仔细研究经验、任务领域和自信心如何影响对算法的依赖。

IF 3.1 2区 工程技术 Q2 ENGINEERING, INDUSTRIAL Applied Ergonomics Pub Date : 2024-08-02 DOI:10.1016/j.apergo.2024.104363
Sarah A. Jessup , Gene M. Alarcon , Sasha M. Willis , Michael A. Lee
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引用次数: 0

摘要

先前的研究表明,使用预测算法的经验会减少依赖行为(即依赖算法的行为)。然而,模型经验对依赖意向(即依赖算法的意向或意愿)的影响尚未得到探讨。此外,自信心和领域知识等其他因素也被认为会影响算法依赖。本研究旨在探讨使用统计模型的经验、任务领域(二手车销售、大学平均学分绩点 (GPA)、GitHub 拉取请求)和自信心如何影响依赖意愿、依赖行为以及对自身估计和模型估计的感知准确性。参与者(N = 347)通过网络招募并完成了一项预测任务。结果表明,自信心和任务领域对依赖意向、依赖行为和感知准确性有显著的统计学影响。然而,与以往的研究结果不同的是,模型经验对依赖行为没有显著影响,也没有导致依赖意向或对自己或模型的感知准确性发生显著变化。我们的数据表明,与模型经验相比,任务领域和自信心等因素对算法使用的影响更大。个体差异和情境因素应被视为影响预测者决定依赖模型预测还是使用自己的估计的重要方面,这可能会导致次优表现。
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A closer look at how experience, task domain, and self-confidence influence reliance towards algorithms

Prior research has demonstrated experience with a forecasting algorithm decreases reliance behaviors (i.e., the action of relying on the algorithm). However, the influence of model experience on reliance intentions (i.e., an intention or willingness to rely on the algorithm) has not been explored. Additionally, other factors such as self-confidence and domain knowledge are posited to influence algorithm reliance. The objective of this research was to examine how experience with a statistical model, task domain (used car sales, college grade point average (GPA), GitHub pull requests), and self-confidence influence reliance intentions, reliance behaviors, and perceived accuracy of one's own estimates and the model's estimates. Participants (N = 347) were recruited online and completed a forecasting task. Results indicate that there was a statistically significant effect of self-confidence and task domain on reliance intentions, reliance behaviors, and perceived accuracy. However, unlike previous findings, model experience did not significantly influence reliance behavior, nor did it lead to significant changes in reliance intentions or perceived accuracy of oneself or the model. Our data suggest that factors such as task domain and self-confidence influence algorithm use more so than model experience. Individual differences and situational factors should be considered important aspects that influence forecasters' decisions to rely on predictions from a model or to instead use their own estimates, which can lead to sub-optimal performance.

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来源期刊
Applied Ergonomics
Applied Ergonomics 工程技术-工程:工业
CiteScore
7.50
自引率
9.40%
发文量
248
审稿时长
53 days
期刊介绍: Applied Ergonomics is aimed at ergonomists and all those interested in applying ergonomics/human factors in the design, planning and management of technical and social systems at work or leisure. Readership is truly international with subscribers in over 50 countries. Professionals for whom Applied Ergonomics is of interest include: ergonomists, designers, industrial engineers, health and safety specialists, systems engineers, design engineers, organizational psychologists, occupational health specialists and human-computer interaction specialists.
期刊最新文献
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