TAMING ARTIFICIAL INTELLIGENCE: A THEORY OF CONTROL-ACCOUNTABILITY ALIGNMENT AMONG AI DEVELOPERS AND USERS.
Published In: Academy of Management Review, 2026, v. 51, n. 2. P. 278 1 of 3
Database: Business Source Ultimate 2 of 3
Authored By: GROTE, GUDELA; K. PARKER, SHARON; CROWSTON, KEVIN 3 of 3
Abstract
The growing agency of artificial intelligence (AI) systems, more specifically systems based on machine learning, has raised concerns about the security, safety, and ethical risks of AI use. We argue that core to mitigating AI risks is proper alignment of control and accountability for the stakeholders involved in AI development and use. Control enables, and accountability motivates, stakeholders to achieve desired and avoid undesired outcomes using AI. However, AI systems’ capabilities for autonomous adaptivity reduce control even for the experts who create them. Moreover, increasing interdependencies between AI development and use render it difficult to unambiguously locate control and accountability. In this paper, we address these challenges for mitigating AI risks by postulating decentralized forms of stakeholder governance and integrative negotiations among stakeholders during the AI life cycle as conducive to aligning control and accountability for AI development and use. Further, we specify that extensive information sharing aided by perspective taking and a shared norm of accountability facilitate integrative negotiation strategies. We conclude by discussing the implications of our theory for management scholarship on the impact of AI, and identify promising avenues for future research at micro, meso, and macro levels of analysis. [ABSTRACT FROM AUTHOR]
Additional Information
- Source:Academy of Management Review. 2026/04, Vol. 51, Issue 2, p278
- Document Type:Article
- Subject Area:Health and Medicine
- Publication Date:2026
- ISSN:0363-7425
- Accession Number:193379981
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