Author
Listed:
- Dong-Hwan Park
- Qi Jiang
- Kyung Hoon Kim
Abstract
This study analyzes the impact of AI transformation (Applied AI, AI readiness, AI technology, AI data-driven culture) on AI adoption intention through expected customer experience (service quality, technology support, value created). It verifies whether entrepreneurial orientation is a moderating variable in this relationship. To this end, a survey was conducted targeting 141 B2B companies, and analysis was performed using a structural equation model (PLS-SEM). The study results showed that Applied AI and AI data-driven culture were key factors in improving the expected customer experience and increasing the intention to adopt AI. Additionally, technology support and value created were found to have a positive impact on AI adoption intention. Furthermore, entrepreneurial orientation was found to be an important moderating variable in the AI adoption process, and companies with high entrepreneurial orientation tended to focus on AI data utilization and value created, while companies with low entrepreneurial orientation tended to focus on improving service quality. Therefore, this suggests that AI adoption strategies require customized strategies that consider the level of AI utilization and entrepreneurial orientation of companies, rather than a simple technical approach. This study provides practical insights to practitioners and managers of companies considering AI adoption and makes theoretical contributions to the establishment of AI-based management strategies.
Suggested Citation
Dong-Hwan Park & Qi Jiang & Kyung Hoon Kim, 2025.
"Impact of the expected B2B internal customer experience on intention to adopt artificial intelligence (AI),"
Journal of Global Scholars of Marketing Science, Taylor & Francis Journals, vol. 35(2), pages 180-196, April.
Handle:
RePEc:taf:jgsmks:v:35:y:2025:i:2:p:180-196
DOI: 10.1080/21639159.2025.2465299
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