Example #1
0
def train(train_x, train_y, layers):
    nn = NeuralNetwork(layer_dims=layers,
                       keep_prop=0.8,
                       weight_factor=len(layers) > 2 and 'deep' or 0.01)

    def print_cost(iteration_num, cost):
        if iteration_num % 100 == 0:
            print("Cost after iteration %d: %f" % (iteration_num, cost))

    nn.train(train_x, train_y, num_iterations=2500, callback=print_cost)
    return nn
Example #2
0
def train(train_x, train_y, test_x, test_y):
    def print_cost(iteration_num, cost):
        if iteration_num % 100 == 0:
            print("Cost after iteration %d: %f" % (iteration_num, cost))

    nn = NeuralNetwork(layer_dims=[20, 3, 1],
                       num_iterations=3000,
                       weight_factors='deep',
                       callback=print_cost)
    nn.train(train_x, train_y)
    p = nn.predict(train_x)
    print('Accuracy: %f' % np.mean(p == train_y))
    p = nn.predict(test_x)
    print('Accuracy: %f' % np.mean(p == test_y))