Fakultas Teknologi Informasi

Classification of Bulughul Maraam Categories: Prohibitions, Recommendations, and Information Using Extreme Learning Machine and Fasttext

Penulis
Dosen:
  1. INA NAJIYAH
  2. RISSA NURFITRIANA HANDAYANI
Tanggal Terbit
16 Desember 2023
Kategori
Jurnal Nasional Terakreditasi [SINTA 2]
Penerbit
JOIN (Jurnal Informatika)
Kota / Negara
Bandung / Indonesia
Halaman
242-251
ISSN
2528-1682
URL
https://join.if.uinsgd.ac.id/index.php/join/article/view/1205
Abstrak
Hadith is the second source of Islamic law after the Quran. After the
hadiths were compiled, Imam of Hadith created collections of hadiths,
one of which is Imam Bukhari who compiled the book Bulughul Maraam,
which is considered to have the highest level of authenticity. Digital
collections of hadiths can now be found in the form of e-books and web
pages, which help in the search for hadiths. The classification of hadiths
is necessary to organize them by category, making it easier to search for
hadiths based on their categories. Text mining is needed to classify
hadiths because it can identify patterns in unstructured text. This
research aims to improve the accuracy of classifying recommended,
prohibited, and informational hadiths using a dataset of 7008 hadiths,
which consists of primary data taken from the book Bulughul Maraam in
the Indonesian language. Previously, similar research was conducted in
2017 that classified recommended, prohibited, and obligatory hadiths
with an accuracy of 85%, but only for Sahih Bukhari hadiths. In this
research, the same classification categories will be examined, proposing
a different method, namely the Extreme Learning Machine method and
Word2vec Fasttext for text representation with a larger dataset. The
results of this research show a model accuracy of 86.31%, 86%
precision, and 87% recall, indicating that the proposed model performs
well in classifying hadiths.