Organizational Leadership and Diversity Article 2024

Navigating AI Convergence in Human–Artificial Intelligence Teams: A Signaling Theory Approach

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Teams that combine human intelligence with artificial intelligence (AI) have become indispensable for solving complex tasks in various decision-making contexts in modern organizations. However, the factors that contribute to AI convergence, where human team members align their decisions with those of their AI counterparts, still remain unclear. This study integrates signaling theory with self-determination theory to investigate how specific signals—such as signal fit, optional AI advice, and signal set congruence—affect employees' AI convergence in human–AI teams. Based on four experimental studies conducted in facial recognition and hiring contexts with approximately 1100 participants, the findings highlight the significant positive impact of congruent signals from both human and AI team members on AI convergence. Moreover, providing an option for employees to solicit AI advice also enhances AI convergence; when AI signals are chosen by employees rather than forced upon them, participants are more likely to accept AI advice. This research advances knowledge on human–AI teaming by (1) expanding signaling theory into the human–AI team context; (2) developing a deeper understanding of AI convergence and its drivers in human–AI teams; (3) providing actionable insights for designing teams and tasks to optimize decision-making in high-stakes, uncertain environments; and (4) introducing facial recognition as an innovative context for human–AI teaming.

Author(s): Smith, Andria and Van Wagoner, Phoenix and Keplinger, Ksenia and Celebi, Can
Journal: Journal of Organizational Behavior
Volume: 10.1002/job.2856
Pages: 10.1002/job.2856
Year: 2024
Month: December
Day: 30
Project(s):
Bibtex Type: Article (article)
DOI: 10.1002/job.2856
State: Published
URL: https://doi.org/10.1002/job.2856
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BibTex

@article{navigatingAiConvergence:2024:Smith,
  title = {Navigating AI Convergence in Human–Artificial Intelligence Teams: A Signaling Theory Approach},
  journal = {Journal of Organizational Behavior},
  abstract = {Teams that combine human intelligence with artificial intelligence (AI) have become indispensable for solving complex tasks in various decision-making contexts in modern organizations. However, the factors that contribute to AI convergence, where human team members align their decisions with those of their AI counterparts, still remain unclear. This study integrates signaling theory with self-determination theory to investigate how specific signals—such as signal fit, optional AI advice, and signal set congruence—affect employees' AI convergence in human–AI teams. Based on four experimental studies conducted in facial recognition and hiring contexts with approximately 1100 participants, the findings highlight the significant positive impact of congruent signals from both human and AI team members on AI convergence. Moreover, providing an option for employees to solicit AI advice also enhances AI convergence; when AI signals are chosen by employees rather than forced upon them, participants are more likely to accept AI advice. This research advances knowledge on human–AI teaming by (1) expanding signaling theory into the human–AI team context; (2) developing a deeper understanding of AI convergence and its drivers in human–AI teams; (3) providing actionable insights for designing teams and tasks to optimize decision-making in high-stakes, uncertain environments; and (4) introducing facial recognition as an innovative context for human–AI teaming.},
  volume = {10.1002/job.2856},
  pages = {10.1002/job.2856},
  month = dec,
  year = {2024},
  slug = {navigatingaiconvergence-2024-smith},
  author = {Smith, Andria and Van Wagoner, Phoenix and Keplinger, Ksenia and Celebi, Can},
  url = { https://doi.org/10.1002/job.2856},
  month_numeric = {12}
}