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Mining Causality for Explanation Knowledge from Text
作者姓名:Chaveevan  Pechsiri and Asanee  Kawtrakul
作者单位:Faculty of Information Technology Dhurakij Pundit University,Bangkok,Thailand,Department of Computer Engineering,Kasetsart University,Bangkok,Thailand
基金项目:This work has been supported by the National Electronics and Computer Technology(lenter(NECTEC)under Grant No.NT-B-22-14-12-46-06 and partially supported by the FAO grant.
摘    要:Mining causality is essential to provide a diagnosis within multiple sentences or EDUs (Elementary Discourse Unit) This research aims at extracting the causality existing The research emphasizes the use of causality verbs because they make explicit in a certain way the consequent events of a cause, e.g., "Aphids suck the sap from rice leaves. Then leaves will shrink. Later, they will become yellow and dry.". A verb can also be the causal-verb link between cause and effect within EDU(s), e.g., "Aphids suck the sap from rice leaves causing leaves to be shrunk" ("causing" is equivalent, to a causal-verb link in Thai). The research confronts two main problems: identifying the interesting causality events from documents and identifying their boundaries. Then, we propose mining on verbs by using two different machine learning techniques, Naive Bayes classifier and Support Vector Machine. The resulted mining rules will be used for the identification and the causality extraction of the multiple EDUs from text. Our multiple EDUs extraction shows 0.88 precision with 0.75 recall from Naive Bayes classifier and 0.89 precision with 0.76 recall from Support Vector Machine.

关 键 词:说明知识  因果关系  边界值  计算机
修稿时间:2006-12-09

Mining Causality for Explanation Knowledge from Text
Chaveevan,Pechsiri and Asanee,Kawtrakul.Mining Causality for Explanation Knowledge from Text[J].Journal of Computer Science and Technology,2007,22(6):877-889.
Authors:Chaveevan Pechsiri  Asanee Kawtrakul
Affiliation:(1) Faculty of Information Technology, Dhurakij Pundit University, Bangkok, Thailand;(2) Department of Computer Engineering, Kasetsart University, Bangkok, Thailand
Abstract:Mining causality is essential to provide a diagnosis.This research aims at extracting the causality existing within multiple sentences or EDUs(Elementary Discourse Unit).The research emphasizes the use of causalily verbs because they make explicit in a certain way the consequent events of a cause,e.g.,"Aphids suck the sap from rice leaves. Then leaves will shrink.Later.they will become yellow and dry."A verb can also be the causal-verb link between cause and effect within EDU(s),e.g.,"Aphids suck the sap from rice leaves causing leaves to be shrunk"("causing") is equivalent to a causal-verb link in Thai).The research confronts two main problems:identifying the interesting causality events from documents and identifying their boundaries.Then,we propose mining on verbs by using two different machine learning techniques,Naive Bayes classifier and Support Vector Machine.The resulted mining rules will be used for the identification and the causality extraction of the multiple EDUs from text.Our multiple EDUs extraction shows 0.88 precision with 0.75 recall from Naive Bayes classifier and 0.89 precision with 0.76 recall from Support Vector Machine.
Keywords:elementary discourse unit  explanation knowledge  causality  causality boundary
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