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Special issue on interactive question answering: Introduction

Published online by Cambridge University Press:  01 January 2009

N. WEBB
Affiliation:
Institute of Informatics, Logics and Security Studies, University at Albany, SUNY, USA e-mail: nwebb@albany.edu
B. WEBBER
Affiliation:
School of Informatics, University of Edinburgh, UK e-mail: bonnie@inf.ed.ac.uk

Abstract

In this introduction, we present our overview of interactive question answering (IQA). We contextualize IQA in the wider field of question answering, and establish connections to research in Information Retrieval and Dialogue Systems. We highlight the development of QA as a field, and identify challenges in the present research paradigm for which IQA is a potential solution. Finally, we present an overview of papers in this special issue, drawing connections between these and the challenges they address.

Type
Introduction
Copyright
Copyright © Cambridge University Press 2008

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