Designing Human?AI Collaboration Models for Commercial Decision Systems: A Business Management Perspective
  • Author(s): Ufuk Elevli
  • Paper ID: 1713981
  • Page: 2064-2072
  • Published Date: 31-07-2025
  • Published In: Iconic Research And Engineering Journals
  • Publisher: IRE Journals
  • e-ISSN: 2456-8880
  • Volume/Issue: Volume 9 Issue 1 July-2025
Abstract

The rapid integration of artificial intelligence into commercial decision systems has intensified the debate between automation and human judgment. While advances in AI have enabled faster and more data-driven decisions, fully automated approaches often struggle with issues of trust, accountability, and contextual understanding. At the same time, purely human-centered decision models face significant limitations in scalability, consistency, and responsiveness in data-intensive commercial environments. These tensions reveal that the central challenge is not technological capability, but the effective design of collaboration between human decision-makers and intelligent systems. This paper examines human–AI collaboration in commercial decision systems from a business management perspective. Rather than framing AI as a substitute for managerial judgment, the study conceptualizes human–AI collaboration as a socio-technical design problem in which authority, responsibility, and control must be deliberately allocated between humans and intelligent systems. The paper analyzes the limitations of fully automated and fully human-centered decision models and argues for hybrid collaboration architectures tailored to different types of commercial decisions. Building on insights from decision theory, management studies, and AI-enabled analytics, the study develops a set of design principles for human–AI collaboration models in commercial decision systems. These principles address task allocation, decision authority boundaries, feedback mechanisms, and governance structures that enable collaboration without eroding managerial accountability. The paper further examines the managerial implications of human–AI collaboration, highlighting how leadership roles, decision authority, and organizational learning are reshaped in collaborative decision environments. The study contributes to business management literature by providing a structured framework for designing human–AI collaboration models that enhance decision quality while preserving strategic control. For practitioners, it offers guidance on how to institutionalize collaboration between humans and AI as a scalable managerial capability rather than an ad hoc technological solution. The findings suggest that sustainable value from AI in commercial decision systems arises from deliberate collaboration design, not from automation alone.

Keywords

Human–AI Collaboration, Commercial Decision Systems, Managerial Decision Design, AI-Augmented Decision-Making, Business Management Perspective

Citations

IRE Journals:
Ufuk Elevli "Designing Human?AI Collaboration Models for Commercial Decision Systems: A Business Management Perspective" Iconic Research And Engineering Journals Volume 9 Issue 1 2025 Page 2064-2072 https://doi.org/10.64388/IREV9I1-1713981

IEEE:
Ufuk Elevli "Designing Human?AI Collaboration Models for Commercial Decision Systems: A Business Management Perspective" Iconic Research And Engineering Journals, 9(1) https://doi.org/10.64388/IREV9I1-1713981