2023
DOI: 10.1002/pra2.799
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Characterizing and Early Predicting User Performance for Adaptive Search Path Recommendation

Ben Wang,
Jiqun Liu

Abstract: User search performance is multidimensional in nature and may be better characterized by metrics that depict users' interactions with both relevant and irrelevant results. Despite previous research on one‐dimensional measures, it is still unclear how to characterize different dimensions of user performance and leverage the knowledge in developing proactive recommendations. To address this gap, we propose and empirically test a framework of search performance evaluation and build early performance prediction mo… Show more

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Cited by 2 publications
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“…It also provides a new perspective for the design of task-oriented information retrieval systems. For instance, in a multi-query search session, the system can adaptively adjust algorithms and page layouts based on different task states and user types predicted from various online signals[21,95], thus mitigating the impact of the decoy effect.…”
mentioning
confidence: 99%
“…It also provides a new perspective for the design of task-oriented information retrieval systems. For instance, in a multi-query search session, the system can adaptively adjust algorithms and page layouts based on different task states and user types predicted from various online signals[21,95], thus mitigating the impact of the decoy effect.…”
mentioning
confidence: 99%