Abstract

This research aim is to extract causal pathways, particularly disease causal pathways, through cause-effect relation (CErel) extraction from web-board documents. The causal pathways benefit people with a comprehensible representation approach to disease complication. A causative/effect-concept expression is based on a verb phrase of an elementary discourse unit (EDU) or a simple sentence. The research has three main problems; how to determine CErel on an EDU-concept pair containing both causative and effect concepts in one EDU, how to extract causal pathways from EDU-concept pairs having CErel and how to indicate and represent implicit effect/causative-concept EDUs as implicit mediators with comprehension on extracted causal pathways. Therefore, we apply EDU’s word co-occurrence concept (wrdCoc) as an EDU-concept and the self-Cartesian product of a wrdCoc set from the documents for extracting wrdCoc pairs having CErel into a wrdCoc-pair set from the documents after learning CErel on wrdCoc pairs by supervised-machine learning. The wrdCoc-pair set is used for extracting the causal pathways by wrdCoc-pair matching through the documents. We then propose transitive closure and a dynamic template to indicate and represent the implicit mediators with the explicit ones. In contrast to previous works, the proposed approach enables causal-pathway extraction with high accuracy from the documents.

Highlights

  • IntroductionThe objective of this research is to extract causal pathways, disease causal pathways, from downloaded disease documents from several Thai hospital web‐boards.The causal pathway extraction of the research is based on determining a sequence of Cause‐Effect pairs having a cause‐effect relation (called ‘CErel’) from the documents where aCause‐Effect pair (called ‘CEpair’) is an ordered pair; Cause is a causative event/state con‐cept; Effect is an effect event/state concept

  • The objective of this research is to extract causal pathways, disease causal pathways, from downloaded disease documents from several Thai hospital web‐boards.The causal pathway extraction of the research is based on determining a sequence of Cause‐Effect pairs having a cause‐effect relation from the documents where aCause‐Effect pair is an ordered pair; Cause is a causative event/state con‐cept; Effect is an effect event/state concept

  • Ply elementary discourse unit (EDU)’s word co‐occurrence concept as an EDU‐concept and the self‐Cartesian product of a wrdCoc set from the documents for extracting wrdCoc pairs having cause‐effect relation (CErel) into a wrdCoc‐pair set from the documents after learning CErel on wrdCoc pairs by supervised‐machine learning

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Summary

Introduction

The objective of this research is to extract causal pathways, disease causal pathways, from downloaded disease documents from several Thai hospital web‐boards.The causal pathway extraction of the research is based on determining a sequence of Cause‐Effect pairs having a cause‐effect relation (called ‘CErel’) from the documents where aCause‐Effect pair (called ‘CEpair’) is an ordered pair; Cause is a causative event/state con‐cept; Effect is an effect event/state concept. The objective of this research is to extract causal pathways, disease causal pathways, from downloaded disease documents from several Thai hospital web‐boards. Effect pairs having a cause‐effect relation (called ‘CErel’) from the documents where a. Cause‐Effect pair (called ‘CEpair’) is an ordered pair; Cause is a causative event/state con‐. Cept; Effect is an effect event/state concept. According to Khoo [1], CErel is a semantic relation which is a directional link between concepts as entities that participate in the rela‐. Where the concepts connected by a relation are often represented as follow: Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in. )’ symbols represent a concept and a relation type respectively. With regard to our research, CErel as a cause‐effect relation type is represented as follow: Licensee MDPI, Basel, Switzerland

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