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Big Data and Business Analytics Ecosyst 2016 : [Deadline Extension]MCIS2016 –Track#2 - Big Data and Business Analytics Ecosystems

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Link: http://www.mcis2016.eu/files/Big_Data_and_Business_Analytics_Ecosystems.pdf
 
When Sep 4, 2016 - Sep 6, 2016
Where Paphos, Cyprus
Submission Deadline Jun 5, 2016
Categories    big data   business analytics
 

Call For Papers

[Deadline Extension][CfP] MCIS2016 – Big Data and Business Analytics Ecosystems

10th MEDITERRANEAN CONFERENCE ON INFORMATION SYSTEMS
(MCIS 2016)
4-6 September / Paphos, Cyprus
Track 2: Big Data and Business Analytics Ecosystems

Important Dates:
Submissions deadline (Extended): 5 June 2016
Decision notification: 19 June 2016
Conference: 4-6 September 2016

The track accepts both full research paper and research in progress papers.

Publishing Opportunities in Journal Special Issues
Selected papers will be invited to submit extended versions to a special issue of the Journal of Information Systems and e-Business Management (Springer). More info on the special issue may be found here.​

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