Cognitive and Behavioral Impacts of Two Decision-Support Modes for Judgmental Bootstrapping

IF 2.2 Q3 ENGINEERING, INDUSTRIAL Journal of Cognitive Engineering and Decision Making Pub Date : 2023-02-01 DOI:10.1177/15553434231153311
Alexandre Marois, Katherine Labonté, D. Lafond, Heather F. Neyedli, S. Tremblay
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Abstract

The Cognitive Shadow is a decision-support system that uses policy capturing to model human operators’ judgment policies and provide online predictions of their decisions. The system can provide support in reaction to a decision mismatch (shadowing mode) or proactively (recommendation mode). The goal of this study was to compare these two modes of operation in their ability to effectively model and support decision-making and to examine impacts on information processing, workload, and trust. Participants took part in an aircraft threat evaluation simulation without decision support or with the Cognitive Shadow (either shadowing or recommendation mode). Dwell time was collected over different areas of the user interface. While the recommendation mode had no advantage over the control group, the shadowing mode resulted in greater human and model accuracy. This mode led to longer dwell time over the parameters zone presenting key information for decision-making. These benefits were maintained even after the tool was removed. Workload was unaffected by the mode, and while trust was initially higher in the recommendation mode, it quickly became equivalent between both modes, overall supporting shadowing as the better configuration for cognitive assistance. Results are discussed in terms of decision processes, operators support, and automation bias.
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两种决策支持模式对判断引导的认知和行为影响
认知阴影是一个决策支持系统,它使用策略捕获来模拟操作员的判断策略,并提供他们决策的在线预测。该系统可以响应于决策不匹配(阴影模式)或主动(推荐模式)来提供支持。本研究的目的是比较这两种操作模式有效建模和支持决策的能力,并研究对信息处理、工作量和信任的影响。参与者在没有决策支持或使用认知阴影(阴影或推荐模式)的情况下参加了飞机威胁评估模拟。停留时间是在用户界面的不同区域收集的。虽然推荐模式与对照组相比没有优势,但阴影模式提高了人类和模型的准确性。这种模式导致在参数区停留时间更长,为决策提供关键信息。即使在移除该工具之后,这些优点也得以保持。工作负载不受该模式的影响,虽然推荐模式最初的信任度更高,但很快在两种模式之间变得等效,总体上支持阴影作为认知辅助的更好配置。从决策过程、操作员支持和自动化偏差的角度讨论了结果。
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来源期刊
CiteScore
4.60
自引率
10.00%
发文量
21
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