TY - JOUR
T1 - Determinants of human-machine interaction technology usage
T2 - An automated machine learning approach
AU - Alon, Ilan
AU - Bretas, Vanessa P.G.
AU - Galetti, Jefferson R.B.
AU - Götz, Marta
AU - Jankowska, Barbara
N1 - Publisher Copyright:
© 2025
PY - 2025/5
Y1 - 2025/5
N2 - The advent of Industry 4.0 technologies has reshaped modern manufacturing. Human-machine interaction (HMI) technologies are essential to this transformation, as they facilitate communication between people and machines, bridge the digital and physical worlds, improve decision-making, and increase overall productivity. However, the diffusion of these cutting-edge technologies varies greatly, possibly resulting in persistent geographical disparities over time. Moreover, our understanding of the factors determining the use of HMI technologies is still limited. Our goal is to investigate the factors that influence manufacturing firms’ use of these technologies, providing a comprehensive perspective. Combining insights provided by economic geography and innovation studies, we take a holistic approach that includes a wide range of technological, organizational, and environmental (TOE) factors. Using Automated Machine Learning (AML), we identify non-linear relationships between key predictors and the usage of HMI technology. Our analysis highlights the importance of geographical and organizational proximities in absorbing local external knowledge and coordinating long-distance knowledge pipelines alongside traditional factors influencing the rate of technology use.
AB - The advent of Industry 4.0 technologies has reshaped modern manufacturing. Human-machine interaction (HMI) technologies are essential to this transformation, as they facilitate communication between people and machines, bridge the digital and physical worlds, improve decision-making, and increase overall productivity. However, the diffusion of these cutting-edge technologies varies greatly, possibly resulting in persistent geographical disparities over time. Moreover, our understanding of the factors determining the use of HMI technologies is still limited. Our goal is to investigate the factors that influence manufacturing firms’ use of these technologies, providing a comprehensive perspective. Combining insights provided by economic geography and innovation studies, we take a holistic approach that includes a wide range of technological, organizational, and environmental (TOE) factors. Using Automated Machine Learning (AML), we identify non-linear relationships between key predictors and the usage of HMI technology. Our analysis highlights the importance of geographical and organizational proximities in absorbing local external knowledge and coordinating long-distance knowledge pipelines alongside traditional factors influencing the rate of technology use.
KW - Automated machine learning
KW - Human-machine interactions
KW - Industry 4.0
KW - TOE framework
KW - Technology usage
UR - http://www.scopus.com/inward/record.url?scp=105001173546&partnerID=8YFLogxK
U2 - 10.1016/j.technovation.2025.103230
DO - 10.1016/j.technovation.2025.103230
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AN - SCOPUS:105001173546
SN - 0166-4972
VL - 143
JO - Technovation
JF - Technovation
M1 - 103230
ER -