Journal Screenshot

International Journal of Academic Research in Business and Social Sciences

Open Access Journal

ISSN: 2222-6990

A TOE Approach for Big Data Adoption Factors Towards Organizational Impact in the Malaysia’s GLAs: A Conceptual Review

Hasnah Hashim, Mohd Sazili Shahibi, Farrah Diana Saiful Bahry

http://dx.doi.org/10.6007/IJARBSS/v12-i6/13892

Open access

Having large volumes of data enable the organization to exploit them in the operational activities. However, the organization face challenges to have accurate data for right purposes at the right time. The purpose of the study is to develop a model of Big Data initiative which will provide the government agencies with a guide to evaluate the comprehensive criteria on the implementation. The outcome also will able to facilitate government on focusing to enhance or improvise the crucial aspect in management. This conceptual paper extends the technology-organization-environment model integrate with few other theories. This study extends it with data-driven culture as a mediating variable to investigate the relationship between Big Data Adoption factors and organizational impact in Government-Linked Agencies in Malaysia. The expected findings will then be assisting to provide guidelines in policy makers, opportunities to the newly creation position in the organization. The outcome also will able to facilitate government on focusing to enhance or improvise the crucial aspect in management especially in Big Data initiative as a whole and their interrelationships. This study not just focus of personal routines in operational activities, but also to come out with a guide to assist organization in utilize the good insights of Big Data.

Alharthi, A., Krotov, V., & Bowman, M. (2017). Addressing barriers to big data. Business Horizons, 60(3), 285-292.
Al-Sai, Z. A., & Abdullah, R. (2019, April). Big data impacts and challenges: A review. In 2019 IEEE Jordan International Joint Conference on Electrical Engineering and Information Technology (JEEIT) (pp. 150-155). IEEE.
Anderson, C. (2015). Creating a data-driven organization: Practical advice from the trenches. " O'Reilly Media, Inc."
Atyeh, A. J., Jaradat, M. I. R. M., & Arabeyyat, O. S. (2017). Big Data Analytics Evaluation, Selection and Adoption: A Developing Country Perspective. IJCSNS, 17(9), 159.
Basile, L. J., Carbonara, N., Pellegrino, R., & Panniello, U. (2022). Business intelligence in the healthcare industry: The utilization of a data-driven approach to support clinical decision making. Technovation, 102482.
Bean, R., & Davenport, T. H. (2019). Companies are failing in their efforts to become data-driven. Harvard Business Review, 5-8.
Berndtsson, M., Forsberg, D., Stein, D., & Svahn, T. (2018). Becoming a data-driven organisation.
Brous, P., Janssen, M., Schraven, D., Spiegeler, J., & Duzgun, B. C. (2017, April). Factors Influencing Adoption of IoT for Data-driven Decision Making in Asset Management Organizations. In IoTBDS (pp. 70-79).
Collymore, A., Rosado-Munoz, F. J., & Ojeda-Castro, A. (2017). Big Data Analytics, Competitive Advantage and Firm Performance. International Journal of Information Research and Review. 4(2), 3600 – 3603.
Côrte-Real, N., Ruivo, P., Oliveira, T., & Popovi?, A. (2019). Unlocking the drivers of big data analytics value in firms. Journal of Business Research, 97, 160-173.
Creswell, J. W. (2014). A concise introduction to mixed methods research. SAGE publications.
Davenport, T. H., Barth, P., & Bean, R. (2012). How'big data'is different. MIT Sloan Management Review, Vol. 54, pp. 43-46.
DiMaggio, P. J., & Powell, W. W. (1983). The iron cage revisited: Institutional isomorphism and collective rationality in organizational fields. American sociological review, 147-160.
Du, Z., Zhang, X., Li, W., Zhang, F., & Liu, R. (2020). A multi?modal transportation data?driven approach to identify urban functional zones: An exploration based on Hangzhou City, China. Transactions in GIS, 24(1), 123-141.
Etikan, I., & Bala, K. (2017). Sampling and sampling methods. Biometrics & Biostatistics International Journal, 5(6), 00149.
Gil, P. D., da Cruz Martins, S., Moro, S., & Costa, J. M. (2021). A data-driven approach to predict first-year students’ academic success in higher education institutions. Education and Information Technologies, 26(2), 2165-2190.
Ferraris, A., Mazzoleni, A., Devalle, A., & Couturier, J. (2018). Big data analytics capabilities and knowledge management: impact on firm performance. Management Decision.
Haddad, A., Ameen, A. A., & Mukred, M. (2018). The impact of intention of use on the success of big data adoption via organization readiness factor. International Journal of Management and Human Science (IJMHS), 2(1), 43-51.
Hariri, R. H., Fredericks, E. M., & Bowers, K. M. (2019). Uncertainty in big data analytics: survey, opportunities, and challenges. Journal of Big Data, 6(1), 1-16.
Ijab, M. T., Ahmad, A., Kadir, R. A., & Hamid, S. (2017). Towards big data quality framework for Malaysia’s public sector open data initiative. In International Visual Informatics Conference (pp. 79-87). Springer, Cham.
Jayashree, S., Malarvizhi, C. A., & Reza, H. M. N. (2020). Building Proper Organizational Culture for IR 4.0 and Sustainability—A Conceptual Framework. Journal of Computational and Theoretical Nanoscience, 17(5), 2172-2175.
LaValle, S., Lesser, E., Shockley, R., Hopkins, M. S., & Kruschwitz, N. (2011). Big data, analytics and the path from insights to value. MIT sloan management review, 52(2), 21-32.
Lombardo, G. (2018). Predicting the adoption of big data security analytics for detecting insider threats (Doctoral dissertation, Capella University).
Lunde, T. A., Sjusdal, A. P., & Pappas, I. O. (2019). Organizational culture challenges of adopting big data: A systematic literature Review. In Conference on e-Business, e-Services and e-Society (pp. 164-176). Springer, Cham.
Mao, Y., & Quan, J. (2015). IT enabled organisational agility: Evidence from Chinese firms. Journal of Organizational and End User Computing (JOEUC), 27(4), 1-24.
McAfee, A., Brynjolfsson, E., Davenport, T. H., Patil, D. J., & Barton, D. (2012). Big data: the management revolution. Harvard business review, 90(10), 60-68.
Mohbey, K. K. (2019). An efficient framework for smart city using big data technologies and internet of things. In Progress in Advanced Computing and Intelligent Engineering (pp. 319-328). Springer, Singapore.
Omar, Y. M., Minoufekr, M., & Plapper, P. (2019). Business analytics in manufacturing: Current trends, challenges and pathway to market leadership. Operations Research Perspectives, 6, 100127.
Paajanen, S. (2017). Opportunities of big data analytics in supply market intelligence to reinforce supply management.
Raghupathi, W., & Raghupathi, V. (2014). Big data analytics in healthcare: promise and potential. Health information science and systems, 2(1), 1-10.
Reggio, G., & Astesiano, E. (2020, August). Big-data/analytics projects failure: a literature review. In 2020 46th Euromicro Conference on Software Engineering and Advanced Applications (SEAA) (pp. 246-255). IEEE.
Rogers, E. M. (1995). Diffusion of Innovations: modifications of a model for telecommunications. In Die diffusion von innovationen in der telekommunikation (pp. 25-38). Springer, Berlin, Heidelberg.
Rogers, E. M. (1962). Diffusion of innovations. Glencoe. Free Press (1976)," New Product Adoption and Diffusion," Journal of Consumer Research, 2, 290-304.
Rousseau, D. M. (2018). Making evidence-based organizational decisions in an uncertain world. Organizational Dynamics, 47(3), 135-146.
Ross, J. W., Beath, C. M., & Quaadgras, A. (2013). You may not need big data after all. Harvard business review, 91(12), 90-98.
Storm, M., & Borgman, H. (2020, January). Understanding challenges and success factors in creating a data-driven culture. In Proceedings of the 53rd Hawaii International Conference on System Sciences.
Tabesh, P., Mousavidin, E., & Hasani, S. (2019). Implementing big data strategies: A managerial perspective. Business Horizons, 62(3), 347-358.
Teece, D. J. (2007). Explicating dynamic capabilities: the nature and microfoundations of (sustainable) enterprise performance. Strategic management journal, 28(13), 1319-1350.
Teng, S. Y., Tous, M., Leong, W. D., How, B. S., Lam, H. L., & Masa, V. (2021). Recent advances on industrial data-driven energy savings: Digital twins and infrastructures. Renewable and Sustainable Energy Reviews, 135, 110208.
Tornatzky, L., & Fleischer, M. (1990). The process of technology innovations. Lexington, MA: Lexington Books.
Thirathon, U., Wieder, B., Matolcsy, Z., & Ossimitz, M. L. (2017). Big data, analytic culture and analytic-based decision-making evidence from Australia. Procedia Computer Science, 121, 775-783.
Vinod, B. (2013). Leveraging BIG DATA for competitive advantage in travel. Journal of revenue and pricing management, 12(1), 96-100.
Vinod, B. (2016). Big data in the travel marketplace. Journal of Revenue and Pricing Management, 15(5), 352-359.
Wamba, S. F. (2017). Big data analytics and business process innovation. Business Process Management Journal.
Wilkins, J. (2013). Big data and its impact on manufacturing. Available at https://www.dpaonthenet.net/article/65238/Big-data-and-its-impact-on-manufacturing.aspx
World Bank Group. (2018). Malaysia's Digital Economy: A New Driver of Development. World Bank.
Zainal, N. Z., Hussin, H., & Nazri, M. N. M. (2016, November). Big data initiatives by governments--issues and challenges: A review. In 2016 6th international conference on information and communication technology for the Muslim World (ICT4M) (pp. 304-309). IEEE.
Zerbino, P., Aloini, D., Dulmin, R., & Mininno, V. (2018). Big Data-enabled customer relationship management: A holistic approach. Information Processing & Management, 54(5), 818-846.

In-Text Citation: (Hashim et al., 2022)
To Cite this Article: Hashim, H., Shahibi, M. S., & Bahry, F. D. S. (2022). A TOE Approach for Big Data Adoption Factors Towards Organizational Impact in the Malaysia’s GLAs: A Conceptual Review. International Journal of Academic Research in Business and Social Sciences. 12(6), 1554 – 1565.