Descriptive Question Answering with Answer Type Independent Features
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概要
- 論文の詳細を見る
In this paper, we present a supervised learning method to seek out answers to the most frequently asked descriptive questions: reason, method, and definition questions. Most of the previous systems for question answering focus on factoids, lists or definitional questions. However, descriptive questions such as reason questions and method questions are also frequently asked by users. We propose a system for these types of questions. The system conducts an answer search as follows. First, we analyze the user's question and extract search keywords and the expected answer type. Second, information retrieval results are obtained from an existing search engine such as Yahoo or Google. Finally, we rank the results to find snippets containing answers to the questions based on a ranking SVM algorithm. We also propose features to identify snippets containing answers for descriptive questions. The features are adaptable and thus are not dependent on answer type. Experimental results show that the proposed method and features are clearly effective for the task.
- 2012-07-01
著者
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Park So-young
Division Of Digital Media Technology Sangmyung University
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YOON Yeo-Chan
Speech/Language Information Research Center, ETRI
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Yoon Yeo-chan
Speech/language Information Research Center Etri
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Kim Hyun-ki
Speech/language Information Research Center Etri
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Jang Myung-gil
Speech/language Information Research Center Etri
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KIM Hyun-Ki
Speech/Language Information Research Center, ETRI
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LEE Chang-Ki
Department of Computer Science, Kangwon National University
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RYU Pum
Speech/Language Information Research Center, ETRI
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JANG Myung-Gil
Speech/Language Information Research Center, ETRI
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