Publication | Closed Access
Efficient multiple-click models in web search
281
Citations
19
References
2009
Year
Unknown Venue
Natural Language ProcessingEngineeringInformation RetrievalData ScienceMachine LearningKnowledge DiscoveryConsideration DependenciesDependent Click ModelQuery ModelInteractive SearchUser ClicksRelevance FeedbackComputer ScienceQuery AnalysisSearch Engine DesignText MiningInteractive Information Retrieval
Many tasks that leverage web search users' implicit feedback rely on a proper and unbiased interpretation of user clicks. Previous eye-tracking experiments and studies on explaining position-bias of user clicks provide a spectrum of hypotheses and models on how an average user examines and possibly clicks web documents returned by a search engine with respect to the submitted query. In this paper, we attempt to close the gap between previous work, which studied how to model a single click, and the reality that multiple clicks on web documents in a single result page are not uncommon. Specifically, we present two multiple-click models: the independent click model (ICM) which is reformulated from previous work, and the dependent click model (DCM) which takes into consideration dependencies between multiple clicks. Both models can be efficiently learned with linear time and space complexities. More importantly, they can be incrementally updated as new click logs flow in. These are well-demanded properties in reality.
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