Implementing a Sharia Chatbot as a Consultation Medium for Questions About Islam
- URL: http://arxiv.org/abs/2512.16644v1
- Date: Thu, 18 Dec 2025 15:15:46 GMT
- Title: Implementing a Sharia Chatbot as a Consultation Medium for Questions About Islam
- Authors: Wisnu Uriawan, Aria Octavian Hamza, Ade Ripaldi Nuralim, Adi Purnama, Ahmad Juaeni Yunus, Anissya Auliani Supriadi Putri,
- Abstract summary: The system processes a curated dataset of 25,000 question-answer pairs from authentic sources like the Qur'an, Hadith, and scholarly fatwas.<n>The prototype achieves 87% semantic accuracy in functional testing across diverse topics including fiqh, aqidah, ibadah, and muamalah.
- Score: 0.0
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: This research presents the implementation of a Sharia-compliant chatbot as an interactive medium for consulting Islamic questions, leveraging Reinforcement Learning (Q-Learning) integrated with Sentence-Transformers for semantic embedding to ensure contextual and accurate responses. Utilizing the CRISP-DM methodology, the system processes a curated Islam QA dataset of 25,000 question-answer pairs from authentic sources like the Qur'an, Hadith, and scholarly fatwas, formatted in JSON for flexibility and scalability. The chatbot prototype, developed with a Flask API backend and Flutter-based mobile frontend, achieves 87% semantic accuracy in functional testing across diverse topics including fiqh, aqidah, ibadah, and muamalah, demonstrating its potential to enhance religious literacy, digital da'wah, and access to verified Islamic knowledge in the Industry 4.0 era. While effective for closed-domain queries, limitations such as static learning and dataset dependency highlight opportunities for future enhancements like continuous adaptation and multi-turn conversation support, positioning this innovation as a bridge between traditional Islamic scholarship and modern AI-driven consultation.
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