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BDSR 2017 : Workshop on Big Data & Data Science in Retail in conjunction with ICDM

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Link: https://rubikloud.com/Retail-Science-Workshop/
 
When Nov 18, 2017 - Nov 18, 2017
Where New Orleans, Louisiana, USA
Submission Deadline Aug 7, 2017
Notification Due Sep 7, 2017
 

Call For Papers

This Workshop aims to provide a forum for academic researchers and industry professionals to share their latest findings on problems relating to the analysis and exploration of retail data. While there are very important retail problems that have been solved with data mining over the past decade, we want to place emphasis on new problems and methods that arise from the combination of new data sources such as social, IoT, mobile browse, online competitive information, big data technologies, or recent advances in deep learning and data mining.

Submissions are invited to address the need for developing new methods to mine, model, summarize and integrate the huge volume of the structured and unstructured retail data that can potentially lead to significant advances in the field.

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