人工智能增强人群:人类选民如何采用人工智能

IF 10.1 1区 管理学 Q1 BUSINESS
Elena Freisinger, Matthias Unfried, Sabrina Schneider
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引用次数: 0

摘要

迄今为止,创新管理中关于理念评价的研究主要集中在人类专家和人群评价上。随着人工智能(AI)的最新进展,想法评估和选择过程需要跟上。因此,人工智能系统在创意评估中的潜在作用已成为创新管理研究和实践中的一个重要课题。虽然人工智能可以帮助克服人类的能力限制和偏见,但之前的研究也发现了人类对人工智能的厌恶行为。然而,研究也显示了非专业人士对人工智能的赞赏。本研究关注的是人类众投票者的人工智能采用行为。更准确地说,我们关注的是零工,尽管他们往往缺乏专业知识,但却经常参与众筹。为了调查大众选民的人工智能采用行为,我们在人类人工智能增强场景中进行了一项具有激励相容奖励的行为实验研究(n = 629)。参与者必须预测大众创意的成功或失败。在多轮比赛中,参与者可以选择将他们的决定委托给支持人工智能的系统,或者自己进行评估。我们的研究结果通过观察人类众投票者如何参与人工智能,为开放式创新的创新管理文献做出了贡献,更具体地说,是众投票。除了表明零工的非专业地位不会导致对人工智能的欣赏之外,我们还确定了在这种特定创新背景下促进人工智能采用的因素。因此,我们发现对先前在其他环境中确定的影响因素的混合支持,包括财务激励、社会激励和提供有关人工智能启用系统功能的信息。然而,我们的实证研究的第二个新颖贡献是,群众选民的厌恶行为随着时间的推移而消退。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

The AI-augmented crowd: How human crowdvoters adopt AI (or not)

The AI-augmented crowd: How human crowdvoters adopt AI (or not)

To date, innovation management research on idea evaluation has focused on human experts and crowd evaluators. With recent advances in artificial intelligence (AI), idea evaluation and selection processes need to keep up. As a result, the potential role of AI-enabled systems in idea evaluation has become an important topic in innovation management research and practice. While AI can help overcome human capacity constraints and biases, prior research has identified also aversive behaviors of humans toward AI. However, research has also shown lay people's appreciation of AI. This study focuses on human crowdvoters’ AI adoption behavior. More precisely, we focus on gig workers, who despite often lacking expert knowledge are frequently engaged in crowdvoting. To investigate crowdvoters' AI adoption behavior, we conducted a behavioral experimental study (n = 629) with incentive-compatible rewards in a human-AI augmentation scenario. The participants had to predict the success or failure of crowd-generated ideas. In multiple rounds, participants could opt to delegate their decisions to an AI-enabled system or to make their own evaluations. Our findings contribute to the innovation management literature on open innovation, more specifically crowdvoting, by observing how human crowdvoters engage with AI. In addition to showing that the lay status of gig workers does not lead to an appreciation of AI, we identify factors that foster AI adoption in this specific innovation context. We hereby find mixed support for influencing factors previously identified in other contexts, including financial incentives, social incentives, and the provision of information about AI-enabled system's functionality. A second novel contribution of our empirical study is, however, the fading of crowdvoters’ aversive behavior over time.

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来源期刊
Journal of Product Innovation Management
Journal of Product Innovation Management 管理科学-工程:工业
CiteScore
17.00
自引率
5.70%
发文量
42
审稿时长
6-12 weeks
期刊介绍: The Journal of Product Innovation Management is a leading academic journal focused on research, theory, and practice in innovation and new product development. It covers a broad scope of issues crucial to successful innovation in both external and internal organizational environments. The journal aims to inform, provoke thought, and contribute to the knowledge and practice of new product development and innovation management. It welcomes original articles from organizations of all sizes and domains, including start-ups, small to medium-sized enterprises, and large corporations, as well as from consumer, business-to-business, and policy domains. The journal accepts various quantitative and qualitative methodologies, and authors from diverse disciplines and functional perspectives are encouraged to submit their work.
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