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ACMASS 2019 : ACMASS 2019 Annual Conference on Management and Social Science

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Link: http://acmass.org
 
When Nov 19, 2019 - Nov 21, 2019
Where Bangkok, Thailand
Submission Deadline TBD
Final Version Due Oct 10, 2019
Categories    business& management   communication   economics   society
 

Call For Papers

Annual Conference on Management and Social Science (ACMASS) will be held from November 19-22, 2019 in Bangkok, Thailand. ACMASS provides opportunities for the delegates to exchange new ideas along with the application experiences face to face and to share ongoing research activities. We invite academicians and scholars from all the relevant disciplines to submit their papers and ongoing research findings to this stimulating and exciting conference.

*TOPIC

-Business& Management
-Communication
-Economics
-Education
-Finance
-Culture
-Law
-Politics
-Psychology
-Society
More Sub-fields

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