Automatic Cause-Effect Relation Extraction from Dental Textbooks Using BERT
The ability to automatically identify causal relations from surgical textbooks could prove helpful in the automatic construction of ontologies for dentistry and building learning-assistant tools for dental students where questions about essential concepts can be auto-generated from the extracted ont...
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th-mahidol.767252022-08-04T15:57:24Z Automatic Cause-Effect Relation Extraction from Dental Textbooks Using BERT Terapat Chansai Ruksit Rojpaisarnkit Teerakarn Boriboonsub Suppawong Tuarob Myat Su Yin Peter Haddawy Saeed Ul Hassan Mihai Pomarlan Manchester Metropolitan University Mahidol University Universität Bremen Computer Science Mathematics The ability to automatically identify causal relations from surgical textbooks could prove helpful in the automatic construction of ontologies for dentistry and building learning-assistant tools for dental students where questions about essential concepts can be auto-generated from the extracted ontologies. In this paper, we propose a neural network architecture to extract cause-effect relations from dental surgery textbooks. The architecture uses a transformer to capture complex causal sentences, specific semantics, and large-scale ontologies and solve sequence-to-sequence tasks while preserving long-range dependencies. Furthermore, we have also used BERT to learn word contextual relations. During pre-training, BERT is trained on enormous corpora of unannotated text on the web. These pre-trained models can be fine-tuned on custom tasks with specific datasets. We first detect sentences that contain cause-effect relations. Then, cause and effect clauses from each cause-effect sentence are identified and extracted. Both automatic and expert-rated evaluations are used to validate the efficacy of our proposed models. Finally, we discuss a prototype system that helps dental students learn important concepts from dental surgery textbooks, along with our future research directions. 2022-08-04T08:28:36Z 2022-08-04T08:28:36Z 2021-01-01 Conference Paper Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics). Vol.13133 LNCS, (2021), 127-138 10.1007/978-3-030-91669-5_11 16113349 03029743 2-s2.0-85121912766 https://repository.li.mahidol.ac.th/handle/123456789/76725 Mahidol University SCOPUS https://www.scopus.com/inward/record.uri?partnerID=HzOxMe3b&scp=85121912766&origin=inward |
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Computer Science Mathematics Terapat Chansai Ruksit Rojpaisarnkit Teerakarn Boriboonsub Suppawong Tuarob Myat Su Yin Peter Haddawy Saeed Ul Hassan Mihai Pomarlan Automatic Cause-Effect Relation Extraction from Dental Textbooks Using BERT |
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The ability to automatically identify causal relations from surgical textbooks could prove helpful in the automatic construction of ontologies for dentistry and building learning-assistant tools for dental students where questions about essential concepts can be auto-generated from the extracted ontologies. In this paper, we propose a neural network architecture to extract cause-effect relations from dental surgery textbooks. The architecture uses a transformer to capture complex causal sentences, specific semantics, and large-scale ontologies and solve sequence-to-sequence tasks while preserving long-range dependencies. Furthermore, we have also used BERT to learn word contextual relations. During pre-training, BERT is trained on enormous corpora of unannotated text on the web. These pre-trained models can be fine-tuned on custom tasks with specific datasets. We first detect sentences that contain cause-effect relations. Then, cause and effect clauses from each cause-effect sentence are identified and extracted. Both automatic and expert-rated evaluations are used to validate the efficacy of our proposed models. Finally, we discuss a prototype system that helps dental students learn important concepts from dental surgery textbooks, along with our future research directions. |
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Manchester Metropolitan University |
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Manchester Metropolitan University Terapat Chansai Ruksit Rojpaisarnkit Teerakarn Boriboonsub Suppawong Tuarob Myat Su Yin Peter Haddawy Saeed Ul Hassan Mihai Pomarlan |
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Conference or Workshop Item |
author |
Terapat Chansai Ruksit Rojpaisarnkit Teerakarn Boriboonsub Suppawong Tuarob Myat Su Yin Peter Haddawy Saeed Ul Hassan Mihai Pomarlan |
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Terapat Chansai |
title |
Automatic Cause-Effect Relation Extraction from Dental Textbooks Using BERT |
title_short |
Automatic Cause-Effect Relation Extraction from Dental Textbooks Using BERT |
title_full |
Automatic Cause-Effect Relation Extraction from Dental Textbooks Using BERT |
title_fullStr |
Automatic Cause-Effect Relation Extraction from Dental Textbooks Using BERT |
title_full_unstemmed |
Automatic Cause-Effect Relation Extraction from Dental Textbooks Using BERT |
title_sort |
automatic cause-effect relation extraction from dental textbooks using bert |
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2022 |
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https://repository.li.mahidol.ac.th/handle/123456789/76725 |
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