Subject Areas : Strategic Management Researches
rasoul nematniya
1
,
maryam khademi
2
,
Kiamars Fathi
3
,
sohela sardar
4
1 -
2 -
3 -
4 - A member of the academic staff of the industrial management department of Tehran alhg branch
Keywords:
Abstract :
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