan, Wisnu
Priyajie, Achmad Ajie
Gustian, Angga
Hidayat, Fikri Nur
Rafiudin, Sendi Ahmad
Zaelani, Muhamad Fikri
author_facet Uriawan, Wisnu
Priyajie, Achmad Ajie
Gustian, Angga
Hidayat, Fikri Nur
Rafiudin, Sendi Ahmad
Zaelani, Muhamad Fikri
contents This research stems from the urgency to automate the thematic grouping of hadith in line with the growing digitalization of Islamic texts. Based on a literature review, the unsupervised learning approach with the Apriori algorithm has proven effective in identifying association patterns and semantic relations in unlabeled text data. The dataset used is the Indonesian Translation of the hadith of Bukhari, which first goes through preprocessing stages including case folding, punctuation cleaning, tokenization, stopword removal, and stemming. Next, an association rule mining analysis was conducted using the Apriori algorithm with support, confidence, and lift parameters. The results show the existence of meaningful association patterns such as the relationship between rakaat-prayer, verse-revelation, and hadith-story, which describe the themes of worship, revelation, and hadith narration. These findings demonstrate that the Apriori algorithm has the ability to automatically uncover latent semantic relationships, while contributing to the development of digital Islamic studies and technology-based learning systems.
format Preprint
id arxiv_https___arxiv_org_abs_2512_16694
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Unsupervised Thematic Clustering Of hadith Texts Using The Apriori Algorithm
Uriawan, Wisnu
Priyajie, Achmad Ajie
Gustian, Angga
Hidayat, Fikri Nur
Rafiudin, Sendi Ahmad
Zaelani, Muhamad Fikri
Artificial Intelligence
This research stems from the urgency to automate the thematic grouping of hadith in line with the growing digitalization of Islamic texts. Based on a literature review, the unsupervised learning approach with the Apriori algorithm has proven effective in identifying association patterns and semantic relations in unlabeled text data. The dataset used is the Indonesian Translation of the hadith of Bukhari, which first goes through preprocessing stages including case folding, punctuation cleaning, tokenization, stopword removal, and stemming. Next, an association rule mining analysis was conducted using the Apriori algorithm with support, confidence, and lift parameters. The results show the existence of meaningful association patterns such as the relationship between rakaat-prayer, verse-revelation, and hadith-story, which describe the themes of worship, revelation, and hadith narration. These findings demonstrate that the Apriori algorithm has the ability to automatically uncover latent semantic relationships, while contributing to the development of digital Islamic studies and technology-based learning systems.
title Unsupervised Thematic Clustering Of hadith Texts Using The Apriori Algorithm
topic Artificial Intelligence
url https://arxiv.org/abs/2512.16694