Effects of AI versus human source attribution on trust and forgiveness in the identical corporate apology statement for a data breach scandal

IF 4.1 3区 管理学 Q2 BUSINESS Public Relations Review Pub Date : 2024-11-18 DOI:10.1016/j.pubrev.2024.102520
Joon Soo Lim , Erika Schneider , Maria Grover , Jun Zhang , David Peters
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Abstract

This study investigates the effects of AI versus human source attribution on trust and forgiveness in the identical AI-generated corporate apology statement for a simulated data breach scandal. While AI-generated messages hold promise in crisis communication, their impact on public perception remains understudied. The research was inspired by incidents where ChatGPT was used to generate official apology statements, raising questions about the authenticity of AI-generated apologies. Using a fictitious retail company’s apology statement, crafted with the assistance of ChatGPT, participants were randomly assigned to conditions indicating the statement was AI-aided, human-written, or unspecified (control). The results indicate that participants attributed higher levels of forgiveness intention and trust to the statement credited to humans compared to AI-generated statements. Additionally, the human-attributed statement was perceived as more empathetic and sincere than the AI-attributed statement. Mediation analysis results revealed that empathy mediated forgiveness intention and trust in human-authored statements, while perceived sincerity mediated these factors in AI-aided statements. These findings suggest that source attribution significantly influences public perception of organizational apologies during crises. This study contributes to understanding the evolving role of AI in crisis management and underscores the importance of ethical and transparent communication practices.
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人工智能与人工源归因对企业就数据泄露丑闻发表的相同道歉声明中的信任和宽恕的影响
本研究调查了在模拟数据泄露丑闻中,由人工智能生成的相同企业道歉声明中,人工智能与人为来源归因对信任和宽恕的影响。虽然人工智能生成的信息在危机公关中大有可为,但它们对公众认知的影响仍未得到充分研究。这项研究的灵感来自于 ChatGPT 被用于生成官方道歉声明的事件,引发了人们对人工智能生成的道歉声明真实性的质疑。通过使用 ChatGPT 制作的虚构零售公司道歉声明,参与者被随机分配到声明由人工智能辅助、由人工撰写或未指定(对照组)的条件下。结果表明,与人工智能生成的声明相比,参与者对人工智能生成的声明赋予了更高的原谅意愿和信任度。此外,与人工智能生成的声明相比,由人类撰写的声明被认为更具同理心和诚意。中介分析结果显示,在人类撰写的声明中,移情对宽恕意愿和信任起中介作用,而在人工智能辅助的声明中,感知到的真诚对这些因素起中介作用。这些研究结果表明,源归因在很大程度上影响了危机期间公众对组织道歉的看法。这项研究有助于理解人工智能在危机管理中不断发展的作用,并强调了道德和透明沟通实践的重要性。
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来源期刊
CiteScore
8.00
自引率
19.00%
发文量
90
期刊介绍: The Public Relations Review is the oldest journal devoted to articles that examine public relations in depth, and commentaries by specialists in the field. Most of the articles are based on empirical research undertaken by professionals and academics in the field. In addition to research articles and commentaries, The Review publishes invited research in brief, and book reviews in the fields of public relations, mass communications, organizational communications, public opinion formations, social science research and evaluation, marketing, management and public policy formation.
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