基于视觉分析的决策锚定效应

Isaac Cho, Ryan Wesslen, Alireza Karduni, Sashank Santhanam, Samira Shaikh, Wenwen Dou
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引用次数: 54

摘要

锚定效应是指在做决定时过于关注某一条信息的倾向。在本文中,我们提出了一个新颖的、系统的研究和结果分析,利用视觉分析系统来研究锚定效应对人类决策的影响。可视化分析界面通常包含多个视图,这些视图表示信息的各个方面,如空间、时间和分类。这些视图旨在以可访问的形式呈现复杂的异构数据,以帮助决策。然而,人类的决策常常被启发式或认知偏差的使用所阻碍,比如锚定效应。锚定效应可以由信息呈现的顺序或呈现的信息量触发。通过精心设计的实验室实验,我们提出了当用户被不同信息的表示所启动时,视觉分析界面在分析中的锚定效应的证据。我们还描述了对用户交互日志的详细分析,这些日志揭示了锚定偏差对视觉表示偏好和分析路径的影响。我们讨论了未来研究可能发现和减轻锚定偏见的影响。检索词:K.6.1[计算机和信息系统管理];项目和人员管理-生命周期,K.7。m[计算机行业]:杂项伦理学
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Anchoring Effect in Decision-Making with Visual Analytics
Anchoring effect is the tendency to focus too heavily on one piece of information when making decisions. In this paper, we present a novel, systematic study and resulting analyses that investigate the effects of anchoring effect on human decision-making using visual analytic systems. Visual analytics interfaces typically contain multiple views that present various aspects of information such as spatial, temporal, and categorical. These views are designed to present complex, heterogeneous data in accessible forms that aid decision-making. However, human decision-making is often hindered by the use of heuristics, or cognitive biases, such as anchoring effect. Anchoring effect can be triggered by the order in which information is presented or the magnitude of information presented. Through carefully designed laboratory experiments, we present evidence of anchoring effect in analysis with visual analytics interfaces when users are primed by representation of different pieces of information. We also describe detailed analyses of users’ interaction logs which reveal the impact of anchoring bias on the visual representation preferred and paths of analysis. We discuss implications for future research to possibly detect and alleviate anchoring bias.Index Terms: K.6.1 [Management of Computing and Information Systems]: Project and People Management-Life Cycle, K.7.m [The Computing Profession]: Miscellaneous-Ethics
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