Have a personal or library account? Click to login
Adoption of big data technologies in smart cities of the European Union: Analysis of the importance and performance of technological factors Cover

Adoption of big data technologies in smart cities of the European Union: Analysis of the importance and performance of technological factors

By: Jasmina Pivar  
Open Access
|Sep 2021

References

  1. Abdollahzadehgan, A. et al. (2013). The Organizational Critical Success Factors for Adopting Cloud Computing in SMEs. Journal of information systems research and innovation, 67-64.
  2. Al-Emran M., Mezhuyev V. (2020) Examining the Effect of Knowledge Management Factors on Mobile Learning Adoption Through the Use of Importance-Performance Map Analysis (IPMA). U: Hassanien A., Shaalan K., Tolba M. (Eds.), Proceedings of the International Conference on Advanced Intelligent Systems and Informatics 2019. AISI 2019. Advances in Intelligent Systems and Computing, vol 1058. (str. 449-458). Springer, Cham.10.1007/978-3-030-31129-2_41
  3. Angelidou, M. (2014). Smart city policies: A spatial approach. Cities, 41, 3-11.10.1016/j.cities.2014.06.007
  4. Bettencourt, L.M.A. (2014). The Uses of Big Data in Cities. Mary Ann Liebert, INC., 2(1), 1-11.10.1089/big.2013.004227447307
  5. Bhatiasevi, V., Naglis, M. (2020). Elucidating the determinants of business intelligence adoption and organizational performance. Information Development, 36(1), 78–96.10.1177/0266666918811394
  6. Bhattacherjee, A., Hikmet, N. (2008). Reconceptualizing organizational support Reconceptualizing Organizational Support and its Effect on Information Technology Usage: Evidence from the Health Care Sector. Journal of Computer Information Systems, 48(4), 69-76.
  7. Bolívar, M. P. (2015) Smart Cities: Big Cities, Complex Governance? U: Bolívar, R., Pedro, M., ur. Transforming City Governments for Successful Smart Cities. Springer International Publishing, 1-7.
  8. Borsboom-van Beurden et al. (2016). Smart City Guidance Package – A Roadmap for Integrated Planning and Implementation of Smart City Projects. EIP-SCC. https://eusmartcities.eu/sites/default/files/2019-07/Smart%20City%20Guidance%20Package%20LowRes%201v22%20%28002%29_0.pdf
  9. Cegielski, C.G., Jia, L., Hall, D.J. (2018). Understanding the Factors Affecting the Organizational Adoption of Big Data. Journal of computer information systems, 58(3), 193-203.10.1080/08874417.2016.1222891
  10. Chen, D.Q., Preston, D.S., Swink, M. (2015). How the Use of Big Data Analytics Affects Value Creation in Supply Chain Management. Journal of Management Information Systems, 32(4), 4-39.10.1080/07421222.2015.1138364
  11. Ching-Wen, H., Ching-Chiang, Y. (2017). Understanding the factors affecting the adoption of the Internet of Things. Technology Analysis & Strategic Management, 29(9), 1089-1102.10.1080/09537325.2016.1269160
  12. Chong, A.Y.-L., Chan, F.T.S. (2012). Structural equation modeling for multi-stage analysis on Radio Frequency Identification (RFID) diffusion in the health care industry. Expert Systems with Applications, 392012, 8645-8654.10.1016/j.eswa.2012.01.201
  13. Cohen, W.M., Levinthal D.A. (1990). Absorptive capacity: A new perspective on learning and innovation. Administrative Science Quarterly, 35(1), 128-152.10.2307/2393553
  14. Dedrick, J. et al. (2015). Adoption of smart grid technologies by electric utilities: factors influencing organizational innovation in a regulated environment. Electronic Markets, 25(1), 17-29.10.1007/s12525-014-0166-6
  15. Flatten, T.C. et al. (2011). A measure of absorptive capacity: Scale developmentand validation. European Management Journal, 29(2), 98-116.10.1016/j.emj.2010.11.002
  16. Gangwar, H., Date, H., Ramaswamy, R. (2014). Understanding determinants of cloud computing adoption using an integrated TAM TOE MODEL. Journal of Enterprise Information Management, 28 (1), 107-130.
  17. Gutierrez, A., Boukrami, E., Lumsden, R. (2015). Technological, organisational and environmental factors influencing managers' decision to adopt cloud computing in the UK. Journal of Enterprise Information Management, 28 (6), 788-807.10.1108/JEIM-01-2015-0001
  18. Hair, J.F. et al. (2017). A primer on partial least squares structural equation modeling (PLSSEM). Los Angeles, SAD: SAGE Publications.
  19. Hair, J.F. jr. et al. (2018). Advanced issues in partial least squares structural equation modelling. Thousand Oaks, CA: SAGE Publications, Inc.
  20. Hashem, I. A. T. et al. (2016). The role of big data in smart city. International Journal of Information Management, 36, 748–758.10.1016/j.ijinfomgt.2016.05.002
  21. Hassan, H. et al. (2017). Factors influencing cloud computing adoption in small and medium enterprises. Journal of Information and Communication Technology (JICT), 1, 21-41.10.32890/jict2017.16.1.8216
  22. Hossain, M., Standing, C., Chan, C. (2017). The development and validation of a two-staged adoption model of RFID technology in livestock businesses. Information Technology & People, 30(4), 785-808.10.1108/ITP-06-2016-0133
  23. ITU-T Focus Group on Smart Sustainable Cities (2015). Setting the stage for stakeholders’ engagement in smart sustainable cities. http://www.itu.int/en/ITUT/focusgroups/ssc/Pages/default.aspx[10.prosinca, 2015.]
  24. Khayer, A., Jahan, N., Hossain, M.N., Hossain, M.Y. (2020). The adoption of cloud computing in small and medium enterprises: a developing country perspective. VINE Journal of Information and Knowledge Management Systems, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/VJIKMS-05-2019-006410.1108/VJIKMS-05-2019-0064
  25. Lai, Y.Y., Sun, H.F., Ren, J.F. (2018). Understanding the determinants of big data analytics (BDA) adoption in logistics and supply chain management: An empirical investigation. International Journal of Logistics Management, 29(2), 676-703.10.1108/IJLM-06-2017-0153
  26. Lautenbach, P., Johnston, K., Adeniran-Ogundipe, T. (2017). Factors influencing business intelligence and analytics usage extent in South African organisations. South African Journal of Business Management, 48(3), 23-33.10.4102/sajbm.v48i3.33
  27. Magal, S.R., Kosalge, P., Levenburg, N.M. (2009). Using importance performance analysis to understand and guide e-business decision making in SMEs. Journal of Enterprise Information Management, 22(1/2), 137-151.10.1108/17410390910932795
  28. Markazi-Moghaddam, N., Kazemi, A., Alimoradnori, M. (2019). Informatics in Medicine Unlocked, 17, 100251. https://doi.org/10.1016/j.imu.2019.100251.10.1016/j.imu.2019.100251
  29. Nathan, R.J., Victor, V., Gan, C.L., Kot, S. (2019). Electronic commerce for home-based businesses in emerging and developed economy. Eurasian Business Review, 9, 463–483.10.1007/s40821-019-00124-x
  30. Neirotti, P. et al. (2014). Current trends in Smart City initiatives: Some stylized facts. Cities, 38, 25-36.10.1016/j.cities.2013.12.010
  31. Sohaib, W., Hussain, M., Asif, M., Ahmad, M., Mazzara, M. (2020). A PLS-SEM Neural Network Approach for Understanding Cryptocurrency Adoption. IEEE Access, 8, 13138-13150.10.1109/ACCESS.2019.2960083
  32. Odbor Europskog parlamenta za industriju, istraživanje i energetiku – ITRE (2014). Mapping Smart Cities in the EU. Brusseles: European Parliament, Directorate General for internal policies. https://www.europarl.europa.eu/RegData/etudes/etudes/join/2014/507480/IPOLITRE_ET(2014)507480_EN.pdf
  33. Oliveira, T., Manoj, T., Espadanal, M. (2014). Assessing the determinants of cloud computing adoption: An analysis of the manufacturing and services sectors. Information & Management, 512014, str. 497-510.10.1016/j.im.2014.03.006
  34. Pejić Bach, M., Bertoncel, T., Meško, M., Suša Vugec, D., Ivančić, L. (2020). Big Data Usage in European Countries: Cluster Analysis Approach. Data, 5(1), 25.10.3390/data5010025
  35. Pejić Bach, M., Krstić, Ž., Seljan, S., Turulja, L. (2019). Text mining for big data analysis in financial sector: A literature review. Sustainability, 11(5), 1277.10.3390/su11051277
  36. Pejić Bach, M., Pivar, J., Krstić, Ž. (2019) Big Data for Prediction: Patent Analysis – Patenting Big Data for Prediction Analysis. U: Strydom, M. J., Strydom, K., Beverley, S. (Ed.), Big Data Governance and Perspectives in Knowledge Management (str. 218-240). Hershey Pennsylvania: IGI Global.10.4018/978-1-5225-7077-6.ch010
  37. Pivar, J. (2020a). Model usvajanja tehnologija velikih podataka u pametnim gradovima Europske Unije (urn:nbn:hr:148:687894). [Disertacija, Sveučilište u Zagrebu, Ekonomski fakultet]. Repozitorij radova Ekonomskog fakulteta Zagreb - REPEFZG.
  38. Pivar, J. (2020b) City Management Support And Smart City Strategy as Success Factors in Adopting Big Data Technologies for Smart Cities. U: Drezgić, S., Žišković, S., Tomljanović, M. (Eds.), Smart Governments, Regions and Cities Research monograph – First Edition (str. 167-183).10.23919/MIPRO48935.2020.9245360
  39. Pivar, J. i Vlahović, N. (2020) Stakeholder Support as Critical Success Factor in Adopting Big Data Technologies for Smart Cities. U: Skala, K. (Eds.), Proceedings of the 43nd International Convention on Information and Communication Technology, Electronics and Microelectronics MIPRO 2020 (pp. 2153-2158). Opatija: Croatian Society for Information and Communication Technology, Electronics and Microelectronics – MIPRO.10.23919/MIPRO48935.2020.9245360
  40. Ringle, C.M., Sarstedt, M. (2016). Gain more insight from your PLS-SEM results: The importance-performance map analysis. Industrial Management & Data Systems, 116(9), 1865-1886.10.1108/IMDS-10-2015-0449
  41. Rogers, E. M. (2003). Diffusion of Innovations. 5thEdition. New York: Free Press.
  42. Rouhani, S. et al. (2018). Business Intelligence Systems Adoption Model; An Empirical Investigation. Journal of Organizational and End User Computing, 30(2), 43-70.10.4018/JOEUC.2018040103
  43. Sambamurthy, V., Bharadwaj, A., Grover, V. (2003). Shaping Agility through Digital Options: Reconceptualizing the Role of Information Technology in Contemporary Firms, MIS Quarterly, 27(2), 237-263.10.2307/30036530
  44. Tan, J., Tyler, K. i Manica, A. (2007). Business-to-business adoption of e-commerce in China. Information & Management, 44 (3), 332-351.10.1016/j.im.2007.04.001
  45. Thiesse, F. et al. (2011). The rise of the “next-generation bar code”: an international RFID adoption study. Supply Chain Manage.: Int. J.,16, 245–32810.1108/13598541111155848
  46. Tomičić Furjan, M., Tomičić-Pupek, K., Pihir, I. (2020). Understanding Digital Transformation Initiatives: Case Studies Analysis. Business Systems Research, 11(1), 125-141.10.2478/bsrj-2020-0009
  47. Tornatzky, L.G., Fleischer, M., Chakrabarti, A. K. (1990). The Processes of Technological Innovation. Massachusetts: Lexington Books.
  48. Tsai, W.-C., Tang, L.-L. (2012). A model of the adoption of radio frequency identification technology: The case of logistics service firms. Journal of Engineering and Technology Management, 29(1), 131–151.10.1016/j.jengtecman.2011.09.010
  49. Wang, Y.-M., Wang, Y.-S., Yang Y.-F. (2010). Understanding the determinants of RFID adoption in the manufacturing industry. Technologial Forecasting & Social Change, 772010, 803-815.10.1016/j.techfore.2010.03.006
  50. Wang, H.-J., Lo, J. (2016). Adoption of open government data among government agencies. Government Information Quarterly, 33(1), 80-88.10.1016/j.giq.2015.11.004
  51. Weia, J., Lowry, P.B., Seedorf, S. (2015). The assimilation of RFID technology by Chinese companies: A technology diffusion perspective. Information & Management, 52(6), 628-642.10.1016/j.im.2015.05.001
  52. Zhu, K., Kraemer, K.L., Xu, S. (2006). The process of innovation assimilation by firms in different countries: a technology diffusion perspective on e-business. Manage. Sci., 52, 1557–1576.10.1287/mnsc.1050.0487
Language: English
Page range: 11 - 29
Submitted on: Nov 12, 2020
|
Accepted on: Aug 1, 2021
|
Published on: Sep 13, 2021
In partnership with: Paradigm Publishing Services
Publication frequency: 2 issues per year

© 2021 Jasmina Pivar, published by Međimurje University of Applied Sciences in Čakovec
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 3.0 License.