Multi-Perceptron-NeuralNetwork

4.0
(1)

Multi-Perceptron-NeuralNetwor is a Machine Learning that implemented multi-layer perceptrons neural network (MLP)and Back Propagation Neural Network (BPN), it designed unlimited hidden layers to do the training tasks and can be used in products recommendation, user behavior analysis, data mining and data analysis.

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Some features are not easily accessible

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