Human, Hybrid, or Machine? Exploring the Trustworthiness of Voice-Based Assistants

Q1 Social Sciences HumanMachine Communication Journal Pub Date : 2022-01-01 DOI:10.30658/hmc.4.5
Lisa Weidmüller
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引用次数: 6

Abstract

This study investigates how people assess the trustworthiness of perceptually hybrid communicative technologies such as voice-based assistants (VBAs). VBAs are often perceived as hybrids between human and machine, which challenges previously distinct definitions of human and machine trustworthiness. Thus, this study explores how the two trustworthiness models can be combined in a hybrid trustworthiness model, which model (human, hybrid, or machine) is most applicable to examine VBA trustworthiness, and whether this differs between respondents with different levels of prior experience with VBAs. Results from two surveys revealed that, overall, the human model exhibited the best model fit; however, the hybrid model also showed acceptable model fit as prior experience increased. Findings are discussed considering the ongoing discourse to establish adequate measures for HMC research.
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人类、混血儿还是机器?探索语音助手的可信度
本研究调查了人们如何评估感知混合通信技术的可信度,如基于语音的助手(VBAs)。vba通常被视为人与机器的混合体,这挑战了以前对人与机器可信度的不同定义。因此,本研究探讨了如何将这两种可信度模型结合在一个混合可信度模型中,哪种模型(人、混合或机器)最适用于检验VBA的可信度,以及这是否在具有不同水平VBA先验经验的受访者之间有所不同。两项调查的结果表明,总体而言,人体模型表现出最佳的模型拟合;然而,随着先验经验的增加,混合模型也显示出可接受的模型拟合。研究结果讨论考虑正在进行的话语,以建立适当的措施,为HMC研究。
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来源期刊
CiteScore
10.00
自引率
0.00%
发文量
10
审稿时长
8 weeks
期刊最新文献
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