A Subjective Logic Formalisation of the Principle of Polyrepresentation for Information Needs
April 05, 2017 Β· Declared Dead Β· π International Conference on Information Interaction in Context
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Authors
Christina Lioma, Birger Larsen, Hinrich SchΓΌtze, Peter Ingwersen
arXiv ID
1704.01610
Category
cs.IR: Information Retrieval
Citations
18
Venue
International Conference on Information Interaction in Context
Last Checked
4 months ago
Abstract
Interactive Information Retrieval refers to the branch of Information Retrieval that considers the retrieval process with respect to a wide range of contexts, which may affect the user's information seeking experience. The identification and representation of such contexts has been the object of the principle of Polyrepresentation, a theoretical framework for reasoning about different representations arising from interactive information retrieval in a given context. Although the principle of Polyrepresentation has received attention from many researchers, not much empirical work has been done based on it. One reason may be that it has not yet been formalised mathematically. In this paper we propose an up-to-date and exible mathematical formalisation of the principle of Polyrepresentation for information needs. Specifically, we apply Subjective Logic to model different representations of information needs as beliefs marked by degrees of uncertainty. We combine such beliefs using different logical operators, and we discuss these combinations with respect to different retrieval scenarios and situations. A formal model is introduced and discussed, with illustrative applications to the modelling of information needs.
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