Subject Areas : Business Strategy
masoumeh lajevardi
1
,
Mehrdad Nikbakht
2
,
Omid Boyer Hassani
3
,
Reza Tavakkoli Moghaddam
4
1 - POBOX - 81465-384 ESFAHAN - IRAN
2 - Associate Professor of Industrial Engineering, Najafabad Branch, Islamic Azad University
3 - Assistant Professor,
Faculty of Engineering
Najafabad branch
Islamic Azad University
4 - Tehran University
Keywords:
Abstract :
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