Affiliation:
1. ETH Zurich, D-MTEC, KOF Swiss Economic Institute
2. University of Hohenheim
Abstract
AbstractThe potential of artificial intelligence (AI) to constitute a general-purpose technology with diverse algorithmic specifications makes it challenging to assess its overall impact on existing socio-economic regimes. Leveraging the multi-level perspective, we seek to depict the trajectory of micro-, meso-, and macro-level forces and their interactions to characterize AI transition pathways in industry. We treat business and information systems literature as a proxy capturing business practices that relate to factors influencing AI transitions on all three different levels. Based on 10,036 publications over 25 years, we map the topic landscape of AI-related research, longitudinal patterns of topics, and structural changes of topic networks. The results indicate a strong and myopic focus on technological capabilities and efficiency rationales. Topic network structures indicate that transition pathways may diverge between a symbiotic and stabilizing transformation process and a more radical pathway of regime substitution. Based on these findings, we argue that sociotechnical transition pathways may not only occur in sequence, but simultaneously and ambiguously. This highlights the need for a nuanced understanding of convergent and divergent transition pathways for emerging digital general-purpose technology that do not tend to settle on one dominant design. We propose to leverage paradox theory to reconcile these tensions.JEL: M000, O310, O320, 033
Publisher
Research Square Platform LLC
Reference188 articles.
1. The race between man and machine: Implications of technology for growth, factor shares, and employment;Acemoglu D;Am Econ Rev,2018
2. Ahmed N, Wahed M (2020) The de-democratization of AI: Deep learning and the compute divide in artificial intelligence research. arXiv preprint, 2010.15581
3. Accompanying technology development in the human brain project: From foresight to ethics management;Aicardi C;Futures,2018
4. Big data, big insights? Advancing service innovation and design with machine learning;Antons D;J Service Res,2018
5. Mapping the topic landscape of JPIM, 1984–2013: In Search of Hidden Structures and Development Trajectories;Antons D;J Prod Innov Manage,2016
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献