Browse By Repository


Similarity Detection for Hadith of Fiqh of Women using Cosine Similarity and Boyer Moore Method


M Yunus,, Badruzzaman and Mohamad, Irfan and Wildan Budiawan, Zulfikar and Wahyudin, Darmalaksana (2020) Similarity Detection for Hadith of Fiqh of Women using Cosine Similarity and Boyer Moore Method. International Journal of Advanced Trends in Computer Science and Engineering, 9 (1). pp. 63-75. ISSN 2278-3091

[img] Text
Similarity Detection for Hadith of Fiqh of Women using Cosine Similarity.pdf

Download (630kB)

Abstract

Nowadays, people can get information easily including about fiqh and hadith as a source of Islamic law. The problem is, there are so many articles about jurisprudence whose understanding refers to the laws or rules relating to the hadith whose validity cannot be ascertained. The study aims to determine the degree of similarity between the hadith contained in articles with reliable sources such as books and books. One of the outputs of this study is an application that can determine the similarity of hadith using Cosine Similarity and Boyer Moore by matching strings starting from the right position to the leftmost position and using the cosine similarity method to determine the similarity based on the calculation of the distance between vectors A and B that produce angles cosine x between the two vectors. In the testing phase, the proposed model can run as planned. In one test scenario, the number of keywords tested was 9 cases compared to the categories in the database with an accuracy of 80%. And determine the similarity of two or more objects Using the cosine similarity method with weights The percentage of similarity is proportional to the sample of words entered, which is equal to 36%.

Item Type: Journal
Uncontrolled Keywords: Boyer Moore, Cosine Similarity, Fiqh, Hadith, Text Mining
Subjects: H Social Sciences > HF Commerce
Depositing User: Aida Rashidah Maajis
Date Deposited: 28 Oct 2020 07:53
Last Modified: 28 Oct 2020 07:53
URI: http://ur.aeu.edu.my/id/eprint/806

Actions (login required)

View Item View Item