Print Email Facebook Twitter Knowing the Unknown Title Knowing the Unknown: Visualising Consumption Blind-Spots in Recommender System Author Tintarev, N. (TU Delft Web Information Systems) Rostami, Shahin (Bournemouth University) Smyth, Barry (University College Dublin) Date 2018 Abstract In this paper we consider how to help users to better understand their consumption profiles by examining two approaches to visualising user profiles - chord diagrams, and bar charts - aimed at revealing to users those regions of the recommendation space that are unknown to them, i.e. blind-spots. Both visualisations do this by connecting profile preferences with a filtered recommendation space. We compare and contrast the two visualisations in a live user study (n = 70). The results suggest that, although users can understand both visualisations, chord diagrams are particularly effective in helping users to identify blind-spots, while simpler bar charts are better for conveying what was already known in a profile. Evaluating the understandability of blind-spot visualizations is a first step toward using visual explanations to help address a criticism of recommender systems: that personalising information creates filter bubbles. Subject VisualisationRecommender SystemsFilter BubbleChord Diagram To reference this document use: http://resolver.tudelft.nl/uuid:61c0f406-4506-46b6-ae77-2d11dd36f1fc DOI https://doi.org/10.1145/3167132.3167419 Publisher Association for Computer Machinery, New York ISBN 978-1-4503-5191-1 Source SAC '18: Proceedings of the 33rd Annual ACM Symposium on Applied Computing Event SAC 2018, 2018-04-09 → 2018-04-13, Pau, France Bibliographical note Accepted author manuscript Part of collection Institutional Repository Document type conference paper Rights © 2018 N. Tintarev, Shahin Rostami, Barry Smyth Files PDF 32310990_Knowing_the_Unkn ... ems_2_.pdf 626.52 KB Close viewer /islandora/object/uuid:61c0f406-4506-46b6-ae77-2d11dd36f1fc/datastream/OBJ/view