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tc - Techno.Com - Vol. 23 Issue. 1 (2024)

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

Ahmad Rofiqul Muslikh, Ismail Akbar, De Rosal Ignatius Moses Setiadi, Hussain Md Mehedul Islam,



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.







DOI :


Sitasi :

0

PISSN :

EISSN :

2356-2579

Date.Create Crossref:

21-Feb-2024

Date.Issue :

21-Feb-2024

Date.Publish :

21-Feb-2024

Date.PublishOnline :

21-Feb-2024



PDF File :

Resource :

Open

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