8,578
Views
80
CrossRef citations to date
0
Altmetric
Articles

Explore success factors that impact artificial intelligence adoption on telecom industry in China

, &
Pages 36-68 | Received 11 Oct 2020, Accepted 15 Nov 2020, Published online: 22 Dec 2020

References

  • Aboelmaged, M. G. (2014). Predicting e-readiness at firm-level: An analysis of technological, organizational and environmental (TOE) effects on e-maintenance readiness in manufacturing firms. International Journal of Information Management , 34 (5), 639–651.
  • Adner, R. , & Helfat, C. E. (2003). Corporate effects and dynamic managerial capabilities. Strategic Management Journal , 24 (10), 1011–1025.
  • Agrawal, A. , Gans, J. , & Goldfarb, A. (2019). Economic policy for artificial intelligence. Innovation Policy and the Economy , 19 (1), 139–159.
  • Assael, H. (1984). Consumer behavior and marketing action . Boston: Kent Pub. Co.
  • Azadegan, A. , & Teich, J. (2010). Effective benchmarking of innovation adoptions: A theoretical framework for e-procurement technologies. Benchmarking: An International Journal , 17 (4), 472–490.
  • Bagozzi, R. P. , & Yi, Y. (1988). On the evaluation of structural equation models. Journal of the Academy of Marketing Science , 16 (1), 74–94.
  • Bagozzi, R. P. , Yi, Y. , & Phillips, L. W. (1991). Assessing construct validity in organizational research. Administrative Science Quarterly , 36 (3), 421–458.
  • Baker, J. (2012). The technology–organization–environment framework. In Y. Dwivedi , M. Wade , & S. Schneberger (Eds.), Information systems theory. Integrated series in information systems , (vol 28, pp. 231–245). New York, NY: Springer. https://doi.org/10.1007/978-1-4419-6108-2_12
  • Bharadwaj, A. S. (2000). A resource-based perspective on information technology capability and firm performance: An empirical investigation. MIS Quarterly , 24 (1), 169–196.
  • Brislin, R. W. (1970). Back-translation for cross-cultural research. Journal of Cross-Cultural Psychology , 1 (3), 185–216.
  • Buchanan, B. G. (2005). A (very) brief history of artificial intelligence. Ai Magazine , 26 (4), 53.
  • Butler, D. L. , & Sellbom, M. (2002). Barriers to adopting technology. Educause Quarterly , 2 (1), 22–28.
  • CAICT and Gartner . (2018). “2018 World Artificial Intelligence Industry Development Blue Book.” 2018 World Artificial Intelligence Conference. Retrieve from http://www.caict.ac.cn/kxyj/qwfb/bps/201809/P020180918696200669434.pdf
  • Caselli, F. , & Coleman, W. J. (2001). Cross-country technology diffusion: The case of computers. American Economic Review , 91 (2), 328–335.
  • Chang, I. C. , Hwang, H. G. , Yen, D. C. , & Lian, J. W. (2006). Critical factors for adopting PACS in Taiwan: Views of radiology department directors. Decision Support Systems , 42 (2), 1042–1053.
  • Chau, P. Y. , & Tam, K. Y. (1997). Factors affecting the adoption of open systems: An exploratory study. MIS Quarterly , 21 (1), 1–24.
  • Chi-Hsien, K. , & Nagasawa, S. (2019). Applying machine learning to market analysis: Knowing your luxury consumer. Journal of Management Analytics , 6 (4), 404–419.
  • Chin, W. W. , & Marcolin, B. (1995). The holistic approach to construct validation in IS research: examples of the interplay between theory and measurement. In D. Compeau (Ed.), Administrative sciences association of Canada – 23rd conference, Windsor, Ontario, IS proceedings (vol. 16, pp. 33–43).
  • Chin, W. W. (1998). Issues and opinion on structural equation modeling. Mis Quarterly , 22 (1998), VII–XVI.
  • Chin, W. W. , & Gopal, A. (1995). Adoption intention in GSS: Relative importance of beliefs. ACM SIGMIS Database: the DATABASE for Advances in Information Systems , 26 (2-3), 42–64.
  • Chin, W. W. , Marcolin, B. L. , & Newsted, P. R. (2003). A partial least squares latent variable modeling approach for measuring interaction effects: Results from a Monte Carlo simulation study and an electronic mail emotion/adoption study. Information Systems Research , 14 (2), 189–217.
  • Chong, A. Y. L. , Ooi, K. B. , Lin, B. S. , & Raman, M. (2009). Factors affecting the adoption level of c-commerce: An empirical study. Journal of Computer Information Systems , 50 (2), 13–22.
  • Chong, S. , & Bauer, C. (2000). A model of factor influences on electronic commerce adoption and diffusion in small- and medium-sized enterprises. In Proceedings of the fourth Pacific Asia conference on information systems (PACIS) (23, pp. 290–301). Hong Kong.
  • Co, H. C. , Eddy Patuwo, B. , & Hu, M. Y. (1998). The human factor in advanced manufacturing technology adoption: An empirical analysis. International Journal of Operations & Production Management , 18 (1), 87–106.
  • Crevier, D. (1993). AI: The tumultuous history of the search for artificial intelligence . New York: Basic Books.
  • Duan, L. , & Xu, L. (2012). Business intelligence for enterprise systems: A survey. IEEE Transactions on Industrial Informatics , 8 (3), 679–687.
  • El Khatib, M. M. , Al-Nakeeb, A. , & Ahmed, G. (2019). Integration of cloud computing with artificial intelligence and Its impact on telecom sector—A case study. iBusiness , 11 (01), 1.
  • Elbanna, A. (2013). Top management support in multiple-project environments: An in-practice view. European Journal of Information Systems , 22 (3), 278–294.
  • Fichman, R. G. (2004). Going beyond the dominant paradigm for information technology innovation research: Emerging concepts and methods. Journal of the Association for Information Systems , 5 (8), 314–355.
  • Floyd, S. W. , & Lane, P. J. (2000). Strategizing throughout the organization: Managing role conflict in strategic renewal. Academy of Management Review , 25 (1), 154–177.
  • Fornell, C. , & Larcker, D. F. (1981). Evaluating structural equation models with unobservable variables and measurement error. Journal of Marketing Research , 18 (1), 39–50.
  • Fu, Y. , Kok, R. A. , Dankbaar, B. , Ligthart, P. E. , & van Riel, A. C. (2018). Factors affecting sustainable process technology adoption: A systematic literature review. Journal of Cleaner Production , 205 , 226–251.
  • Garrison, G. , Wakefield, R. L. , & Kim, S. (2015). The effects of IT capabilities and delivery model on cloud computing success and firm performance for cloud supported processes and operations. International Journal of Information Management , 35 (4), 377–393.
  • Gefen, D. , Straub, D. , & Boudreau, M. C. (2000). Structural equation modeling and regression: Guidelines for research practice. Communications of the Association for Information Systems , 4 (1), 7.
  • Ghobakhloo, M. , & Ching, N. T. (2019). Adoption of digital technologies of smart manufacturing in SMEs. Journal of Industrial Information Integration , 16 , 100107.
  • Gibbs, J. L. , & Kraemer, K. L. (2004). A cross-country investigation of the determinants of scope of e-commerce use: An institutional approach. Electronic Markets , 14 (2), 124–137.
  • Haenlein, M. , Kaplan, A. , Tan, C. W. , & Zhang, P. (2019). Artificial intelligence (AI) and management analytics. Journal of Management Analytics , 6 (4), 341–343.
  • Hair, J. F. , Hult, G. T. , Ringle, C. M. , & Sarstedt, M. (2014). A primer on partial least squares structural equation modeling (PLS-SEM) . Thousand Oaks: Sage.
  • Han, H. S. , Lee, J. N. , & Seo, Y. W. (2008). Analyzing the impact of a firm's capability on outsourcing success: A process perspective. Information & Management , 45 (1), 31–42.
  • Hannan, T. H. , & McDowell, J. M. (1984). The determinants of technology adoption: The case of the banking firm. The RAND Journal of Economics , 15 (3), 328–335.
  • Hao, H. , Padman, R. , Sun, B. , & Telang, R. (2018). Quantifying the impact of social influence on the information technology implementation process by physicians: A hierarchical Bayesian learning approach. Information Systems Research , 29 (1), 25–41.
  • He, Z. (2015). Rivalry, market structure and innovation: The case of mobile banking. Review of Industrial Organization , 47 (2), 219–242.
  • House, R. , Javidan, M. , Hanges, P. , & Dorfman, P. (2002). Understanding cultures and implicit leadership theories across the globe: An introduction to project GLOBE. Journal of World Business , 37 (1), 3–10.
  • Huang, Z. , & Palvia, P. (2001). ERP implementation issues in advanced and developing countries. Business Process Management Journal , 7 (3), 276–284.
  • Huebner, R. A. (2017). A quantitative analysis of organizational factors that relate to data mining success (Doctoral dissertation). Capella University.
  • Hung, S. Y. , Huang, W. M. , Yen, D. C. , Chang, S. I. , & Lu, C. C. (2016). Effect of information service competence and contextual factors on the effectiveness of strategic information systems planning in Hospitals. Journal of Global Information Management (JGIM) , 24 (1), 14–36.
  • Ifinedo, P. (2011). An empirical analysis of factors influencing Internet/e-business technologies adoption by SMEs in Canada. International Journal of Information Technology & Decision Making , 10 (04), 731–766.
  • Intakhan, P. (2014). Direct & indirect effects of top management support on abc implementation success: Evidence from iso 9000 certified companies in Thailand. Procedia-Social and Behavioral Sciences , 164 , 458–470.
  • Kasemsap, K. (2017). Artificial intelligence: Current issues and applications. In R. Das & M. Pradhan (Eds.), Handbook of research on manufacturing process modeling and optimization strategies (pp. 454–474). IGI Global. https://doi.org/10.4018/978-1-5225-2440-3.ch022
  • Kettinger, W. J. , Li, Y. , Davis, J. M. , & Kettinger, L. (2015). The roles of psychological climate, information management capabilities, and IT support on knowledge-sharing: An MOA perspective. European Journal of Information Systems , 24 (1), 59–75.
  • Kline, P. (2000). The handbook of psychological testing (2nd ed.). London: Routledge.
  • Kline, R. (1998). Principles and practice of structural equation modeling . New York, NY: The Guilford Press.
  • Kouziokas, G. N. (2017). The application of artificial intelligence in public administration for forecasting high crime risk transportation areas in urban environment. Transportation Research Procedia , 24 , 467–473.
  • Kuan, K. K. , & Chau, P. Y. (2001). A perception-based model for EDI adoption in small businesses using a technology–organization–environment framework. Information & Management , 38 (8), 507–521.
  • Kurade, S. S. , & Latpate, R. (2020). Demand and deterioration of items per unit time inventory models with shortages using genetic algorithm. Journal of Management Analytics , 1–28. https://doi.org/10.1080/23270012.2020.1829113
  • Kushwaha, S. , Bahl, S. , Bagha, A. K. , Parmar, K. S. , Javaid, M. , Haleem, A. , & Singh, R. P. (2020). Significant applications of machine learning for COVID-19 Pandemic. Journal of Industrial Integration and Management , 1–27. https://doi.org/10.1142/S2424862220500268
  • Kwon, T. H. , & Zmud, R. W. (1987). Unifying the fragmented models of information systems implementation. In R. J. Boland & R. A. Hirschheim (Eds.), Critical Issues in Information Systems Research (pp. 227–251). New York: John Wiley and Sons.
  • Lai, P. C. (2017). The literature review of technology adoption models and theories for the novelty technology. JISTEM-Journal of Information Systems and Technology Management , 14 (1), 21–38.
  • Lemke, H. U. (2003). PACS developments in Europe. Computerized Medical Imaging and Graphics , 27 (2-3), 111–120.
  • Li, S. , Xu, L. D. , & Zhao, S. (2018). 5G Internet of Things: A survey. Journal of Industrial Information Integration , 10 , 1–9.
  • Li, Y. H. (2008). An empirical investigation on the determinants of e-procurement adoption in Chinese manufacturing enterprises, In International conference on management science & engineering (15th) conference proceedings (pp. 32–37). Long Beach, CA.
  • Lovely, M. , & Popp, D. (2017). Trade, technology, and the environment: Does access to technology promote environmental regulation? In M. Lovely (Ed.), International economic integration and domestic performance (pp. 169–188). World Scientific. https://doi.org/10.1142/9789813141094_0010
  • Low, C. , Chen, Y. , & Wu, M. (2011). Understanding the determinants of cloud computing adoption. Industrial Management & Data Systems , 111 (7), 1006–1023.
  • Lu, L. , Xu, L. , Xu, B. , Li, G. , & Cai, H. (2018). Fog computing approach for music cognition system based on machine learning algorithm. IEEE Transactions on Computational Social Systems , 5 (4), 1142–1151.
  • Lu, Y. (2019). Artificial intelligence: A survey on evolution, models, applications and future trends. Journal of Management Analytics , 6 (1), 1–29.
  • Lyytinen, K. , & Damsgaard, J. (2011). Inter-organizational information systems adoption–a configuration analysis approach. European Journal of Information Systems , 20 (5), 496–509.
  • Macleish, K. J. (1988). Mapping the integration of artificial intelligence into telecommunications. IEEE Journal on Selected Areas in Communications , 6 (5), 892–898.
  • Malhotra, D. , & Rishi, O. P. (2019). A comprehensive review from hyperlink to intelligent technologies based personalized search systems. Journal of Management Analytics , 6 (4), 365–389.
  • Mazurek, G. , & Małagocka, K. (2019). Perception of privacy and data protection in the context of the development of artificial intelligence. Journal of Management Analytics , 6 (4), 344–364.
  • Mithas, S. , Ramasubbu, N. , & Sambamurthy, V. (2011). How information management capability influences firm performance. MIS quarterly , 35 (1), 237.
  • Murphy, J. (2018). Artificial intelligence, rationality, and the world wide Web. IEEE Intelligent Systems , 33 (1), 98–103.
  • Müller, R. , & Jugdev, K. (2012). Critical success factors in projects. International Journal of Managing Projects in Business , 5 (4), 757–775.
  • Oliveira, T. , & Martins, M.F. (2008). A comparison of web site adoption in small and large Portuguese firms. In ICE-B 2008: Proceedings of the international conference on e-business (pp 370–377). Porto, Portugal.
  • Oliveira, T. , & Martins, M. F. (2010). Understanding e-business adoption across industries in European countries. Industrial Management & Data Systems , 110 (9), 1337–1354.
  • Oliveira, T. , & Martins, M. F. (2011). Literature review of information technology adoption models at firm level. Electronic Journal of Information Systems Evaluation , 14 (1), 110.
  • Oliveira, T. , Thomas, M. , & Espadanal, M. (2014). Assessing the determinants of cloud computing adoption: An analysis of the manufacturing and services sectors. Information & Management , 51 (5), 497–510.
  • Oyelude, A. A. (2017). What’s trending in libraries from the internet cybersphere–artificial intelligence and other emerging technologies. Library Hi Tech News , 34 (2), 11–12.
  • Pavlou, P. A. , Liang, H. , & Xue, Y. (2007). Understanding and mitigating uncertainty in online exchange relationships: A principal-agent perspective. MIS Quarterly , 31 (1), 105–136.
  • Porter, M. E. , & Millar, V. E. (1985). How information gives you competitive advantage. Harvard Business Review , 63 (4), 149–160.
  • Pradhan, K. , & Chawla, P. (2020). Medical Internet of things using machine learning algorithms for lung cancer detection. Journal of Management Analytics , 7 (4), 591–623.
  • Qi, J. , Wu, F. , Li, L. , & Shu, H. (2007). Artificial intelligence applications in the telecommunications industry. Expert Systems , 24 (4), 271–291.
  • Qiu, C. (2018). Application of artificial intelligence technology in GIS. Journal of Advanced Oxidation Technologies , 21 , 2.
  • Ravichandran, T. , & Lertwongsatien, C. (2005). Effect of information systems resources and capabilities on firm performance: A resource-based perspective. Journal of Management Information Systems , 21 (4), 237–276.
  • Reich, B. H. , & Benbasat, I. (1990). An empirical investigation of factors influencing the success of customer-oriented strategic systems. Information Systems Research , 1 (3), 325–347.
  • Rogers, E. M. (1995). Diffusion of innovations (4th ed). New York: The Free Press.
  • Rogers, E. M. (2003). Diffusion of innovations (5th ed). New York: The Free Press.
  • Russell, S. J. , & Norvig, P. (2003). Artificial intelligence: A modern approach . Upper Saddle River, NJ: Pearson Education, Inc.
  • Sanchez, M. , Exposito, E. , & Aguilar, J. (2020). Autonomic computing in manufacturing process coordination in industry 4.0 context. Journal of Industrial Information Integration , 19 , 100159.
  • Seshadri, V. (1996). AI in telecommunications. IEEE Expert , 11 (1), 36.
  • Simou, P. , Tiligadis, K. , & Alexiou, A. (2013). Exploring artificial intelligence utilizing BioArt. In 9th artificial intelligence applications and innovations conference, 1st workshop on ethics and philosophy in artificial intelligence. In H. Papadopoulos , et al. (Eds.), AIAI 2013, IFIP AICT 412, ©IFIP International federation for information processing 2013 (pp. 687–692). Heidelberg/Paphos: Springer.
  • Sulaiman, H. , & Wickramasinghe, N. (2014). Assimilating Healthcare information systems in a Malaysian Hospital. Communications of the Association for Information Systems , 34 , 77.
  • Sumner, M. (2000). Risk factors in enterprise-wide/ERP projects. Journal of Information Technology , 15 (4), 317–327.
  • Syeda, S. H. (2018). An exploratory study to identify critical success factors of agile systems engineering (Doctoral dissertation). The George Washington University.
  • Thiesse, F. , Staake, T. , Schmitt, P. , & Fleisch, E. (2011). The rise of the “next-generation bar code”: an international RFID adoption study. Supply Chain Management: An International Journal , 16 (5), 328–345.
  • Thong, J. Y. (1999). An integrated model of information systems adoption in small businesses. Journal of Management Information Systems , 15 (4), 187–214.
  • Tornatzky, L. , & Fleischer, M. (1990). The process of technology innovation . Lexington, MA: Lexington Books.
  • Tractica . (2018). Artificial intelligence for telecommunications applications. https://www.tractica.com/research/artificial-intelligence-for-telecommunications-applications/
  • Tung, K. (2019). AI, the internet of legal things, and lawyers. Journal of Management Analytics , 6 (4), 390–403.
  • Venkatesh, V. , Bala, H. , & Sambamurthy, V. (2016). Implementation of an information and communication technology in a developing country: A multimethod longitudinal study in a bank in India. Information Systems Research , 27 (3), 558–579.
  • Vodafone . (2017). Meet TOBi – the first live chatbot in UK telecoms. http://labs.vodafone.co.uk/case-studies/tobi
  • Walczak, S. (2016). Artificial neural networks and other AI applications for business management decision support. International Journal of Sociotechnology and Knowledge Development (IJSKD ), 8 (4), 1–20.
  • Wang, E. T. , Tai, J. C. , & Grover, V. (2013). Examining the relational benefits of improved interfirm information processing capability in buyer-supplier dyads. MIS Quarterly , 37 (1), 149–173.
  • Wang, P. , Chaudhry, S. , & Li, L. (2016). Introduction: Advances in IoT research and applications. Internet Research , 26 (2), 334–336.
  • Wang, Y. M. , Wang, Y. S. , & Yang, Y. F. (2010). Understanding the determinants of RFID adoption in the manufacturing industry. Technological Forecasting and Social Change , 77 (5), 803–815.
  • Willis, R. G. , & Sullivan, K. H. (1984). CIMS in perspective-costs, benefits, timing, payback periods are outlined. Industrial Engineering , 16 (2), 28.
  • Wixom, B. H. , & Watson, H. J. (2001). An empirical investigation of the factors affecting data warehousing success. MIS Quarterly , 25 (1), 17–41.
  • Wu, J. H. , Wang, S. C. , & Lin, L. M. (2007). Mobile computing acceptance factors in the healthcare industry: A structural equation model. International Journal of Medical Informatics , 76 (1), 66–77.
  • Wu, Y. , Cegielski, C. G. , Hazen, B. T. , & Hall, D. J. (2013). Cloud computing in support of supply chain information system infrastructure: Understanding when to go to the cloud. Journal of Supply Chain Management , 49 (3), 25–41.
  • Xu, L. (1999). Preface. Expert Systems with Applications , 16 (1), 1–2. doi:10.1016/S0957-4174(98)00033-5
  • Xu, L. D. , & Li, L. X. (2000). A hybrid system applied to epidemic screening. Expert Systems , 17 (2), 81–89.
  • Xu, L. , Liang, N. , & Gao, Q. (2001). An integrated knowledge-based system for grasslands ecosystems. Knowledge-Based Systems , 14 (5-6), 271–280.
  • Xu, X. , Thong, J. Y. , & Tam, K. Y. (2017). Winning back technology disadopters: Testing a technology readoption model in the context of mobile internet services. Journal of Management Information Systems , 34 (1), 102–140.
  • Yang, Z. , Kankanhalli, A. , Ng, B. Y. , & Lim, J. T. Y. (2013). Analyzing the enabling factors for the organizational decision to adopt healthcare information systems. Decision Support Systems , 55 (3), 764–776.
  • Yang, Z. , Sun, J. , Zhang, Y. , & Wang, Y. (2015). Understanding SaaS adoption from the perspective of organizational users: A tripod readiness model. Computers in Human Behavior , 45 , 254–264.
  • Zhu, K. , Kraemer, K. , & Xu, S. (2003). Electronic business adoption by European firms: A cross-country assessment of the facilitators and inhibitors. European Journal of Information Systems , 12 (4), 251–268.
  • Zou, X. (2014). Innovation and scientific breakthroughs in artificial intelligence methods. In H. Liu , W. Sung , & W. Yao (Eds.), Proceedings of the 2014 International Conference on Management, Information and Educational Engineering (MIEE 2014) (pp. 929–932) Xiamen, China.

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.