S. Ransbotham, P. Gerbert, M. Reeves, D. Kiron, and M. Spira, Artificial Intelligence in Business Gets Real, MIT sloan management review, 2018.

T. H. Davenport and R. Ronanki, Artificial intelligence for the real world, Harvard business review, vol.96, pp.108-116, 2018.

B. Li, B. Hou, W. Yu, X. Lu, and C. Yang, Applications of artificial intelligence in intelligent manufacturing: a review, Frontiers of Information Technology & Electronic Engineering, vol.18, pp.86-96, 2017.

M. Huang and R. T. Rust, Artificial intelligence in service, Journal of Service Research, vol.21, pp.155-172, 2018.

P. Mikalef, M. Boura, G. Lekakos, and J. Krogstie, Big data analytics and firm performance: Findings from a mixed-method approach, Journal of Business Research, vol.98, pp.261-276, 2019.

T. Q. Sun and R. Medaglia, Mapping the challenges of Artificial Intelligence in the public sector: Evidence from public healthcare, Government Information Quarterly, vol.36, pp.368-383, 2019.

B. W. Wirtz and W. M. Müller, An integrated artificial intelligence framework for public management, Public Management Review, pp.1-25, 2018.

D. Park, A Study on Conversational Public Administration Service of the Chatbot Based on Artificial Intelligence, Journal of Korea Multimedia Society, vol.20, pp.1347-1356, 2017.

J. L. Herrera, H. V. Figueroa, and E. J. Ramírez, Deep fraud. A fraud intention recognition framework in public transport context using a deep-learning approach, 2018 International Conference on Electronics, Communications and Computers (CONIELECOMP), pp.118-125

M. Hengstler, E. Enkel, and S. Duelli, Applied artificial intelligence and trust-The case of autonomous vehicles and medical assistance devices, Technological Forecasting and Social Change, vol.105, pp.105-120, 2016.

C. Cath, S. Wachter, B. Mittelstadt, M. Taddeo, and L. Floridi, Artificial intelligence and the 'good society': the US, EU, and UK approach, Science and engineering ethics, vol.24, pp.505-528, 2018.

A. Goolsbee, Public policy in an AI economy, National Bureau of Economic Research, 2018.

S. M. Liu and Q. Yuan, The evolution of information and communication technology in public administration, Public Administration and Development, vol.35, pp.140-151, 2015.

P. Mikalef, R. Van-de-wetering, and J. Krogstie, Big Data enabled organizational transformation: The effect of inertia in adoption and diffusion, Business Information Systems (BIS). (Year)

A. Mcafee and E. Brynjolfsson, Machine, platform, crowd: Harnessing our digital future, 2017.

P. Mikalef, M. Boura, G. Lekakos, and J. Krogstie, Big data analytics capabilities and innovation: the mediating role of dynamic capabilities and moderating effect of the environment, British Journal of Management, vol.30, pp.272-298, 2019.

Y. Duan, J. S. Edwards, and Y. K. Dwivedi, Artificial intelligence for decision making in the era of Big Data-evolution, challenges and research agenda, International Journal of Information Management, vol.48, pp.63-71, 2019.

S. J. Mikhaylov, M. Esteve, and A. Campion, Artificial intelligence for the public sector: opportunities and challenges of cross-sector collaboration, Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences, vol.376, p.20170357, 2018.

P. Mikalef and J. Krogstie, Big Data Governance and Dynamic Capabilities: The Moderating effect of Environmental Uncertainty, Pacific Asia Conference on Information Systems (PACIS)

Y. Ais and J. , , 2018.

P. Mikalef, V. A. Framnes, F. Danielsen, J. Krogstie, and D. H. Olsen, Big Data Analytics Capability: Antecedents and Business Value, Pacific Asia Conference on Information Systems. (Year)

P. Mikalef and A. Pateli, Information technology-enabled dynamic capabilities and their indirect effect on competitive performance: Findings from PLS-SEM and fsQCA, Journal of Business Research, vol.70, pp.1-16, 2017.