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KMBS 2018 : International Conference on Knowledge Management Business and Social Science Innovation Research August 18-19, 2018

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Link: http://roees.org/conferences/seoul-kmbs-aug-2018/
 
When Aug 18, 2018 - Aug 19, 2018
Where Seoul, South Korea
Submission Deadline Aug 10, 2018
Final Version Due Aug 8, 2018
Categories    business management   social sciences   research   innovation
 

Call For Papers

ROEES is to serve as a platform for international exchange of ideas, collaborations, and cooperation. This platform provides an excellent venue for presentation & discussion of noval research ideas. This platform is designed to welcome academicians, professors, students, and industry practitioners. Theoretical, applied and, empirical research in multidisciplinary areas of business, finance, marketing, management, accounting, MIS, public administration, economics, business law, business education, and related fields.

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