https://journal.50sea.com/index.php/IJIST/article/view/1254/1773
Journal Title: International Journal of Innovations in Science and Technology - Year 2025, Vol 7, Issue 1
Abstract
The Quran offers unparalleled guidance on ethics and morality, but extracting relevant teachings from its Urdu translations remains a challenge due to conventional keywordbased search methods that lack contextual understanding. This research proposes a Natural Language Processing (NLP)--based query model designed to improve the retrieval of Quranic verses related to ethics and morality in Urdu translations. By integrating Sentence Transformers for semantic search and a custom synonym expansion module, the model enhances accuracy and relevance in retrieving verses. The dataset widely accepted Urdu translation of the Quran, and the system is evaluated using precision, recall, and relevance scoring metrics to ensure effectiveness. The study demonstrates how NLP techniques can bridge the gap between traditional Quranic studies and modern computational methods, providing scholars, educators, and researchers with an advanced tool for exploring Quranic ethics. The proposed system achieves high precision and recall, offering a more effective approach to Quranic verse retrieval compared to conventional keyword-based searches. The research also highlights future opportunities for expanding the model to support multiple languages and broader thematic searches, further enhancing accessibility to Quranic knowledge.
Authors and Affiliations
Yasir Aftab, Dr. Muhammad Arshad Awan, Danish Khaleeq, Tehmima Ismail
Analysis of Machine Learning Modelsto Automatethe Early Detection of AlzheimerDisease
Alzheimer's disease is an advanced neurological illness that primarily affects those over 65. It is characterized by memory loss and cognitive deterioration. Although there isn't a known cure, early intervention can gr...
https://journal.50sea.com/index.php/IJIST/article/view/1237/1781
Biometric authentication is becoming more popular due to its secure and reliable way of identifying individuals, offering clear advantages over traditional methods. Since physiological signals are unique and non-invasi...
Deep Learning Based Multi Crop Disease Detection System
This research explores the integration of deep learning, computer vision, and edge computing to revolutionize crop disease detection. In response to the pressing need for prompt and accurate disease identification, thi...
https://journal.50sea.com/index.php/IJIST/article/view/1078/1629
The cryptocurrency market has evolved in unprecedented ways over the past decade. However, due to the high price volatility associated with cryptocurrencies, predicting their prices remains an attractive research topic...
Numerical Simulation of Flow Past a Square Object Detached with Controlling Object at Various Reynolds Number
A two-dimensional (2-D) numerical study has been conducted for flow past of two different configurations of square objects by using the numerical technique Lattice Boltzmann Method (LBM). In these configurations, one o...