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Home / Proceedings / Papers from the 2002 AAAI Spring Symposium /

Mining Answers from Texts and Knowledge Bases

Contents

  • Peer-Data Management Systems: Plumbing for the Semantic Web

    Alon Y. Halevy

    PDF
  • Searching for Narrative Structures

    Henrik Schärfe

    PDF
  • Answering Comparison Questions in SHAKEN: A Progress Report

    Shawn Nicholson and Kenneth D. Forbus

    PDF
  • Explaining Knowledge Bases for Query Answering on the Semantic Web

    Deborah L. McGuinness

    PDF
  • Panel: Large Knowledge Bases

    Adam Pease, Chris Welty, Pat Hayes, Anthony G. Cohn, and Ken Murray

    PDF
  • Automatically Identifying Candidate Treatments from Existing Medical Literature

    Catherine Blake and Wanda Pratt

    PDF
  • Mining Answers for Causation Questions

    Roxana Girju and Dan Moldovan

    PDF
  • Abductive Processes for Answer Justification

    Sanda M. Harabagiu and Steven J. Maiorano

    PDF
  • Qualitative Spatial Reasoning for Question-aAswering: Axiom Reuse and Algebraic Methods

    Tomás E. Uribe, Vinay Chaudhri, Patrick J. Hayes, and Mark E. Stickel

    PDF
  • Text Mining with Information Extraction

    Un Yong Nahm and Raymond J. Mooney

    PDF
  • AskMSR: Question Answering Using the Worldwide Web

    Michele Banko, Eric Brill, Susan Dumais, and Jimmy Lin

    PDF
  • Qanda and the Catalyst Architecture

    Scott Mardis and John Burger

    PDF
  • Finding Similar Content within Different Documents

    John O. Everett, Daniel G. Bobrow, Cleo Condoravdi, Richard Crouch, Valeria de Paiva, and Reinhard Stolle

    PDF
  • Gleaning Answers from the Web

    Nicholas Kushmerick

    PDF
  • Processing Definition Questions in an Open-Domain Question Answering System

    Marius Pasca

    PDF
  • Mining Answers from Texts and Knowledge Bases: Our Position

    Bruce Porter, Ken Barker, James Fan, Paul Navratil, Dan Tecuci, Peter Yeh and Peter Clark

    PDF
  • Point and Paste Question Answering

    Sanda M. Harabagiu, Finley Lacatusu, and Paul Morarescu

    PDF
  • The Use of Question Types to Match Questions in FAQFinder

    Steven L. Lytinen and Noriko Tomuro

    PDF
  • An Evolutionary Genre-Based and Domain-Independent Approach for High-Level Knowledge Discovery from Texts

    John Atkinson-Abutridy, Chris Mellish, and Stuart Aitken

    PDF

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