COREFERENCE RESOLUTION FOR INDONESIAN TEXT WITH MENTION PAIR METHOD USING DEEP LEARNING

There are only a few number studies on coreference resolution system for Indonesian text. In fact, there have been no studies using deep learning. Recent studies have shown that deep learning is effective in coreference resolution system. A coreference resolution system study that uses convolutio...

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Main Author: Auliarachman, Turfa
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/39717
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:39717
spelling id-itb.:397172019-06-27T14:27:21ZCOREFERENCE RESOLUTION FOR INDONESIAN TEXT WITH MENTION PAIR METHOD USING DEEP LEARNING Auliarachman, Turfa Indonesia Final Project coreference resolution, singleton classifier, deep learning, convolutional neural network. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/39717 There are only a few number studies on coreference resolution system for Indonesian text. In fact, there have been no studies using deep learning. Recent studies have shown that deep learning is effective in coreference resolution system. A coreference resolution system study that uses convolutional neural networks (Wu and Ma, 2017) proposes the use of a singleton classifier component before the system makes predictions for each markable pair. However, in this study (Wu and Ma, 2017) no experiments were conducted on the effectiveness of using singleton classifier component in improving coreference resolution system performance. In this study, a series of experiments were conducted to see whether the use of deep learning in the coreference resolution system for Indonesian text could outperform the baseline performance which received an F1 average of 44.97% and 60.22%. In addition, this experiment was also conducted to see the effect of using the singleton classifier on the overall performance of the coreference resolution system. The experiment was conducted using data used in the research in one of the baselines consisting of 759 training data and 108 test data. The coreference resolution system in this study outperformed the baseline by obtaining the highest F1 average of 67.37%. From a total of 18 coreference resolution systems made, the use of the trained singleton classifier component with the best weighted-F1 score (93%) improved the performance of 15 systems, with the highest F1 average of 63.27%. The remaining three systems are systems that already have good performance. The final score for all systems increases when the golden singleton classifier was used, with the highest F1 average of 80.00%. 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 There are only a few number studies on coreference resolution system for Indonesian text. In fact, there have been no studies using deep learning. Recent studies have shown that deep learning is effective in coreference resolution system. A coreference resolution system study that uses convolutional neural networks (Wu and Ma, 2017) proposes the use of a singleton classifier component before the system makes predictions for each markable pair. However, in this study (Wu and Ma, 2017) no experiments were conducted on the effectiveness of using singleton classifier component in improving coreference resolution system performance. In this study, a series of experiments were conducted to see whether the use of deep learning in the coreference resolution system for Indonesian text could outperform the baseline performance which received an F1 average of 44.97% and 60.22%. In addition, this experiment was also conducted to see the effect of using the singleton classifier on the overall performance of the coreference resolution system. The experiment was conducted using data used in the research in one of the baselines consisting of 759 training data and 108 test data. The coreference resolution system in this study outperformed the baseline by obtaining the highest F1 average of 67.37%. From a total of 18 coreference resolution systems made, the use of the trained singleton classifier component with the best weighted-F1 score (93%) improved the performance of 15 systems, with the highest F1 average of 63.27%. The remaining three systems are systems that already have good performance. The final score for all systems increases when the golden singleton classifier was used, with the highest F1 average of 80.00%.
format Final Project
author Auliarachman, Turfa
spellingShingle Auliarachman, Turfa
COREFERENCE RESOLUTION FOR INDONESIAN TEXT WITH MENTION PAIR METHOD USING DEEP LEARNING
author_facet Auliarachman, Turfa
author_sort Auliarachman, Turfa
title COREFERENCE RESOLUTION FOR INDONESIAN TEXT WITH MENTION PAIR METHOD USING DEEP LEARNING
title_short COREFERENCE RESOLUTION FOR INDONESIAN TEXT WITH MENTION PAIR METHOD USING DEEP LEARNING
title_full COREFERENCE RESOLUTION FOR INDONESIAN TEXT WITH MENTION PAIR METHOD USING DEEP LEARNING
title_fullStr COREFERENCE RESOLUTION FOR INDONESIAN TEXT WITH MENTION PAIR METHOD USING DEEP LEARNING
title_full_unstemmed COREFERENCE RESOLUTION FOR INDONESIAN TEXT WITH MENTION PAIR METHOD USING DEEP LEARNING
title_sort coreference resolution for indonesian text with mention pair method using deep learning
url https://digilib.itb.ac.id/gdl/view/39717
_version_ 1821997872116137984