More visualization systems are simplifying the data analysis process by automatically suggesting relevant visualizations. However, little work has been done to understand if users trust these automated recommendations. In this paper, we present the results of a crowd-sourced study exploring preferences and perceived quality of recommendations that have been positioned as either human-curated or algorithmically generated. We observe that while participants initially prefer human recommenders, their actions suggest an indifference for recommendation source when evaluating visualization recommendations. The relevance of presented information (e.g., the presence of certain data fields) was the most critical factor, followed by a belief in the recommender's ability to create accurate visualizations. Our findings suggest a general indifference towards the provenance of recommendations, and point to idiosyncratic definitions of visualization quality and trustworthiness that may not be captured by simple measures. We suggest that recommendation systems should be tailored to the information-foraging strategies of specific users.
翻译:更多的可视化系统正在通过自动建议相关的可视化来简化数据分析过程,然而,在了解用户是否相信这些自动建议方面几乎没有做多少工作。在本文件中,我们介绍了一项众包研究的结果,探讨被定位为人熟知或按逻辑产生的建议的偏好和感知质量。我们注意到,虽然参与者最初偏爱人建议者,但其行动表明在评价可视化建议时对建议来源漠不关心。所提供信息的相关性(例如某些数据领域的存在)是最重要的因素,其次是相信推荐者有能力创建准确的可视化。我们的调查结果表明,对建议的出处普遍漠不关心,并指出对可视化质量和可信赖性定得过于典型,不能通过简单措施加以捕捉。我们建议系统应适合特定用户的信息传动战略。