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Data-driven type checking in open domain question answering
Authors:Stefan Schlobach   David Ahn   Maarten de Rijke  Valentin Jijkoun  
Affiliation:aAI Department, Division of Mathematics and Computer Science, Vrije Universiteit Amsterdam, The Netherlands;bInformatics Institute, University of Amsterdam, The Netherlands
Abstract:Many open domain question answering systems answer questions by first harvesting a large number of candidate answers, and then picking the most promising one from the list. One criterion for this answer selection is type checking: deciding whether the candidate answer is of the semantic type expected by the question. We define a general strategy for building redundancy-based type checkers, built around the notions of comparison set and scoring method, where the former provide a set of potential answer types and the latter are meant to capture the relation between a candidate answer and an answer type. Our focus is on scoring methods. We discuss nine such methods, provide a detailed experimental comparison and analysis of these methods, and find that the best performing scoring method performs at the same level as knowledge-intensive methods, although our experiments do not reveal a clear-cut answer on the question whether any of the scoring methods we consider should be preferred over the others.
Keywords:Type checking   Question answering   Data-driven methods
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