Example #1
0
 def forward_prop(self, x):
     if len(x.shape) != 2 or x.shape[1] != self.n_inputs:
         raise ValueError('Incorrect input shape ' + str(x.shape) +
                          ' given!')
     else:
         x = np.append(-np.ones((len(x), 1)), x, axis=1)
         self.a1 = x
         self.ins2 = np.matmul(self.a1, self.w1)
         self.a2 = sig(self.ins2)
         self.a2 = np.append(-np.ones((len(self.a2), 1)), self.a2, axis=1)
         self.ins3 = np.matmul(self.a2, self.w2)
         self.a3 = sig(self.ins3)
     return self.a3
Example #2
0
    def Accuracy(self, X_test, Y_test):
        # No of instances
        N = Y_test.shape[0]
        # Adding bias 1s
        X_test = np.row_stack((np.ones((1, N)), X_test))
        # Z will store output of every layer
        Z = X_test
        for k in range(self.n_layers):
            # weight for kth layer
            w = self.weights[k]

            zk = w.dot(Z)
            # For last layer there is no activation function
            # Activation function: Sigmoid
            zk = sig(zk)
            if k != self.n_layers - 1:
                # Adding bias term
                zk = np.row_stack((np.ones((1, N)), zk))

            Z = zk

        Z = Z.T
        count = 0
        for i in range(Z.shape[0]):
            if np.argmax(Y_test[i]) == np.argmax(Z[i]):
                count += 1

        return count * 100 / N
Example #3
0
def dsig(x):
    return sig(x) * (1 - sig(x))
Example #4
0
    def train_network(self,
                      X_train,
                      Y_train,
                      X_test,
                      Y_test,
                      mini_batch_size,
                      epochs,
                      learning_rate,
                      dropout_rate=0):
        N = len(Y_train)

        # Data shuffling
        # r = random.sample(range(0, N), N)
        # X_train = X_train[:,r]
        # Y_train = Y_train[r]

        # For plotting graph
        self.X_Graph = []
        self.Y_train_Graph = []
        self.Y_test_Graph = []
        # Running epochs
        for i in range(epochs):
            # For each minibatch
            for j in range(0, N, mini_batch_size):
                N_mini = min(j + mini_batch_size, N) - j
                X_mini = X_train[:, j:j + mini_batch_size]
                # Adding bias term
                X_mini = np.row_stack((np.ones((1, N_mini)), X_mini))
                Y_mini = Y_train[j:j + mini_batch_size]

                # Forward Pass
                # Z will store input, and output of every layer
                Z = [X_mini]
                for k in range(self.n_layers):
                    # weight for kth layer
                    w = self.weights[k]

                    if dropout_rate > 0 and dropout_rate < 1:
                        # Bias term is not effected
                        Z[k][1:, ] *= np.tile(
                            np.random.binomial(1, 1 - dropout_rate,
                                               (Z[k].shape[0] - 1, 1)),
                            mini_batch_size)

                    # Output of kth layer Z[k+1] = w*Z[k]
                    zk = w.dot(Z[k])
                    # For last layer there is no activation function
                    # Activation function: Sigmoid
                    zk = sig(zk)
                    if k != self.n_layers - 1:
                        # # Activation function: Sigmoid
                        # zk = sig(zk)
                        # Adding bias term
                        zk = np.row_stack((np.ones((1, N_mini)), zk))

                    Z.append(zk)

                # Backward Pass
                delta_weights = []
                for k in range(self.n_layers):
                    delta_weights.append(
                        np.zeros((self.architecture[k] + 1,
                                  self.architecture[k + 1])).T)

                # For last layer as it don't has activation function
                delta_z = (Z[self.n_layers] -
                           Y_mini.T) * (Z[self.n_layers] *
                                        (1 - Z[self.n_layers]))
                # delta_w = (output - y)*Z(K-1)
                # delta_weights[self.n_layers-1] = delta_z.dot(Z[self.n_layers-1].T)/N_mini
                delta_weights[self.n_layers - 1] = (Z[self.n_layers - 1].dot(
                    delta_z.T)).T

                for k in range(self.n_layers - 2, -1, -1):
                    delta_z = Z[k + 1] * (
                        1 - Z[k + 1]) * self.weights[k + 1].T.dot(delta_z)
                    # Removing bias term
                    delta_z = delta_z[1:, :]

                    # delta_weights[k] = delta_z.dot(Z[k].T)/N_mini
                    delta_weights[k] = delta_z.dot(Z[k].T)
                    # print(delta_weights[k])

                for k in range(self.n_layers):
                    print(np.max(delta_weights[k]))
                    self.weights[
                        k] = self.weights[k] - learning_rate * delta_weights[k]

            training_Accuracy = self.Accuracy(X_train, Y_train)
            testing_Accuracy = self.Accuracy(X_test, Y_test)
            print(
                i + 1, "\tTraining " + str(training_Accuracy) + "\tTesting " +
                str(testing_Accuracy))
            self.X_Graph.append(i + 1)
            self.Y_train_Graph.append(training_Accuracy)
            self.Y_test_Graph.append(testing_Accuracy)
Example #5
0
def sigmoid(x, derivative=False):
    if derivative:
        return x * (1 - x)
    return sig(x)
def sigmoid(arr):
    return sig(arr)