1 |
Soto-Acosta, P., Popa, S., and Martinez-Conesa, I., Information technology, knowledge management and environmental dynamism as drivers of innovation ambidexterity: A study in SMEs, Journal of Knowledge Management, 2018, Vol. 22, No. 4, pp. 824-849.
DOI
|
2 |
Spanos, Y.E. and Lioukas, S., An examination into the causal logic of rent generation contrasting porter's competitive strategy framework and the resource-based perspective, Strategic Management Journal, 2001, Vol. 22, No. 10, pp. 907-934.
DOI
|
3 |
Subramani, M., How do suppliers benefit from information technology use in supply chain Relationships?, MIS Quarterly, 2004, Vol. 28, No. 1, pp. 45-73.
DOI
|
4 |
Tallon, P.P. and Pinsonneault, A., Competing perspectives on the link between strategic information technology alignment and organizational agility: Insights from a mediation model, MIS Quarterly, 2011, Vol. 35, No. 2, pp. 463-486.
DOI
|
5 |
Davenport, T.H., Paul, B., and Randy, B., How 'Big Data'is different, MIT Sloan Management Review, 2012, Vol. 54, No. 1, pp. 22-24.
|
6 |
De Mauro, A., Greco, M., Grimaldi, M., and Ritala, P., Human resources for big data professions: a systematic classification of job roles and required skill sets, Information Processing & Management, 2018, Vol. 54, No. 5, pp. 807-817.
DOI
|
7 |
Dyer, J.H., Gregersen, H.B. and Christensen, C.M., The innovator's DNA, Harvard Business Review, 2009, Vol. 87, No. 12, pp.60-67.
|
8 |
Erevelles, S., Fukawa, N., and Swayne L., Big data consumer analytics and the transformation of marketing, Journal of Business Research, 2016, Vol. 69, No. 2, pp. 897-904.
DOI
|
9 |
Ferraris, A., Mazzoleni, A., Devalle, A., and Couturier, J., Big data analytics capabilities and knowledge management: impact on firm performance, Management Decision, 2018, Vol. 57, No. 8, pp. 1923-1936.
|
10 |
George, G., Haas, M.R., and Pentland, A., Big data and management, Academy Management Journal, 2014, Vol. 57, No. 2, pp. 321-326.
|
11 |
He, Z.-L. and Wong, P.-K., Exploration vs. exploitation: an empirical test of the ambidexterity hypothesis, Organization Science, 2004, Vol. 15, No. 4, pp. 481-494.
DOI
|
12 |
Singh, N.P. and Hong, P.C., Impact of strategic and operational risk management practices on firm performance: An empirical investigation, European Management Journal, 2020, Vol. 38, No. 5, pp. 723-735.
DOI
|
13 |
Tan, K.H., Zhan, Y., Ji, G., Ye, F., and Chang, C., Harvesting big data to enhance supply chain innovation capabilities: An analytic infrastructure based on deduction graph, International Journal of Production Economics, 2015, Vol. 165, pp. 223-233.
DOI
|
14 |
Gerbing, D.W. and Anderson, J.C., An updated paradigm for scale development incorporating unidimensionality and its assessment, Journal of Marketing Research, 1988, Vol. 25, No. 2, pp. 186-192.
DOI
|
15 |
Gupta, A.K., Smith, K.G., and Shalley, C.E., The interplay between exploration and exploitation, The Academy of Management Journal, 2006, Vol. 49, No. 4, pp. 693-706.
|
16 |
Gupta, S. and Giri, V., Ensure high availability of data lake, In Gupta, S. and Giri, V., Practical Enterprise Data Lake Insights, Apress, Berkeley, CA, 2018, pp. 261-295.
|
17 |
Hong, P., Jagani, S., Kim, J.H., and Youn, S.H., Managing sustainability orientation: An empirical investigation of manufacturing firms, International Journal of Production Economics, 2019, Vol. 211, pp. 71-81.
DOI
|
18 |
Jung, J.H., The Study On the Automobile Industry Ecosystem using Big Data Analysis, Journal of Industrial Economics and Business, 2017, Vol. 30, No. 5, pp. 1615-1642.
DOI
|
19 |
Urciuoli, L. and Hintsa, J., Differences in security risk perceptions between logistics companies and cargo owners, The International Journal of Logistics Management, 2016, Vol. 27, No. 2, pp. 418-437.
DOI
|
20 |
Janssen, M., van der Voort, H., and Wahyudi, A., Factors influencing big data decision-making quality, Journal of Business Research, 2017, Vol. 70, pp. 338-345.
DOI
|
21 |
Yook, K.H., Challenges and Prospect for Management Accounting in Industry 4.0, Korean Journal of Management Accounting Research, 2019, Vol. 19, No. 1, pp. 33-57.
DOI
|
22 |
Chenhall, H.R., Integrative strategic performance measurement systems, strategic alignment of manufacturing, learning and strategic outcomes: An exploratory study, Accounting, Organizations and Society, 2005, Vol. 30, No. 5, pp. 395-422.
DOI
|
23 |
Kim, K.H., Usefulness and Riskiness of Big Data in Public Sector, Korean Journal of Policy Analysis and Evaluation, 2013, Vol. 23, No. 2, pp. 1-27.
DOI
|
24 |
Kim, S.E., Jeong, K.H., Heo, Y.H., Woo, J.H., and Kim, K.H., One pass paper: AMOS structural equation utilization and SPSS advanced analysis, Hanbit Academy, Seoul, Korea, 2018.
|
25 |
Wamba, S.F. and Mishra, D., Big data integration with business processes: A literature review, Business Process Management Journal, 2017, Vol. 23, No. 3, pp. 477-492.
DOI
|
26 |
Wamba, S.F., Gunasekaran, A., Akter, S., Ren, S.J.F., Dubey, R., and Childe, S.J., Big data analytics and firm performance: Effects of dynamic capabilities, Journal of Business Research, 2017, Vol. 70, pp. 356-365.
DOI
|
27 |
Wang, Y., Kung, L., and Byrd, T.A., Big data analytics: understanding its capabilities and potential benefits for healthcare organizations, Technological Forecasting and Social Change, 2018, Vol. 126, pp. 3-13.
DOI
|
28 |
Yiu, C., The big data opportunity: Making government faster, smarter and more personal, Policy exchange, London, 2012.
|
29 |
Yoon, H.J., A Study on the Effect of the Organizational, Technical and Environmental Recognition and Utilization of Big Data, Journal of Business Management, 2014, Vol. 7, No. 2, pp. 153-178
|
30 |
Kwon, H.J., Yoon, Y.M., and Kim, J.H., Changes in Management Accounting Education for Effective Utilization of Big Data, Yonsei Business Review, 2021, Vol. 58, No. 2, pp. 1-33.
DOI
|
31 |
Mikalef, P., Krogstie, J., Pappas, I.O., and Pavlou, P., Exploring the relationship between big data analytics capability and competitive performance: The mediating reles of dynamic and operational capabilities, Information & Management, 2020, Vol. 57, No. 2, 103169.
DOI
|
32 |
Brynjolfsson, E., The productivity paradox of information technology, Communications of the ACM, 1993, Vol. 36, No. 12, pp. 66-77.
DOI
|
33 |
Axson, D., Death by digital: Good-bye to finance as you know it, 2015, https://www.cfo.com/analytics/2015/10/death-digital-good-bye-finance-know/ (accessed 16 January 2022).
|
34 |
Bedford, D., Management control systems across different modes of innovation: Implications for firm performance, Management Accounting Research, 2015, Vol. 28, No. Septem- ber, pp. 12-30.
DOI
|
35 |
Bhatt, G.D. and Grover, V., Types of information technology capabilities and their role in competitive advantage: An empirical study, Journal of Management Information Systems, 2005, Vol. 22, No. 2, pp. 253-277.
DOI
|
36 |
Cegarra-Navarro, J.G., Soto-Acosta, P., and Wensley, A.K., Structured knowledge processes and firm performance: the role of organizational agility, Journal of Business Research, 2016 Vol. 69, pp. 1544-1549.
DOI
|
37 |
Kristal, M.M., Huang, X., and Roth, A.V., The effect of an ambidextrous supply chain strategy on combinative competitive capabilities and business performance, Journal of Operations Management, 2010, Vol. 28, No. 5, pp. 415-429.
DOI
|
38 |
Lee, K.K. and Kim, T.H., A business application of the business intelligence and the big data analytics, Journal of the Society of Korea Industrial and Systems Engineering, 2019, Vol. 42, No. 4, pp. 84-90.
DOI
|
39 |
Lee, S.M. and Rha, J.S., Ambidextrous supply chain as a dynamic capability: Building a resilient supply chain, Management Decision, 2016, Vol. 54, No. 1, pp. 2-23.
DOI
|
40 |
March, J.G., Exploration and exploitation in organizational learning, Organization Science, 1991, Vol. 2, No. 1, pp. 71-87.
DOI
|
41 |
McAfee, A. and Brynjolfsson, E., Big data: The management revolution, Harvard Business Review, 2012, Vol. 90, No. 10, pp. 1-9.
|
42 |
Riabacke, A., Managerial decision making under risk and uncertainty, IAENG International Journal of Computer Science, 2006, Vol. 32, No. 4, pp. 1-7.
|
43 |
Mikalef, P., Pappas, I.O., Krogstie, J., and Giannakos, M., Big data analytics capabilities: A systematic literature review and research agenda, Information System e-Business Management, 2018, Vol. 16, pp. 1-32.
DOI
|
44 |
Ojha, D., Struckell, E., Acharya, C., and Patel, P.C., Supply chain organizational learning, exploration, exploitation, and firm performance: A creation-dispersion perspective, International Journal of Production Economics, 2018, Vol. 204, No. October, pp. 70-82.
DOI
|
45 |
Pauleen, D.J. and Wang, W.Y., Does big data mean big knowledge? KM perspectives on big data and ana-lytics, Journal of Knowledge Management, 2017, Vol. 21, No. 1, pp. 1-6.
DOI
|
46 |
Akter, S., Wamba, S.F., Gunasekaran, A., and Dubey, R., How to improve firm performance using big data analytics capability and business strategy alignment?, Int. J. Production Economics, 2016, Vol. 182, pp. 113-131.
DOI
|
47 |
Cheon, M.K. and Baek, D.H., An assessment system ofr evaluating big data capbility based on a reference model, Journal of the Society of Korea industrial and Systems Engineering, 2016, Vol. 39, No. 2, pp. 54-63.
DOI
|
48 |
Choi, J.S., Analysis on Foreigners' perception of Korean Food Using Social Big Data, Asia-pacific Journal of Multimedia Services Convergent with Art, Humanities, and Sociology, 2017, Vol. 7, No. 8, pp. 427-437.
DOI
|
49 |
Constantiou, I.D. and Kallinikos, J., New games, new rules: Big data and the changing context of strategy, Journal of Information Technology, 2015, Vol. 30, No. 1, pp. 44-57.
DOI
|
50 |
Rialti, R., Zollo, L., Ferraris, A., and Alon, I., Big data analytics capabilities and performance: Evidence from a moderated multi-mediation model, Technological Forecasting & Social Change, 2019, Vol. 149, 119781.
DOI
|
51 |
Roh, J., Hong, P., and Min, H., Implementation of a responsive supply chain strategy in global complexity: The case of manufacturing firms, International Journal of Production Economics, 2014, Vol. 147, pp. 198-210.
DOI
|
52 |
Sharma, R., Mithas, S., and Kankanhalli, A., Transforming decision-making processes: A research agenda for understanding the impact of business analytics on organizations, European Journal of Information System, 2014, Vol. 23, No. 4, pp. 433-441.
DOI
|
53 |
Simsek, Z., Organizational ambidexterity: Towards a multilevel understanding, Journal of Management Studies, 2009, Vol. 46, No. 4, pp. 597-624.
DOI
|
54 |
Hong, J.S. and Oh, I.K., Image difference of before and after an incident using social big data analysis: Focusing on a ramp return of "K" airline, International Journal of Tourism and Hospitality Research, 2016, Vol. 30, No. 6, pp. 119-133.
DOI
|
55 |
Kim, J.D., Ji, S.Y., and Ryu, K.H., A Study on Factors Affecting External Manufacturing Big Data Technology Transfer Performance in Small-and-Medium-Sized Manufacturing Firms: The Technology Transfer Cases of Electronics and Telecommunications Research Institute, Journal of Information Technology and Architecture, 2018, Vol. 15, No. 3, pp. 307-327.
DOI
|
56 |
Gualandris, J., Legenvre, H., and Kalchschmidt, M., Exploration and exploitation within supply networks, International Journal of Operations & Production Management, 2018, Vol. 38, No. 3, pp. 667-689.
DOI
|
57 |
Chae, K.M., Advanced statistics by using SPSS and AMOS (2ed), Yangseowon, Paju, Korea, 2018.
|
58 |
Gupta, M. and George, J.F., Toward the development of a big data analytics capability, Information & Management, 2016, Vol. 53, No. 8, pp. 1049-1064.
DOI
|
59 |
Henseler, J., Ringle, C.M., and Sarstedt, M., A new criterion for assessing discriminant validity in variance-based structural equation modeling, Journal of the Academy of Marketing Science, 2015, Vol. 43, No. 1, pp. 115-135.
DOI
|
60 |
Hong, S.H., Criteria for Selecting Appropriate Fit Indices in Structural Equation Modeling and Their Rationales, Korean Journal of Clinical Psychology, 2000, Vol. 19, No. 1, pp. 161-177.
|
61 |
Raguseo, E. and Vitari, C., Investments in big data analytics and firm performance: An empirical investigation of direct and mediating effects, International Journal of Production Research, 2018, Vol. 56, No. 15, pp. 5206-5221.
DOI
|
62 |
Jansen, J.J.P., Van den Bosch, F.A.J., and Volberda, H.W., Exploratory innovation, exploitative innovation, and performance: effects of organizational antecedents and environmental moderators, Management Science, 2006, Vol. 52, No. 11, pp. 1661-1674.
DOI
|
63 |
KOREA Data Agency, 2021 Data Industry White Paper, KOREA Data Agency, Seoul, Korea, 2021.
|
64 |
Lawson, R., Management Accounting competencies: fit for purpose in a digital age? Institute of Management Accountants, Montvale, N.J, 2018.
|
65 |
Lennerts, S., Schulze, A., and Tomczak, T., The asymmetric effects of exploitation and exploration on radical and incremental innovation performance: An uneven affair, European Management Journal, 2020, Vol. 38, No. 1, pp. 121-134.
DOI
|
66 |
Mikalef, P., Boura, M., Lekakos, G., and Krogstie, J., Big data analytics capabilities and innovation: The mediating role of dynamic capabilities and moderating effect of the environment, British Journal of Management, 2019, Vol. 30, No. 2, pp. 272-298.
|
67 |
Noh, M.J. and Lee, C.K., The Impact of Big Data Analytics Capabilities and Values on Business Performance, Smart Media Journal, 2021, Vol. 10, No.1, pp. 108-115.
|