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How to Recommend?: User Trust Factors in Movie Recommender Systems

Published: 07 March 2017 Publication History

Abstract

How much trust a user places in a recommender is crucial to the uptake of the recommendations. Although prior work established various factors that build and sustain user trust, their comparative impact has not been studied in depth. This paper presents the results of a crowdsourced study examining the impact of various recommendation interfaces and content selection strategies on user trust. It evaluates the subjective ranking of nine key factors of trust grouped into three dimensions and examines the differences observed with respect to users' personality traits.

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  1. How to Recommend?: User Trust Factors in Movie Recommender Systems

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    cover image ACM Conferences
    IUI '17: Proceedings of the 22nd International Conference on Intelligent User Interfaces
    March 2017
    654 pages
    ISBN:9781450343480
    DOI:10.1145/3025171
    © 2017 Association for Computing Machinery. ACM acknowledges that this contribution was authored or co-authored by an employee, contractor or affiliate of a national government. As such, the Government retains a nonexclusive, royalty-free right to publish or reproduce this article, or to allow others to do so, for Government purposes only.

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    Published: 07 March 2017

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    Author Tags

    1. presentation of recommendations
    2. recommender systems
    3. user study
    4. user-system trust

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    IUI '17 Paper Acceptance Rate 63 of 272 submissions, 23%;
    Overall Acceptance Rate 746 of 2,811 submissions, 27%

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    • (2024)Explaining Session-based Recommendations using Grammatical EvolutionProceedings of the Genetic and Evolutionary Computation Conference Companion10.1145/3638530.3664156(1590-1597)Online publication date: 14-Jul-2024
    • (2024)My job is a game, and I am the owner: How gamification facilitates self-leadership for gig workersJournal of Business Research10.1016/j.jbusres.2024.114877183(114877)Online publication date: Oct-2024
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    • (2023)XAIR: A Framework of Explainable AI in Augmented RealityProceedings of the 2023 CHI Conference on Human Factors in Computing Systems10.1145/3544548.3581500(1-30)Online publication date: 19-Apr-2023
    • (2023)Silent Vulnerable Dependency Alert Prediction with Vulnerability Key Aspect Explanation2023 IEEE/ACM 45th International Conference on Software Engineering (ICSE)10.1109/ICSE48619.2023.00089(970-982)Online publication date: May-2023
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