IMPLEMENTASI DEEP LEARNING DENGAN SEQUENCE TO SEQUENCE UNTUK SISTEM PEMBANGKIT PERTANYAAN OTOMATIS

Automatic question generation is defined as the task of automating the creation of question given a various of textual data. Research in automatic question generator (AQG) has been conducted for more than 10 years, mainly focused on factoid question. In all these studies, the state-of-the-art is att...

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Main Author: Joshua Muis, Ferdiant
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/48597
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:48597
spelling id-itb.:485972020-06-29T23:32:09ZIMPLEMENTASI DEEP LEARNING DENGAN SEQUENCE TO SEQUENCE UNTUK SISTEM PEMBANGKIT PERTANYAAN OTOMATIS Joshua Muis, Ferdiant Indonesia Final Project AQG; sequence-to-sequence; factoid; BiGRU; BiLSTM; Transformer; linguistic features; copy mechanism; coverage mechanism; SQuAD v2.0; TyDiQA. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/48597 Automatic question generation is defined as the task of automating the creation of question given a various of textual data. Research in automatic question generator (AQG) has been conducted for more than 10 years, mainly focused on factoid question. In all these studies, the state-of-the-art is attained using sequence-to-sequence approach. However, AQG system for Indonesian has not ever been researched intensely. In this work we construct an Indonesian automatic question generator, adapting the architecture from some previous works. In summary, we used sequence-to-sequence approach using BiGRU, BiLSTM, and Transformer with additional linguistic features, copy mechanism, and coverage mechanism. Since there is no public large dan popular Indonesian dataset for question generation, we translated SQuAD v2.0 factoid question answering dataset, with additional Indonesian TyDiQA dev set for testing. The system achieved BLEU1, BLEU2, BLEU3, BLEU4, and ROUGE-L score at 38,35, 20,96, 10,68, 5,78, and 43,4 for SQuAD, and 40.01, 20.68, 10.28, 6.44, 44.17 for TyDiQA, respectively. The system performed well when the expected answers are named entities and are syntactically close with the context explaining them. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description Automatic question generation is defined as the task of automating the creation of question given a various of textual data. Research in automatic question generator (AQG) has been conducted for more than 10 years, mainly focused on factoid question. In all these studies, the state-of-the-art is attained using sequence-to-sequence approach. However, AQG system for Indonesian has not ever been researched intensely. In this work we construct an Indonesian automatic question generator, adapting the architecture from some previous works. In summary, we used sequence-to-sequence approach using BiGRU, BiLSTM, and Transformer with additional linguistic features, copy mechanism, and coverage mechanism. Since there is no public large dan popular Indonesian dataset for question generation, we translated SQuAD v2.0 factoid question answering dataset, with additional Indonesian TyDiQA dev set for testing. The system achieved BLEU1, BLEU2, BLEU3, BLEU4, and ROUGE-L score at 38,35, 20,96, 10,68, 5,78, and 43,4 for SQuAD, and 40.01, 20.68, 10.28, 6.44, 44.17 for TyDiQA, respectively. The system performed well when the expected answers are named entities and are syntactically close with the context explaining them.
format Final Project
author Joshua Muis, Ferdiant
spellingShingle Joshua Muis, Ferdiant
IMPLEMENTASI DEEP LEARNING DENGAN SEQUENCE TO SEQUENCE UNTUK SISTEM PEMBANGKIT PERTANYAAN OTOMATIS
author_facet Joshua Muis, Ferdiant
author_sort Joshua Muis, Ferdiant
title IMPLEMENTASI DEEP LEARNING DENGAN SEQUENCE TO SEQUENCE UNTUK SISTEM PEMBANGKIT PERTANYAAN OTOMATIS
title_short IMPLEMENTASI DEEP LEARNING DENGAN SEQUENCE TO SEQUENCE UNTUK SISTEM PEMBANGKIT PERTANYAAN OTOMATIS
title_full IMPLEMENTASI DEEP LEARNING DENGAN SEQUENCE TO SEQUENCE UNTUK SISTEM PEMBANGKIT PERTANYAAN OTOMATIS
title_fullStr IMPLEMENTASI DEEP LEARNING DENGAN SEQUENCE TO SEQUENCE UNTUK SISTEM PEMBANGKIT PERTANYAAN OTOMATIS
title_full_unstemmed IMPLEMENTASI DEEP LEARNING DENGAN SEQUENCE TO SEQUENCE UNTUK SISTEM PEMBANGKIT PERTANYAAN OTOMATIS
title_sort implementasi deep learning dengan sequence to sequence untuk sistem pembangkit pertanyaan otomatis
url https://digilib.itb.ac.id/gdl/view/48597
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