Question answering from the web using knowledge annotation and knowledge mining techniques

TitleQuestion answering from the web using knowledge annotation and knowledge mining techniques
Publication TypeConference Papers
Year of Publication2003
AuthorsJimmy Lin, Katz B
Conference NameProceedings of the twelfth international conference on Information and knowledge management
Date Published2003///
PublisherACM
Conference LocationNew York, NY, USA
ISBN Number1-58113-723-0
Keywordsdata-redundancy, semistructured data
Abstract

We present a strategy for answering fact-based natural language questions that is guided by a characterization of real-world user queries. Our approach, implemented in a system called Aranea, extracts answers from the Web using two different techniques: knowledge annotation and knowledge mining. Knowledge annotation is an approach to answering large classes of frequently occurring questions by utilizing semi\-structured and structured Web sources. Knowledge mining is a statistical approach that leverages massive amounts of Web data to overcome many natural language processing challenges. We have integrated these two different paradigms into a question answering system capable of providing users with concise answers that directly address their information needs.

URLhttp://doi.acm.org/10.1145/956863.956886
DOI10.1145/956863.956886