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class NeuralNetwork: | |
def __init__(self, x, y): | |
self.input = x | |
self.weights1 = np.random.rand(self.input.shape[1],4) | |
self.weights2 = np.random.rand(4,1) | |
self.y = y | |
self.output = np.zeros(self.y.shape) | |
def feedforward(self): | |
self.layer1 = sigmoid(np.dot(self.input, self.weights1)) | |
self.output = sigmoid(np.dot(self.layer1, self.weights2)) | |
def backprop(self): | |
# application of the chain rule to find derivative of the loss function with respect to weights2 and weights1 | |
d_weights2 = np.dot(self.layer1.T, (2*(self.y - self.output) * sigmoid_derivative(self.output))) | |
d_weights1 = np.dot(self.input.T, (np.dot(2*(self.y - self.output) * sigmoid_derivative(self.output), self.weights2.T) * sigmoid_derivative(self.layer1))) | |
# update the weights with the derivative (slope) of the loss function | |
self.weights1 += d_weights1 | |
self.weights2 += d_weights2 |
I want the paython code of neurel network where: input layer part is composed of two neurons, . The hidden layer is constituted of two under-layers of 20 and 10 neurons for the first under-layer and the second under-layer respectively. The output layer is composed of 5 neurons.
This system will only work for if network layers = 2. No more, that is why your tests with more layers fail. the backpropagation function only modifies weights from the second to last layer and last layer.
Does anyone know how to use more than one layer. I have most of it figured out, but I am stuck on the backpropagation mostly
Does anyone know how to use more than one layer. I have most of it figured out, but I am stuck on the backpropagation mostly
Sorta figured it out, but how do I back propagate with variable sizes?
Could you tell how to add inputs?
Hi Mustafa, Here is the code that I wrote which lets you give inputs, train the network and keep track of the loss. Best, Madhuri
#!/usr/bin/env python3 # -*- coding: utf-8 -*- """ Created on Tuesday Oct 2, 2018 @author: Madhuri Suthar, PhD Candidate in Electrical and Computer Engineering, UCLA """ # Imports import numpy as np # Each row is a training example, each column is a feature [X1, X2, X3] X=np.array(([0,0,1],[0,1,1],[1,0,1],[1,1,1]), dtype=float) y=np.array(([0],[1],[1],[0]), dtype=float) # Define useful functions # Activation function def sigmoid(t): return 1/(1+np.exp(-t)) # Derivative of sigmoid def sigmoid_derivative(p): return p * (1 - p) # Class definition class NeuralNetwork: def __init__(self, x,y): self.input = x self.weights1= np.random.rand(self.input.shape[1],4) # considering we have 4 nodes in the hidden layer self.weights2 = np.random.rand(4,1) self.y = y self.output = np. zeros(y.shape) def feedforward(self): self.layer1 = sigmoid(np.dot(self.input, self.weights1)) self.layer2 = sigmoid(np.dot(self.layer1, self.weights2)) return self.layer2 def backprop(self): d_weights2 = np.dot(self.layer1.T, 2*(self.y -self.output)*sigmoid_derivative(self.output)) d_weights1 = np.dot(self.input.T, np.dot(2*(self.y -self.output)*sigmoid_derivative(self.output), self.weights2.T)*sigmoid_derivative(self.layer1)) self.weights1 += d_weights1 self.weights2 += d_weights2 def train(self, X, y): self.output = self.feedforward() self.backprop() NN = NeuralNetwork(X,y) for i in range(1500): # trains the NN 1,000 times if i % 100 ==0: print ("for iteration # " + str(i) + "\n") print ("Input : \n" + str(X)) print ("Actual Output: \n" + str(y)) print ("Predicted Output: \n" + str(NN.feedforward())) print ("Loss: \n" + str(np.mean(np.square(y - NN.feedforward())))) # mean sum squared loss print ("\n") NN.train(X, y)
Hi have an error after running this code it says "unsupported operand type(s) for -: 'float' and 'NoneType' " how could I solve it
Have the same issue.
Any tips, guys?
It seems "NN.feedforward()" is none!
Thanks in adv.
I am also stuck here, did you figure it out?