Techno.Com: Jurnal Teknologi Informasi
Vol 23, No 1 (2024): Februari 2024

Multi-label Classification of Indonesian Al-Quran Translation based CNN, BiLSTM, and FastText

Ahmad Rofiqul Muslikh (University of Merdeka Malang)
Ismail Akbar (University of Merdeka Malang)
De Rosal Ignatius Moses Setiadi (Universitas Dian Nuswantoro)
Hussain Md Mehedul Islam (Unknown)



Article Info

Publish Date
21 Feb 2024

Abstract

Studying the Qur'an is a pivotal act of worship in Islam, which necessitates a structured understanding of its verses to facilitate learning and referencing. Reflecting this complexity, each Quranic verse is rich with unique thematic elements and can be classified into a range of distinct categories. This study explores the enhancement of a multi-label classification model through the integration of FastText. Employing a CNN+Bi-LSTM architecture, the research undertakes the classification of Quranic translations across categories such as Tauhid, Ibadah, Akhlak, and Sejarah. Based on model evaluation using F1-Score, it shows significant differences between the CNN+Bi-LSTM model without FastText, with the highest result being 68.70% in the 80:20 testing configuration. Conversely, the CNN+Bi-LSTM+FastText model, combining embedding size and epoch parameters, achieves a result of 73.30% with an embedding size of 200, epoch of 100, and a 90:10 testing configuration. These findings underscore the significant impact of FastText on model optimization, with an enhancement margin of 4.6% over the base model.

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Journal Info

Abbrev

technoc

Publisher

Subject

Computer Science & IT Engineering

Description

Topik dari jurnal Techno.Com adalah sebagai berikut (namun tidak terbatas pada topik berikut) : Digital Signal Processing, Human Computer Interaction, IT Governance, Networking Technology, Optical Communication Technology, New Media Technology, Information Search Engine, Multimedia, Computer Vision, ...