Title of article :
Entrepreneurship policy and innovative indicators of industrial companies: Evaluation by MCDM and ANN Methods
Author/Authors :
Karimi, Mehdi Department of Industrial Management - Islamic Azad University Kermanshah Branch, Iran , Namamian, Farshid Department of Business Management - Islamic Azad University Kermanshah Branch, Iran , Vafaei, Farhad Department of Business Management - Faculty of Humanities and Social Sciences - Kurdistan University, Iran , Moradi, Alireza Department of Economics - Islamic Azad University Kermanshah Branch, Iran
Abstract :
The present paper presented a methodology for prioritizing the innovative
and entrepreneurial indicators using Multi Criteria Decision Making (MCDM)
and Artificial Neural Networks (ANNs), taking into account three individual,
organizational and cultural dimensions simultaneously in decision making
procedure. This methodology has two main advantages: first, the speed of
operation in the accounting process and its simplification, and the other is the
high precision with the elimination of errors in the calculations. Hence, a
combination of findings was considered and identified in the Meta synthesis
framework in the form of group categorization of indicators. Then, the
entrepreneurship and innovation experts' opinion were gathered based on Metaanalysis. Next, the indicators were prioritized using Analytical Network Process
(ANP) and the Decision-Making Trial and Assessment Laboratory (DEMATEL).
The results obtained from Meta-analysis and multi criteria decision making
methods were used as input and output data, respectively, to create an Artificial
Neural Network model. Finally, the Artificial Neural Network model was
designed in the form of Multi-layer Perceptron (MLP) Neural Network.
Keywords :
entrepreneurial , MCDM , Artificial Neural Networks , Multilayer Perceptron
Journal title :
Journal of Industrial Strategic Management