%0 Journal Article %T Ratings of Driving Factors for the Adoption and Implementation of Artificial Intelligence in the Public Sector %A Samuel Narh Dorhetso %A Bismark Dzahene Quarshie %J Open Access Library Journal %V 10 %N 5 %P 1-20 %@ 2333-9721 %D 2023 %I Open Access Library %R 10.4236/oalib.1109982 %X The study constructed an estimation of the significance of driving factors that influence artificial intelligence (AI) adoption and implementation in the public sector, and accentuated a critical research area that is currently understudied. A theoretical framework, underpinned by the diffusion of innovation (DOI) theory, was developed from a mingling of the technology, organization, and environment (TOE) framework and the human, organisation, and technology (HOT) fit model. The best-worst method was used to scrutinize and rank the identified driving factors according to their weighted averages. The findings of the study pointed to privacy and security; reliability, serviceability and functionality; regulation; interpretability and ease of use; IT infrastructure and data; and ethical issues as the highest ranked driving factors for AI adoption and implementation in government institutions. The study has significant implications for policy makers and practitioners, as it would augment their perspectives on how to adopt and implement AI innovations. %K Privacy and Security %K Innovation %K Artificial Intelligence %K Government %K Technology %K Best-Worst Method %U http://www.oalib.com/paper/6792327