Data Requirements for Evaluation of Personalization of Information Retrieval - A Position Paper
September 07, 2018 Β· Declared Dead Β· π Conference and Labs of the Evaluation Forum
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Authors
Nicholas J. Belkin, Daniel Hienert, Philipp Mayr, Chirag Shah
arXiv ID
1809.02412
Category
cs.IR: Information Retrieval
Citations
9
Venue
Conference and Labs of the Evaluation Forum
Last Checked
4 months ago
Abstract
Two key, but usually ignored, issues for the evaluation of methods of personalization for information retrieval are: that such evaluation must be of a search session as a whole; and, that people, during the course of an information search session, engage in a variety of activities, intended to accomplish differ- ent goals or intentions. Taking serious account of these factors has major impli- cations for not only evaluation methods and metrics, but also for the nature of the data that is necessary both for understanding and modeling information search, and for evaluation of personalized support for information retrieval (IR). In this position paper, we: present a model of IR demonstrating why these fac- tors are important; identify some implications of accepting their validity; and, on the basis of a series of studies in interactive IR, identify some types of data concerning searcher and system behavior that we claim are, at least, necessary, if not necessarily sufficient, for meaningful evaluation of personalization of IR.
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