IT JOURNAL RESEARCH AND DEVELOPMENT
Vol. 9 No. 1 (2024)

Automatic Vocal Completion for Indonesian Language Based on Recurrent Neural Network

Prasetiadi, Agi (Unknown)
Dwi Sripamuji, Asti (Unknown)
Riski Amalia, Risa (Unknown)
Saputra, Julian (Unknown)
Ramadhanti, Imada (Unknown)



Article Info

Publish Date
18 Jul 2024

Abstract

Most Indonesian social media users under the age of 25 use various words, which are now often referred to as slang, including abbreviations in communicating. Not only causes, but this variation also poses challenges for the natural language processing of Indonesian. The previous researchers tried to improve the Recurrent Neural Network to correct errors at the character level with an accuracy of 83.76%. This study aims to normalize abbreviated words in Indonesian into complete words using a Recurrent Neural Network in the form of Bidirected Long Short-Term Memory and Gated Recurrent Unit. The dataset is built with several weight confgurations from 3-Gram to 6-Gram consisting of words without vowels and complete words with vowels. Our model is the frst model in the world that tries to fnd incomplete Indonesian words, which eventually become fully lettered sentences with an accuracy of 97.44%.

Copyrights © 2024






Journal Info

Abbrev

ITJRD

Publisher

Subject

Computer Science & IT Control & Systems Engineering Engineering

Description

Information Technology Journal Research and Development (ITJRD) adalah Jurnal Ilmiah yang dibangun oleh Prodi Teknik Informatika, Universitas Islam Riau untuk memberikan sarana bagi para akademisi dan peneliti untuk mempublikasikan tulisan dan karya ilmiah di Bidang Teknologi Informatika. Adapun ...