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Affective Processes in Human-Automation Interactions

机译:自动化交互中的情感过程

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摘要

Objective: This study contributes to the literature on automation reliance by illuminating the influences of user moods and emotions on reliance on automated systems. Background: Past work has focused predominantly on cognitive and attitudinal variables, such as perceived machine reliability and trust. However, recent work on human decision making suggests that affective variables (i.e., moods and emotions) are also important. Drawing from the affect infusion model, significant effects of affect are hypothesized. Furthermore, a new affectively laden attitude termed liking is introduced. Method: Participants watched video clips selected to induce positive or negative moods, then interacted with a fictitious automated system on an X-ray screening task. At five time points, important variables were assessed including trust, liking, perceived machine accuracy, user self-perceived accuracy, and reliance.These variables, along with propensity to trust machines and state affect, were integrated in a structural equation model. Results: Happiness significantly increased trust and liking for the system throughout the task. Liking was the only variable that significantly predicted reliance early in the task. Trust predicted reliance later in the task, whereas perceived machine accuracy and user self-perceived accuracy had no significant direct effects on reliance at any time. Conclusion: Affective influences on automation reliance are demonstrated, suggesting that this decision-making process may be less rational and more emotional than previously acknowledged. Application: Liking for a new system may be key to appropriate reliance, particularly early in the task. Positive affect can be easily induced and may be a lever for increasing liking.
机译:目的:本研究通过阐明用户情绪和情绪对自动化系统的依赖的影响,为有关自动化依赖的文献做出贡献。背景:过去的工作主要集中于认知和态度变量,例如感知到的机器可靠性和信任度。但是,最近有关人类决策的工作表明,情感变量(即情绪和情感)也很重要。从情感注入模型中,可以得出情感的重大影响。此外,引入了一种新的充满情感的态度,称为喜好。方法:参与者观看被选择诱发正面或负面情绪的视频剪辑,然后与虚拟的自动系统进行X射线检查任务进行交互。在五个时间点,评估了重要变量,包括信任度,喜好度,感知机器的准确性,用户自我感知的准确性和依赖度,并将这些变量以及信任机器的倾向和状态影响整合到结构方程模型中。结果:幸福在整个任务过程中显着增加了对系统的信任和喜好。喜好是唯一可以在任务早期显着预测依赖程度的变量。在任务的后期相信信任的依赖性,而机器的感知准确性和用户的自我感知准确性在任何时候都不会对信任产生重大的直接影响。结论:证明了对自动化依赖的情感影响,这表明该决策过程可能比以前认可的过程更不理性,更情感化。应用程序:喜欢新系统可能是适当依赖的关键,尤其是在任务初期。积极的影响很容易诱发,可能是增加喜好的杠杆。

著录项

  • 来源
    《Human Factors》 |2011年第4期|p.356-370|共15页
  • 作者

    Stephanie M. Merritt;

  • 作者单位

    University of Missouri-St. Louis;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    trust; reliance; emotions;

    机译:信任;依赖;情绪;
  • 入库时间 2022-08-18 02:19:00

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