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Journal of Data Processing
 

Measuring Business Data Volume in Serbia using Machine Learning Systems
Ana Uzelac, Sladana Jankovic, Snezana Mladenovic, Stefan Zdravkovic
University of Belgrade Vojvode Stepe 305 11000 Belgrade, Serbia
Abstract: There is an increasing tendency to process supply chain data to detect the patterns to improve the functions. We have generated a machine learning system which can be used to analyse the business data volume to judge the size of the trade activities.
Keywords: Machine Learning, Prediction, Big Data Analytics Measuring Business Data Volume in Serbia using Machine Learning Systems
DOI:https://doi.org/10.6025/jdp/2020/10/4/118-124
Full_Text   PDF 369 KB   Download:   155  times
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