Artificial Intelligence and Business Strategy towards Digital Transformation: A Research Agenda
Abstract
:1. Introduction
2. Materials and Methods
2.1. Previous Literature Reviews
2.2. Article Selection Process
2.3. Classification Framework for Analysis
3. Results
3.1. Artificial Intelligence and Machine Learning in Organizations
3.2. Aligning AI Tools and IT with Business Strategy
3.3. AI, Knowledge Management and Decision-Making Process
3.4. AI, Service Innovation and Value
4. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Concepts | ||||||
---|---|---|---|---|---|---|
No. | Authors | Year | AI and Machine Learning in Organizations | Aligning AI Tools and IT with Business Strategy | AI, Knowledge Management and Decision-Making Process | AI, Service Innovation and Value |
Akhtar et al. [1] | 2019 | x | ||||
Balog [2] | 2020 | x | ||||
Duan et al. [3] | 2019 | x | ||||
Lichtenthaler [4] | 2020b | x | ||||
Božič and Dimovski [5] | 2019 | x | ||||
Chen and Siau [6] | 2020 | x | ||||
Sujata et al. [7] | 2019 | x | ||||
Taylor et al. [8] | 2020 | x | ||||
Vasin et al. [9] | 2018 | x | ||||
Vidgen et al. [10] | 2017 | x | ||||
Wamba-Taguimdje et al. [11] | 2020 | x | ||||
Zaki [12] | 2019 | x | x | x | ||
Yin et al. [13] | 2020 | x | ||||
Pappas et al. [14] | 2018 | x | ||||
Angelis and da Silva [15] | 2019 | x | x | x | ||
Mikalef et al. [16] | 2019 | x | ||||
Ranjan and Foropon [17] | 2021 | x | ||||
Reis et al. [18] | 2020 | x | x | |||
Liu [19] | 2013 | x | x | |||
Arnott [20] | 2010 | x | x | |||
Goralski and Tan [21] | 2020 | x | ||||
Nalchigar and Yu [22] | 2017 | x | x | x | ||
Dąbrowski [23] | 2017 | x | x | |||
Ghasemaghaei [24] | 2019 | x | ||||
Lei and Wang [25] | 2020 | x | ||||
Ashrafi et al. [26] | 2019 | x | ||||
Ciampi et al. [27] | 2020 | x | ||||
Gallego-Gomez and De-Pablos-Heredero [28] | 2020 | x | ||||
Yiu et al. [29] | 2020 | x | ||||
Dwivedi et al. [30] | 2009 | x | ||||
Kathuria et al. [31] | 1999 | x | x | |||
Pinson et al. [32] | 1997 | x | ||||
Tallon and Pinsonneault [33] | 2011 | x | ||||
Orsini [34] | 1986 | x | ||||
Orwig et al. [35] | 1997 | x | x | |||
Lichtenthaler [36] | 2020a | x | ||||
Olsson and Bosch [47] | 2020 | x | x | |||
Wang et al. [48] | 2020 | x | ||||
Xing et al. [49] | 2016 | x | ||||
Harlow [50] | 2018 | x | x | |||
Zimmermann et al. [51] | 2020 | x | x | x | ||
Iyer and Schkade [52] | 1987 | x | x | |||
Coakes et al. [53] | 1997 | x | ||||
Warner and Wäger [54] | 2019 | x | ||||
George et al. [55] | 2020 | x | x | |||
Lenart-Gansiniec [56] | 2019 | x | ||||
Chae [57] | 2014 | x | ||||
Feldmann et al. [58] | 2013 | x | x | |||
Holmlund et al. [59] | 2020 | x | x | |||
Kohler et al. [60] | 2014 | x | x | |||
Li et al. [61] | 2008 | x | x | |||
Sabherwal and Chan [62] | 2001 | x | ||||
Aversa et al. [63] | 2018 | x | x | |||
Charoensuk et al. [64] | 2014 | x | ||||
Isal et al. [65] | 2016 | x | ||||
Liang et al. [66] | 2017 | x | ||||
Becker and Schmid [67] | 2020 | x | ||||
Hsieh [68] | 2009 | x | x | |||
Schrettenbrunner [69] | 2020 | x | ||||
Demirkan and Delen [70] | 2013 | x | x | |||
Huang and Rust [71] | 2020 | x | ||||
Caputo et al. [72] | 2019 | x | ||||
De Carlo et al. [74] | 2020 | x | x | |||
de Medeiros et al. [75] | 2020 | x | x | |||
Tabesh et al. [76] | 2019 | x | x | |||
Achillas et al. [82] | 2017 | x | x | |||
Amping et al. [83] | 2019 | x | ||||
Anderson [84] | 2019 | x | x | |||
Arbatani et al. [85] | 2019 | x | ||||
Arnott et al. [86] | 2017 | x | ||||
Bergqvist and Lounamaa [87] | 1987 | x | x | |||
Borch and Hartvigsen [88] | 1991 | x | ||||
Chatwin et al. [89] | 1996 | x | ||||
Durrani and Forbes [90] | 2018 | x | ||||
Eckert and Osterrieder [91] | 2020 | x | x | |||
Khan et al. [92] | 2020 | x | ||||
Ryou et al. [93] | 2020 | x | ||||
Sawhney [94] | 1991 | x | ||||
Sharma et al. [95] | 2014 | x | x | |||
Sviokla [96] | 1986 | x | x | |||
Thow-Yick and Huu-Phuong [97] | 1990 | x |
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Authors | Year | Methodology | Results |
---|---|---|---|
Borges et al. [44] | 2020 | Searching for peer-reviewed and conference papers in 2 databases using keywords regarding Artificial Intelligence, Machine Learning, Business strategy and Information Technology strategy | Results were analyzed based on 4 perspectives: automation, decision-making, customer engagement and new products and services offering. |
Caner and Bhatti [45] | 2020 | Searching for peer-reviewed papers in 7 databases using the keyword “Artificial Intelligence” in business management field and social sciencesPapers published between 2015 and 2019 | A conceptual framework was developed in order to define AI business strategy and discussed about abilities and limitations of AI, economics and AI, business functions and AI, workforce, industries and AI, and regulations and ethics of AI. |
Trunk et al. [46] | 2020 | Searching for peer-reviewed papers in 4 databases using keywords regarding Artificial Intelligence, Machine Learning and Decision-MakingPapers published between 2016 and 2019 | A conceptual framework was developed in order to define how humans can use AI for decision-making under uncertainty. |
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Kitsios, F.; Kamariotou, M. Artificial Intelligence and Business Strategy towards Digital Transformation: A Research Agenda. Sustainability 2021, 13, 2025. https://doi.org/10.3390/su13042025
Kitsios F, Kamariotou M. Artificial Intelligence and Business Strategy towards Digital Transformation: A Research Agenda. Sustainability. 2021; 13(4):2025. https://doi.org/10.3390/su13042025
Chicago/Turabian StyleKitsios, Fotis, and Maria Kamariotou. 2021. "Artificial Intelligence and Business Strategy towards Digital Transformation: A Research Agenda" Sustainability 13, no. 4: 2025. https://doi.org/10.3390/su13042025
APA StyleKitsios, F., & Kamariotou, M. (2021). Artificial Intelligence and Business Strategy towards Digital Transformation: A Research Agenda. Sustainability, 13(4), 2025. https://doi.org/10.3390/su13042025