Research & Academic Contributions
Advancing the understanding of AI adoption, innovation diffusion, and technology acceptance in organizational and consumer environments
AI Adoption & Technology Diffusion Research
Top Paper Award
Recognized for contribution and impact on understanding AI adoption dynamics at AMCIS 2022.
Dr. George Dagliyan’s research examines the adoption of AI-enabled technologies through a balanced and structured framework that integrates both facilitating and inhibiting factors. Moving beyond traditional technology acceptance models, his work introduces a comprehensive empirical model that captures how perceived convenience, customization, and efficiency coexist with perceived uncertainty, privacy risk, and loss of control risk in shaping adoption decisions. Rather than treating these forces as opposite ends of a single continuum, his research demonstrates that they operate independently and simultaneously.
His doctoral dissertation introduced a novel framework that accounts for the role of subjective ambivalence arising from the coexistence of positive and negative evaluations of AI-enabled technologies. Using structural equation modeling and large-scale U.S. consumer data, he empirically tested the model across three AI categories—robotic AI (autonomous vehicles), virtual AI (smart home virtual assistants), and embedded AI (telemedicine). His findings reveal that facilitators and inhibitors jointly generate ambivalence, which in turn influences both intention to use and continued usage.
Additionally, his research advances the literature by positioning brand trust—specifically brand reliability and brand benevolence- as a critical antecedent influencing both facilitators and inhibitors. By integrating trust, ambivalence, and dual adoption forces into a unified model, his work provides both theoretical contributions to the diffusion of innovation and practical levers for organizations seeking to accelerate AI adoption.
His research has been presented at the Americas Conference on Information Systems (AMCIS), where it received top paper recognition.
Research Focus Areas
AI Technology Adoption
Understanding how organizations and consumers embrace AI-enabled systems
Innovation Diffusion
How emerging technologies spread through markets and institutions
Institutional Research
The role of institutions in facilitating or inhibiting technology adoption
Trust & Brand Influence
How trust and brand perception shape technology acceptance
Drivers of AI Adoption
Convenience
AI technologies offer enhanced convenience through automation, personalization, and 24/7 accessibility, making them attractive to both organizations and consumers.
Customization
AI systems can be tailored to specific organizational needs and individual preferences, enabling personalized experiences and targeted solutions.
Efficiency
AI technologies significantly improve operational efficiency through automated processes, predictive analytics, and streamlined decision-making.
Barriers to AI Adoption
Uncertainty
Uncertainty regarding AI performance, reliability, and long-term outcomes creates hesitation among potential adopters.
Privacy Risk
Concerns about data privacy and the collection of personal information by AI systems present significant adoption barriers.
Loss of Control
Fear of losing human oversight and control over critical decisions to automated systems inhibits adoption in sensitive contexts.
Trust and Institutional Governance in AI Adoption
Dr. Dagliyan's research examines how trust and institutional governance frameworks influence artificial intelligence adoption. His work demonstrates that institutional trust—confidence in the organizations, regulations, and oversight mechanisms governing AI technologies—plays a critical role in determining whether individuals and organizations embrace or resist AI-enabled systems. This research contributes to understanding how governance structures can be designed to foster responsible AI adoption.
References
Dagliyan, G. Artificial Intelligence Adoption and Organizational Strategy. Pepperdine University Dissertation, 2024.
Dagliyan, G. Artificial Intelligence Adoption Research. Americas Conference on Information Systems (AMCIS), 2022.
Publications & Papers
Academic Publications
Peer-reviewed research presented at leading academic conferences.
Doctoral Dissertation
Pepperdine University
Doctoral research examining the factors influencing AI technology adoption in organizational and consumer contexts.
Conference Paper
AMCIS 2022
"Understanding AI Adoption: The Role of Trust, Brand Influence, and Institutional Facilitators" — Top Paper Award recipient.
- Americas Conference on Information Systems (AMCIS)
- 2022
- Top Paper Award
Framework
The Dagliyan Theory
A conceptual framework developed to explain how individuals and organizations adopt emerging technologies, bridging academic research with practical enterprise implementation.
- Brand Influence
- Institutional Facilitators
- Adoption Inhibitors
Brand Influence
Institutional Facilitators
Adoption Inhibitors
Let's Explore Collaboration
Whether you're interested in research collaborations, enterprise systems solutions, speaking engagements, or cultural initiatives — I'd welcome the opportunity to connect.