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  1. Burke, R.D.: Question answering from frequently asked question files : experiences with the FAQ Finder System (1997) 0.00
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    Abstract
    Describes FAQ Finder, a natural language question-answering system that uses files of frequently asked questions as its knowledge base. Unlike information retrieval approaches that rely on a purely lexical metric of similarity between query and document, FAQ Finder uses a semantic knowledge base (Wordnet) to improve its ability to match question and answer. Includes results from an evaluation of the system's performance and shows that a combination of semantic and statistical techniques works better than any single approach
    Source
    AI magazine. 18(1997) no.2, S.57-66
    Type
    a