The failure of organizations to adopt CASE tools has been an area of interest to business researchers for over a decade. The purpose of this study is to test whether the previous research provides a basis for predicting the current adoption of CASE tools by organizations. This study uses a neural network methodology to predict CASE tool adoption using factors that were previously identified in the literature. The model consisted of six variables: IS department stability, need to improve IS department performance, use of external sources of knowledge, job rotation, pressure to reduce development time, and CASE champion. The study found that all the variables were relevant in the prediction of CASE tool adoption with an average accuracy of 71.43 percent.
Article navigation
1 February 2004
Research Article|
February 01 2004
Prediction of CASE adoption: a neural network approach Available to Purchase
Steven A. Morris;
Steven A. Morris
Assistant Professor of Computer Information Systems, Middle Tennessee State University, Murfreesboro, Tennessee, USA.
Search for other works by this author on:
Timothy H. Greer;
Timothy H. Greer
Assistant Professor of Computer Information Systems, Middle Tennessee State University, Murfreesboro, Tennessee, USA.
Search for other works by this author on:
Cary Hughes;
Cary Hughes
Professor of Computer Information Systems, Middle Tennessee State University, Murfreesboro, Tennessee, USA.
Search for other works by this author on:
W. Jeff Clark
W. Jeff Clark
Professor of Computer Information Systems, Middle Tennessee State University, Murfreesboro, Tennessee, USA.
Search for other works by this author on:
Publisher: Emerald Publishing
Online ISSN: 1758-5783
Print ISSN: 0263-5577
© Emerald Group Publishing Limited
2004
Industrial Management & Data Systems (2004) 104 (2): 129–135.
Citation
Morris SA, Greer TH, Hughes C, Jeff Clark W (2004), "Prediction of CASE adoption: a neural network approach". Industrial Management & Data Systems, Vol. 104 No. 2 pp. 129–135, doi: https://doi.org/10.1108/02635570410522099
Download citation file:
Suggested Reading
A computation strategy based on neural network for stiffness determination of deep‐groove ball bearings
Industrial Lubrication and Tribology (June,2004)
Capturing and (re)interpreting complexity in multi‐firm disruptive product innovations
Journal of Business & Industrial Marketing (December,2008)
Scientific and Technical Cultural Images
Research Journal of Textile and Apparel (February,2000)
Experimental assessment of an innovation knowledge system for decision support
Business Process Management Journal (October,2005)
The future of custom manufacturing: Europe looking to take a lead
Strategic Direction (February,2005)
Related Chapters
It’s Not You, It’s Your Job: Network Evolution within Firms
The Structuring of Work in Organizations
Access4All: Policies and Practices of Social Development in Higher Education
Strategies for Facilitating Inclusive Campuses in Higher Education: International Perspectives on Equity and Inclusion
A Socio-cognitive Model of Innovation Adoption and Implementation
Cognition and Innovation
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
