
Context-aware explanations in recommender systems
Zhong, Jinfeng; Negre, Elsa (2021), Context-aware explanations in recommender systems, 3rd International Conference on Deep Learning, Artificial Intelligence and Robotics, (ICDLAIR) 2021, 2021-12, Salerno, ITALY
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Type
Communication / ConférenceDate
2021Conference title
3rd International Conference on Deep Learning, Artificial Intelligence and Robotics, (ICDLAIR) 2021Conference date
2021-12Conference city
SalernoConference country
ITALYMetadata
Show full item recordAbstract (EN)
Recommender systems aim to help users find relevant items more quickly by providing personalized recommendations. Explanations in recommender systems help users understand why such recommendations have been generated, which in turn makes the system more transparent and promotes users' trust and satisfaction. In recent years, explaining recommendations has drawn increasing attention from both academia and from industry. In this paper, we present a user study to investigate context-aware explanations in recommender systems. In particular, we build a web-based questionnaire that is able to interact with users: generating and explaining recommendations. With this questionnaire, we investigate the effects of context-aware explanations in terms of efficiency, effectiveness, persuasiveness, satisfaction, trust and transparency through a user study.Subjects / Keywords
Context-aware explanations; Explainable recommendations; Recommender systemsRelated items
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