Automatic extraction of causal chains from text
Background. Automatic extraction of causal chains is valuable for discovering previously unknown and hidden connections between events. However, there is only a handful of works devoted to automatic extraction of causal chains from text. Objective. To develop a method for automatic extraction of cau...
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sg-ntu-dr.10356-1544142021-12-22T20:11:33Z Automatic extraction of causal chains from text Huminski, Aliaksandr Ng, Yan Bin Library and information science Background. Automatic extraction of causal chains is valuable for discovering previously unknown and hidden connections between events. However, there is only a handful of works devoted to automatic extraction of causal chains from text. Objective. To develop a method for automatic extraction of causal chains from text. Method. A new approach based on linguistic templates is suggested for causal chain extraction. It is domain-independent, not restricted to extraction from single sentences and unfolded on big data. For implementation, a sequence of four modules was deployed. These are verb restriction, part-of-speech tagging, extracting causal relations, and unification and matching events. Results. 14,821 causal chains (with length=2) have been extracted from 100,000 English Wikipedia articles. Contributions. The extracted causal chains can contribute to developing commonsense knowledge bases, reasoning resources, problem-solving, and generally in discovering previously unknown relationships between entities/events. Published version 2021-12-22T06:11:53Z 2021-12-22T06:11:53Z 2020 Journal Article Huminski, A. & Ng, Y. B. (2020). Automatic extraction of causal chains from text. Library and Information Science Research E-Journal, 29(2), 99-108. https://dx.doi.org/10.32655/LIBRES.2019.2.3 1058-6768 https://hdl.handle.net/10356/154414 10.32655/LIBRES.2019.2.3 2 29 99 108 en Library and Information Science Research E-Journal © 2020 Aliaksandr Huminski, Ng Yan Bin. All rights reserved. application/pdf |
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Library and information science Huminski, Aliaksandr Ng, Yan Bin Automatic extraction of causal chains from text |
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Background. Automatic extraction of causal chains is valuable for discovering previously unknown and hidden connections between events. However, there is only a handful of works devoted to automatic extraction of causal chains from text. Objective. To develop a method for automatic extraction of causal chains from text. Method. A new approach based on linguistic templates is suggested for causal chain extraction. It is domain-independent, not restricted to extraction from single sentences and unfolded on big data. For implementation, a sequence of four modules was deployed. These are verb restriction, part-of-speech tagging, extracting causal relations, and unification and matching events. Results. 14,821 causal chains (with length=2) have been extracted from 100,000 English Wikipedia articles. Contributions. The extracted causal chains can contribute to developing commonsense knowledge bases, reasoning resources, problem-solving, and generally in discovering previously unknown relationships between entities/events. |
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Article |
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Huminski, Aliaksandr Ng, Yan Bin |
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Huminski, Aliaksandr Ng, Yan Bin |
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Huminski, Aliaksandr |
title |
Automatic extraction of causal chains from text |
title_short |
Automatic extraction of causal chains from text |
title_full |
Automatic extraction of causal chains from text |
title_fullStr |
Automatic extraction of causal chains from text |
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Automatic extraction of causal chains from text |
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automatic extraction of causal chains from text |
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2021 |
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https://hdl.handle.net/10356/154414 |
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