Title :
Modeling the Relationship Between EDI Implementation and Firm Performance Improvement With Neural Networks
Author :
Zhang, G. Peter ; Hill, Craig A. ; Xia, Yusen ; Liang, Faming
Author_Institution :
Robinson Coll. of Bus., Georgia State Univ., Atlanta, GA, USA
Abstract :
This paper examines a number of electronic data interchange (EDI) usage and implementation factors and their role in improving a firm´s efficiency, productivity and competitiveness. Unlike other studies in the literature that use exclusively linear models, we apply nonlinear neural networks to model the relationship between performance improvement and a set of predictor variables of EDI usage and supply chain coordination activities. A variable selection method is employed to identify key factors to predict a firm´s operational excellence due to EDI implementation. In addition, a bootstrap resampling scheme is used to evaluate the robustness of the results.
Keywords :
business data processing; electronic data interchange; neural nets; productivity; supply chain management; EDI usage; bootstrap resampling; electronic data interchange; firm competitiveness; firm efficiency; firm operational excellence; firm performance improvement; firm productivity; nonlinear neural network; predictor variables; supply chain coordination; variable selection method; Electronic data interchange; neural networks; nonlinear modeling; resampling; supply chain management; variable selection;
Journal_Title :
Automation Science and Engineering, IEEE Transactions on
DOI :
10.1109/TASE.2009.2016351