Browse > Article
http://dx.doi.org/10.7469/JKSQM.2022.50.3.517

Effects of the User Perception on Symbolic Adoption and Usage in Mandatory ATCIS-II Use  

Park, Minsuk (Industrial Engineering, Yonsei University)
Park, Junsung (Industrial Engineering, Yonsei University)
Yoo, Joonwoo (Industrial Engineering, Yonsei University)
Park, Heejun (Industrial Engineering, Yonsei University)
Publication Information
Abstract
Purpose: The purpose of this study is to propose useful suggestions by analyzing causal effect relationship between perceived usefulness (PU), perceived ease-of-use (PEOU), symbolic adoption (SA) which have four constructs, and ATCIS-II usage in mandatory context. Methods: Based on prior research, a research model was constructed using the variables of Technology Acceptance Model (TAM), the symbolic adoption theory, and the post-adoptive behavior variables. A structured questionnaire was conducted for those who use ATCIS-II in Republic of Korea Army (ROKA), and a total of 183 usable responses were collected and empirically analyzed using SmartPLS 3.3.9. Results: The results of this study are as follows; PEOU have a significant effect on PU and two constructs of SA (heightened enthusiasm, effort worthiness). PU have a significant effect on every construct of SA (heightened enthusiasm, mental acceptance, effort worthiness, use commitment). In addition, it was found that heightened enthusiasm have a significant effect on both expanded usage and exploratory usage. Also, mental acceptance and use commitment have a significant effect on exploratory usage. Conclusion: The findings of this empirical study have implications for proposing SA can explain mandated user's behavior and giving possible way that improve organization performance which adopt Information System (IS) by motivating end-user to extend IS's feature and explore new ways of using IS at work.
Keywords
ATCIS-II; Perceived Usefulness; Perceived Ease-of-Use; Symbolic Adoption; Expanded Usage; Exploratory Usage; Mandated Use;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
연도 인용수 순위
1 Lee Hyunku and Zo Hangjung. 2017. Assimilation of military group decision support systems in Korea: The mediating role of structural appropriation. Information Development 33(1):14-28.   DOI
2 Lee, Ya-Ching. 2006. An empirical investigation into factors influencing the adoption of an e-learning system. Online Information Review 30(5):517-541.   DOI
3 Moore II, J. B. (2002). Information technology infusion: a motivation approach. The Florida State University.
4 Son Kyongha and Lee Sangjin. 2011. A study of Influencing Factors in Using ATCIS. Korea Association of Defense Industry Studies 18(1):18-41.
5 Sun, H. and Zhang, P. 2006. The role of moderating factors in user technology acceptance. International Journal of Human-computer Studies 64(2):53-78.   DOI
6 Wang, W. and Hsieh, J. J. 2006. Beyond routine: Symbolic adoption, extended use, and emergent use of complex information systems in the mandatory organizational context. Twenty-seventh International Conference on Information Systems 2006 Proceedings:Paper 48.
7 Tunnell, H. D. 2014. Technology diffusion and military users: Perceptions that predict adoption. 2014 IEEE Military Communications Conference (October):1621-1626.
8 Venkatesh, V. and Davis, F. D. 2000. A theoretical extension of the technology acceptance model: Four longitudinal field studies. Management Science 46(2):186-204.   DOI
9 Virdyananto, A. L., Dewi, M. A. A., Hidayanto, A. N., and Hanief, S. 2016. User acceptance of human resource information system: An integration model of Unified Theory of Acceptance and Use of Technology (UTAUT), Task Technology Fit (TTF), and Symbolic Adoption. International Conference on Information Technology Systems and Innovation (October):1-6.
10 Davis, F. D. 1989. Perceived usefulness, perceived ease of use, and user acceptance of information technology. MIS Quarterly 13(3):319-340.   DOI
11 Fornell, C. and Larcker, D. F. 1981. Evaluating structural equation models with unobservable variables and measurement error. Journal of Marketing Research 18(1):39-50.   DOI
12 An Sunju, Seo Jay, and Choi Jeongil. 2022. A Study on the Factors Affecting the Continuous Intention to Use Digital Content Over-the-Top Service. Journal of the Korean Society for Quality Management 50(1):105-124.
13 Adam, F., & O'Doherty, P. 2003. 11 ERP Projects: Good or Bad for SMEs? in Second-wave enterprise resource planning systems: Implementing for Effectiveness:275-298.
14 Hair, J. F., Risher, J. J., Sarstedt, M., and Ringle, C. M. 2019. When to use and how to report the results of PLS-SEM. European Business Review 31(1):2-24.   DOI
15 Hwang Yujong, and Mohanned Al-Arabiat, and Shin DongHee. 2016. Understanding technology acceptance in a mandatory environment: A literature review. Information Development 32(4):1266-1283.   DOI
16 Kim Chongman and Kim Injai. 2009. A study of Influencing Factors Upon Using C4I Systems: The perspective of Mediating Variables in a Structured Model. Asia Pacific Journal of Information Systems 19(2):73-94.
17 Klonglan, Gerald E., and Coward, E. Walter. 1970. The concept of Symbolic Adoption: A Suggested Interpretation. Rural Sociology 35(1):77-83.
18 Lee Seungho and Baek SeungNyoung. 2020. Effects of the Technological and Individual Characteristics of Army Tactical Command Information System on Situation Awareness and Decision Making. Journal of the Korean Operations Research and Management Science Society 45(2):25-42.   DOI
19 Nah, F. F. H., Tan, X., and Teh, S. H. 2004. An empirical investigation on end-users' acceptance of enterprise systems. Information Resources Management Journal (IRMJ) 17(3):32-53.   DOI
20 Brown, S. A., Massey, A. P., Montoya-Weiss, M. M., and Burkman, J. R. 2002. Do I really have to? User acceptance of mandated technology. European Journal of Information Systems 11(4):283-295.   DOI
21 Carter, M., Petter, S., Grover, V., and Thatcher, J. B. 2020. Information Technology Identity: A Key Determinant of IT Feature and Exploratory Usage. MIS Quarterly 44(3):983-1021.   DOI
22 Cheng, Yung-Ming. 2012. The effects of information systems quality on nurses' acceptance of the electronic learning system. Journal of Nursing Research 20(1):19-31.   DOI
23 Dalcher, I. and Shine, J. 2003. Extending the new technology acceptance model to measure the end user information systems satisfaction in a mandatory environment: A bank's treasury. Technology Analysis & Strategic Management 15(4):441-455.   DOI
24 Karahanna, Elena. and Ritu Agarwal. 2006. When the spirit is willing: Symbolic adoption and technology exploration. Working Paper. University of Georgia, Athens, GA:1-41.
25 Po-An Hsieh, J. J. and Wang, W. 2007. Explaining employees' extended use of complex information systems. European Journal of Information Systems 16(3):216-227.   DOI
26 Saeed, K. A. & Abdinnour, S. 2013. Understanding post-adoption IS usage stages: an empirical assessment of selfservice information systems. Information Systems Journal 23(3):219-244.   DOI
27 Falk, R. F. & Miller, N. B. 1992. A primer for soft modeling. University of Akron Press.
28 Hsieh, J. J. and Zmud, R. W. 2006. Understanding post-adoptive usage behaviors: A two-dimensional view. Proceedings of the DIGIT Workshop Milwaukee, Wisconsin, USA.
29 Jain, V. and Kanungo, S. 2005. Beyond perceptions and usage: impact of nature of information systems use on information system-enabled productivity. International Journal of Human-Computer Interaction 19(1):113-136.   DOI
30 Jasperson, J., Carter, P. E., and Zmud, R. W. 2005. A comprehensive conceptualization of post-adoptive behaviors associated with information technology enabled work systems. MIS Quarterly 29(3):525-557.   DOI
31 Kilsdonk, E., Peute, L. W., Knijnenburg, S. L., and Jaspers, M. W. 2011. Factors known to influence acceptance of clinical decision support systems. in User Centred Networked Health Care (169):150-154.
32 Kim Sunmi and Son Youngdoo. 2022. A Study on the Intention of Financial Consumers to Accept AI Services Using UTAUT Model. Journal of the Korean Society for Quality Management 50(1):43-61.
33 Kim Taeyoung, Yoo Hanjoo, and Song Gwangsuk. 2020. The Effect of Motor Manufacturer A's Vehicle Quality Capability and Perceived Risk on the Customer Value and Loyalty. Journal of the Korean Society for Quality Management 48(1):125-147.   DOI
34 Kwahk Keeyoung, Ahn Hyunchul, and Ryu YoungU. 2018. Understanding mandatory IS use behavior: How outcome expectations affect conative IS use. International Journal of Information Management 38(1):64-76.   DOI