• Corpus ID: 250215899

Predicting Eshopping Data Using Deep Learning

@inproceedings{Anupriya2016PredictingED,
  title={Predicting Eshopping Data Using Deep Learning},
  author={K. Anupriya and Chinasamy Kanimozhi},
  year={2016}
}
: Internet shopping transactions have recently raised big concerns. Problem on making businesses through internet, causes loses as a fact of life for all merchants, who accept online payment mode transaction. It is impossible for the retailers to check whether the customer is the genuine or not. Using Machine learning, a method of data analytics that iteratively learn from data and allows computers to find hidden insights without being any explicit programmed. Algorithm initiates by extracting… 
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