Publication | Open Access
Topic-independent modeling of user knowledge in informational search sessions
18
Citations
32
References
2021
Year
EngineeringMachine LearningInteractive SearchLanguage ProcessingText MiningInformation RetrievalData ScienceData MiningResource-centric FeaturesRelevance FeedbackAbstract Web SearchUser KnowledgeInformation SearchCognitive SciencePredictive AnalyticsKnowledge DiscoveryComputer ScienceQuery AnalysisBusinessKnowledge ManagementFrequent Online ActivitiesInteractive Information Retrieval
Abstract Web search is among the most frequent online activities. In this context, widespread informational queries entail user intentions to obtain knowledge with respect to a particular topic or domain. To serve learning needs better, recent research in the field of interactive information retrieval has advocated the importance of moving beyond relevance ranking of search results and considering a user’s knowledge state within learning oriented search sessions. Prior work has investigated the use of supervised models to predict a user’s knowledge gain and knowledge state from user interactions during a search session. However, the characteristics of the resources that a user interacts with have neither been sufficiently explored, nor exploited in this task. In this work, we introduce a novel set of resource-centric features and demonstrate their capacity to significantly improve supervised models for the task of predicting knowledge gain and knowledge state of users in Web search sessions. We make important contributions, given that reliable training data for such tasks is sparse and costly to obtain. We introduce various feature selection strategies geared towards selecting a limited subset of effective and generalizable features.
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