Stock Chart Pattern recognition with Deep Learning

08/01/2018
by   Marc Velay, et al.
0

This study evaluates the performances of CNN and LSTM for recognizing common charts patterns in a stock historical data. It presents two common patterns, the method used to build the training set, the neural networks architectures and the accuracies obtained.

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