Publication | Closed Access
Predicting searcher frustration
155
Citations
15
References
2010
Year
Unknown Venue
Artificial IntelligenceEngineeringExploratory SearchInteractive SearchInformation RetrievalData ScienceAffective ComputingSearcher FrustrationSearch EngineSearch Engine UsersIntelligent SearchingSearch TechnologyBehavioral SciencesUser FrustrationPredictive AnalyticsUser ExperienceComputer ScienceQuery AnalysisHuman-computer InteractionInteractive Information Retrieval
When search engine users have trouble finding information, they may become frustrated, possibly resulting in a bad experience (even if they are ultimately successful). In a user study in which participants were given difficult information seeking tasks, half of all queries submitted resulted in some degree of self-reported frustration. A third of all successful tasks involved at least one instance of frustration. By modeling searcher frustration, search engines can predict the current state of user frustration and decide when to intervene with alternative search strategies to prevent the user from becoming more frustrated, giving up, or switching to another search engine. We present several models to predict frustration using features extracted from query logs and physical sensors. We are able to predict frustration with a mean average precision of 65% from the physical sensors, and 87% from the query log features.
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