算法决策中影响信任的因素:一个间接的基于场景的实验。

IF 6.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2025-02-04 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1465605
Fernando Marmolejo-Ramos, Rebecca Marrone, Malgorzata Korolkiewicz, Florence Gabriel, George Siemens, Srecko Joksimovic, Yuki Yamada, Yuki Mori, Talal Rahwan, Maria Sahakyan, Belona Sonna, Assylbek Meirmanov, Aidos Bolatov, Bidisha Som, Izuchukwu Ndukaihe, Nwadiogo C Arinze, Josef Kundrát, Lenka Skanderová, Van-Giang Ngo, Giang Nguyen, Michelle Lacia, Chun-Chia Kung, Meiselina Irmayanti, Abdul Muktadir, Fransiska Timoria Samosir, Marco Tullio Liuzza, Roberto Giorgini, Omid Khatin-Zadeh, Hassan Banaruee, Asil Ali Özdoğru, Kris Ariyabuddhiphongs, Wachirawit Rakchai, Natalia Trujillo, Stella Maris Valencia, Armina Janyan, Kiril Kostov, Pedro R Montoro, Jose Hinojosa, Kelsey Medeiros, Thomas E Hunt, Julian Posada, Raquel Meister Ko Freitag, Julian Tejada
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引用次数: 0

摘要

算法涉及到从琐碎到重大的决策,但人们经常对它们表示不信任。研究表明,解释算法如何工作的教育努力可能有助于减轻这种不信任。在一项对来自20个国家的1921名参与者的研究中,我们研究了在低风险和高风险决策中算法信任的差异。我们的研究结果表明,在高风险情况下,统计素养与对算法的信任呈负相关,而在高算法熟悉度的低风险情况下,统计素养与信任呈正相关。然而,可解释性似乎并不影响对算法的信任。我们的结论是,具有统计素养使个人能够批判性地评估算法、数据和人工智能做出的决定,并在做出重大的人生决定之前将它们与其他因素一起考虑。这确保了个人不会完全依赖可能无法完全捕捉人类行为和决策的复杂性和细微差别的算法。因此,政策制定者应该考虑提高统计/人工智能素养,以解决与算法信任相关的一些复杂性。这项工作为进一步的研究铺平了道路,包括通过直接观察用户与算法或生理措施的交互来对数据进行三角测量,以更准确地评估信任。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Factors influencing trust in algorithmic decision-making: an indirect scenario-based experiment.

Algorithms are involved in decisions ranging from trivial to significant, but people often express distrust toward them. Research suggests that educational efforts to explain how algorithms work may help mitigate this distrust. In a study of 1,921 participants from 20 countries, we examined differences in algorithmic trust for low-stakes and high-stakes decisions. Our results suggest that statistical literacy is negatively associated with trust in algorithms for high-stakes situations, while it is positively associated with trust in low-stakes scenarios with high algorithm familiarity. However, explainability did not appear to influence trust in algorithms. We conclude that having statistical literacy enables individuals to critically evaluate the decisions made by algorithms, data and AI, and consider them alongside other factors before making significant life decisions. This ensures that individuals are not solely relying on algorithms that may not fully capture the complexity and nuances of human behavior and decision-making. Therefore, policymakers should consider promoting statistical/AI literacy to address some of the complexities associated with trust in algorithms. This work paves the way for further research, including the triangulation of data with direct observations of user interactions with algorithms or physiological measures to assess trust more accurately.

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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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