Publication | Closed Access
An Eye-Tracking Study of Query Reformulation
39
Citations
46
References
2015
Year
Unknown Venue
EngineeringMachine LearningInteractive SearchCorpus LinguisticsSocial SciencesText MiningNatural Language ProcessingInformation RetrievalData ScienceQuery RefinementComputational LinguisticsRelevance FeedbackQuery ExpansionQuery ReformulationCognitive ScienceComputer ScienceInformation ManagementQuery AnalysisUser AttentionRestrictive Eye-gaze TrackingInteractive Information Retrieval
Information about a user's domain knowledge and interest can be important signals for many information retrieval tasks such as query suggestion or result ranking. State-of-the-art user models rely on coarse-grained representations of the user's previous knowledge about a topic or domain. In this paper, we study query refinement using eye-tracking in order to gain precise and detailed insight into which terms the user was exposed to in a search session and which ones they showed a particular interest in. We measure fixations on the term level, allowing for a detailed model of user attention. To allow for a wide-spread exploitation of our findings, we generalize from the restrictive eye-gaze tracking to using more accessible signals: mouse cursor traces. Based on the public API of a popular search engine, we demonstrate how query suggestion candidates can be ranked according to traces of user attention and interest, resulting in significantly better performance than achieved by an attention-oblivious industry solution. Our experiments suggest that modelling term-level user attention can be achieved with great reliability and holds significant potential for supporting a range of traditional IR tasks.
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