金融决策中的信任动态:结构性中断后对人工智能和人类专家建议的行为反应。

IF 2.5 3区 心理学 Q2 PSYCHOLOGY, MULTIDISCIPLINARY
Hyo Young Kim, Young Soo Park
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引用次数: 0

摘要

本研究通过比较个人在市场发生重大结构性变化时如何看待人工智能专家和人类专家的可信度,探讨了金融预测中的信任动态。我们特别研究了两类结构性变化对信任的影响:加性异常值(代表单一但显著的异常现象)和水平转移(表明数据模式的持续变化)。这项研究以归因理论、算法厌恶和技术接受模型(TAM)等理论框架为基础,调查了在不确定情况下对人工智能和人类建议的心理反应。这项实验通过亚马逊机械手(MTurk)招募了 157 名参与者,要求他们在不同的结构断裂情况下预测股票价格。参与者被随机分配到人工智能或人类专家处理组,实验在网上进行。通过这项受控实验,我们发现,虽然人工智能和人类专家的初始信任度相当,但与加性离群条件相比,在水平移动条件下,结构断裂后建议的可信度会受到更严重的损害。此外,与人工智能相比,人类专家的信任度下降更为明显。这些发现凸显了不确定性条件下影响决策的心理因素,并为市场结构变化期间人工智能和人类专家系统的行为反应提供了启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trust Dynamics in Financial Decision Making: Behavioral Responses to AI and Human Expert Advice Following Structural Breaks.

This study explores the trust dynamics in financial forecasting by comparing how individuals perceive the credibility of AI and human experts during significant structural market changes. We specifically examine the impact of two types of structural breaks on trust: Additive Outliers, which represent a single yet significant anomaly, and Level Shifts, which indicate a sustained change in data patterns. Grounded in theoretical frameworks such as attribution theory, algorithm aversion, and the Technology Acceptance Model (TAM), this research investigates psychological responses to AI and human advice under uncertainty. This experiment involved 157 participants, recruited via Amazon Mechanical Turk (MTurk), who were asked to forecast stock prices under different structural break scenarios. Participants were randomly assigned to either the AI or human expert treatment group, and the experiment was conducted online. Through this controlled experiment, we find that, while initial trust levels in AI and human experts are comparable, the credibility of advice is more severely compromised following a structural break in the Level Shift condition, compared to the Additive Outlier condition. Moreover, the decline in trust is more pronounced for human experts than for AI. These findings highlight the psychological factors influencing decision making under uncertainty and offer insights into the behavioral responses to AI and human expert systems during structural market changes.

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来源期刊
Behavioral Sciences
Behavioral Sciences Social Sciences-Development
CiteScore
2.60
自引率
7.70%
发文量
429
审稿时长
11 weeks
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