Factors Influencing Artificial Intelligence Adoption in Publicly Listed Manufacturing Companies: A Technology, Organisation, and Environment Approach

Authors

  • Erlane K Ghani Faculty of Accountancy, Universiti Technologi MARA Selangor, Malaysia.
  • Nurshahiirah Ariffin Flash Malaysia Express Sdn Bhd, Malaysia.
  • Citra Sukmadilaga Faculty of Economics and Business, Padjadjaran University, Indonesia.

DOI:

https://doi.org/10.33094/ijaefa.v14i2.667

Keywords:

Artificial intelligence, Information technology capability, Top management support, Government support, Manufacturing companies.

Abstract

This study examines the factors influencing artificial intelligence (AI) adoption in publicly listed manufacturing companies in Malaysia. Specifically, three factors are investigated based on the technology, organisation, and environment (TOE) framework: information technology (IT) capability, top management support, and government support. Using a questionnaire survey of 127 respondents from publicly listed manufacturing companies in Malaysia, this study shows that top management support and government support significantly affect AI adoption in publicly listed manufacturing companies. However, the results show that IT capability does not significantly influence the AI adoption of publicly listed manufacturing companies. Thus, the findings provide evidence of the influence of IT capability, top management support, and government support on AI adoption in publicly listed manufacturing companies. In addition, the findings of this study contribute to the existing literature on AI adoption in publicly listed manufacturing companies in Malaysia.

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Published

23-09-2022

How to Cite

Ghani, E. K. ., Ariffin, N. ., & Sukmadilaga, C. . (2022). Factors Influencing Artificial Intelligence Adoption in Publicly Listed Manufacturing Companies: A Technology, Organisation, and Environment Approach . International Journal of Applied Economics, Finance and Accounting, 14(2), 108–117. https://doi.org/10.33094/ijaefa.v14i2.667

Issue

Section

Articles