QUEST: A model of question answering
نویسندگان
چکیده
منابع مشابه
Quest: a Model of Question Answering
We have developed a computer model of human question answering, called QUEST. QUEST simulates tile answers that people produce when they answer different types of questions, such as why, how, when, where, what-if, and yes/no verification questions. When QUEST answers a particular question, the model identifies relevant information sources and taps information within each source. Each informatio...
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The investigation presented in this paper is a novel method in question answering (QA) that enables a QA system to gain performance through reuse of information in the answer to one question to answer another related question. Our analysis shows that a pair of question in a general open domain QA can have embedding relation through their mentions of noun phrase expressions. We present methods f...
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The development of computer systems and extensive use of information technology in the everyday life of people have just made it more and more important for them to make quick access to information that has received great importance. Increasing the volume of information makes it difficult to manage or control. Thus, some instruments need to be provided to use this information. The QA system is ...
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ژورنال
عنوان ژورنال: Computers & Mathematics with Applications
سال: 1992
ISSN: 0898-1221
DOI: 10.1016/0898-1221(92)90132-2