CS231n assignment1 Q4 Two-Layer Neural Network

网络设置:
两层的神经网络,第一层激活函数为Relu,第二层用softmax输出分类概率。使用随机梯度下降来训练。

neural_net.py

from __future__ import print_function

import numpy as np
import matplotlib.pyplot as plt

class TwoLayerNet(object):
  """
  A two-layer fully-connected neural network. The net has an input dimension of
  N, a hidden layer dimension of H, and performs classification over C classes.
  We train the network with a softmax loss function and L2 regularization on the
  weight matrices. The network uses a ReLU nonlinearity after the first fully
  connected layer.

  In other words, the network has the following architecture:

  input - fully connected layer - ReLU - fully connected layer - softmax

  The outputs of the second fully-connected layer are the scores for each class.
  """

  def __init__(self, input_size, hidden_size, output_size, std=1e-4):
    """
    Initialize the model. Weights are initialized to small random values and
    biases are initialized to zero. Weights and biases are stored in the
    variable self.params, which is a dictionary with the following keys:

    W1: First layer weights; has shape (D, H)
    b1: First layer biases; has shape (H,)
    W2: Second layer weights; has shape (H, C)
    b2: Second layer biases; has shape (C,)

    Inputs:
    - input_size: The dimension D of the input data.
    - hidden_size: The number of neurons H in the hidden layer.
    - output_size: The number of classes C.
    """
    self.params = {}
    self.params['W1'] = std * np.random.randn(input_size, hidden_size)
    self.params['b1'] = np.zeros(hidden_size)
    self.params['W2'] = std * np.random.randn(hidden_size, output_size)
    self.params['b2'] = np.zeros(output_size)

  def loss(self, X, y=None, reg=0.0):
    """
    Compute the loss and gradients for a two layer fully connected neural
    network.

    Inputs:
    - X: Input data of shape (N, D). Each X[i] is a training sample.
    - y: Vector of training labels. y[i] is the label for X[i], and each y[i] is
      an integer in the range 0 <= y[i] < C. This parameter is optional; if it
      is not passed then we only return scores, and if it is passed then we
      instead return the loss and gradients.
    - reg: Regularization strength.

    Returns:
    If y is None, return a matrix scores of shape (N, C) where scores[i, c] is
    the score for class c on input X[i].

    If y is not None, instead return a tuple of:
    - loss: Loss (data loss and regularization loss) for this batch of training
      samples.
    - grads: Dictionary mapping parameter names to gradients of those parameters
      with respect to the loss function; has the same keys as self.params.
    """
    # Unpack variables from the params dictionary
    W1, b1 = self.params['W1'], self.params['b1']
    W2, b2 = self.params['W2'], self.params['b2']
    N, D = X.shape

    # Compute the forward pass
    scores = None
    #############################################################################
    # TODO: Perform the forward pass, computing the class scores for the input. #
    # Store the result in the scores variable, which should be an array of      #
    # shape (N, C).                                                             #
    #############################################################################
    z1 = X.dot(W1) + b1
    h1 = np.maximum(0, z1) 
    #两个部分,分别是线性部分:计算wx+b,然后非线性部分:ReLu
    scores=np.dot(h1,W2)+b2  #第二层
    #X(N,D)W1(D,H)b1(H,1) h1 (N,H) W2(H,C)b1(C,1)
    #############################################################################
    #                              END OF YOUR CODE                             #
    #############################################################################
    
    # If the targets are not given then jump out, we're done
    if y is None:
      return scores

    # Compute the loss
    loss = None
    #############################################################################
    # TODO: Finish the forward pass, and compute the loss. This should include  #
    # both the data loss and L2 regularization for W1 and W2. Store the result  #
    # in the variable loss, which should be a scalar. Use the Softmax           #
    # classifier loss.                                                          #
    #############################################################################
    scores_max = np.max(scores, axis=1, keepdims=True)  # (N,1)
    # Compute the class probabilities
    exp_scores = np.exp(scores - scores_max)  # (N,C)
    probs = exp_scores / np.sum(exp_scores, axis=1, keepdims=True)  # (N,C)
    # cross-entropy loss and L2-regularization
    correct_logprobs = -np.log(probs[range(N), y])  # (N,1)
    data_loss = np.sum(correct_logprobs) / N
    reg_loss = 0.5 * reg * np.sum(W1 * W1) + 0.5 * reg * np.sum(W2 * W2)
    loss = data_loss + reg_loss     #计算出误差
    #因为loss使用的是softmax
    #############################################################################
    #                              END OF YOUR CODE                             #
    #############################################################################

    # Backward pass: compute gradients
    grads = {}
    #############################################################################
    # TODO: Compute the backward pass, computing the derivatives of the weights #
    # and biases. Store the results in the grads dictionary. For example,       #
    # grads['W1'] should store the gradient on W1, and be a matrix of same size #
    #############################################################################
    dscores = probs  # (N,C) 
    dscores[range(N), y] -= 1  #  计算分值的梯度
    dscores /= N
    # W2,b2的梯度
    grads['W2'] = np.dot(h1.T, dscores)
    grads['b2'] = np.sum(dscores, axis=0)
    # 反向传播中第二个隐藏层
    dhidden = np.dot(dscores, W2.T)  # (N,H)
    # 激活函数ReLu的梯度
    dhidden[h1 <= 0] = 0
    # W1,b1的梯度
    grads['W1'] = np.dot(X.T, dhidden)
    grads['b1'] = np.sum(dhidden, axis=0)
    # Add the regularization gradient contribution
    grads['W2'] += reg * W2
    grads['W1'] += reg * W1
    #############################################################################
    #                              END OF YOUR CODE                             #
    #############################################################################

    return loss, grads

  def train(self, X, y, X_val, y_val,
            learning_rate=1e-3, learning_rate_decay=0.95,
            reg=5e-6, num_iters=100,
            batch_size=200, verbose=False):
    """
    Train this neural network using stochastic gradient descent.

    Inputs:
    - X: A numpy array of shape (N, D) giving training data.
    - y: A numpy array f shape (N,) giving training labels; y[i] = c means that
      X[i] has label c, where 0 <= c < C.
    - X_val: A numpy array of shape (N_val, D) giving validation data.
    - y_val: A numpy array of shape (N_val,) giving validation labels.
    - learning_rate: Scalar giving learning rate for optimization.
    - learning_rate_decay: Scalar giving factor used to decay the learning rate
      after each epoch.
    - reg: Scalar giving regularization strength.
    - num_iters: Number of steps to take when optimizing.
    - batch_size: Number of training examples to use per step.
    - verbose: boolean; if true print progress during optimization.
    """
    num_train = X.shape[0]
    iterations_per_epoch = max(num_train / batch_size, 1)

    # Use SGD to optimize the parameters in self.model
    loss_history = []
    train_acc_history = []
    val_acc_history = []

    for it in range(num_iters):
      X_batch = None
      y_batch = None

      #########################################################################
      # TODO: Create a random minibatch of training data and labels, storing  #
      # them in X_batch and y_batch respectively.                             #
      #########################################################################
      #取一个batch的数据
      sample_indices = np.random.choice(np.arange(num_train),batch_size,replace = True)
      X_batch = X[sample_indices,:]
      y_batch = y[sample_indices]
      #########################################################################
      #                             END OF YOUR CODE                          #
      #########################################################################

      # Compute loss and gradients using the current minibatch
      loss, grads = self.loss(X_batch, y=y_batch, reg=reg)
      loss_history.append(loss)

      #########################################################################
      # TODO: Use the gradients in the grads dictionary to update the         #
      # parameters of the network (stored in the dictionary self.params)      #
      # using stochastic gradient descent. You'll need to use the gradients   #
      # stored in the grads dictionary defined above.                         #
      #########################################################################
      self.params['W1'] += -learning_rate * grads['W1']
      self.params['b1'] += -learning_rate * grads['b1']
      self.params['W2'] += -learning_rate * grads['W2']
      self.params['b2'] += -learning_rate * grads['b2']
      #########################################################################
      #                             END OF YOUR CODE                          #
      #########################################################################

      if verbose and it % 100 == 0:
        print('iteration %d / %d: loss %f' % (it, num_iters, loss))

      # Every epoch, check train and val accuracy and decay learning rate.
      if it % iterations_per_epoch == 0:
        # Check accuracy
        train_acc = (self.predict(X_batch) == y_batch).mean()
        val_acc = (self.predict(X_val) == y_val).mean()
        train_acc_history.append(train_acc)
        val_acc_history.append(val_acc)

        # Decay learning rate
        learning_rate *= learning_rate_decay

    return {
      'loss_history': loss_history,
      'train_acc_history': train_acc_history,
      'val_acc_history': val_acc_history,
    }

  def predict(self, X):
    """
    Use the trained weights of this two-layer network to predict labels for
    data points. For each data point we predict scores for each of the C
    classes, and assign each data point to the class with the highest score.

    Inputs:
    - X: A numpy array of shape (N, D) giving N D-dimensional data points to
      classify.

    Returns:
    - y_pred: A numpy array of shape (N,) giving predicted labels for each of
      the elements of X. For all i, y_pred[i] = c means that X[i] is predicted
      to have class c, where 0 <= c < C.
    """
    y_pred = None

    ###########################################################################
    # TODO: Implement this function; it should be VERY simple!                #
    ###########################################################################
    #使用最终的参数来预测
    h1 = np.maximum(0,(np.dot(X, self.params['W1']) + self.params['b1']))
    scores = np.dot(h1, self.params['W2']) + self.params['b2']
    y_pred = np.argmax(scores, axis=1)
    ###########################################################################
    #                              END OF YOUR CODE                           #
    ###########################################################################

    return y_pred

超参数的优化:

best_net = None # store the best model into this 

#################################################################################
# TODO: Tune hyperparameters using the validation set. Store your best trained  #
# model in best_net.                                                            #
#                                                                               #
# To help debug your network, it may help to use visualizations similar to the  #
# ones we used above; these visualizations will have significant qualitative    #
# differences from the ones we saw above for the poorly tuned network.          #
#                                                                               #
# Tweaking hyperparameters by hand can be fun, but you might find it useful to  #
# write code to sweep through possible combinations of hyperparameters          #
# automatically like we did on the previous exercises.                          #
#################################################################################
best_val = -1
best_stats = None
learning_rates = [1e-2,1e-3]
regularization_strengths = [0.4,0.5,0.6]
results = {}
iters = 2000
for lr in learning_rates:
    for rs in regularization_strengths:
        net = TwoLayerNet(input_size,hidden_size,num_classes)
        stats = net.train(X_train,y_train,X_val,y_val,num_iters = iters,batch_size = 200,learning_rate = lr,learning_rate_decay = 0.95,reg = rs)
        y_train_pred = net.predict(X_train)
        acc_train = np.mean(y_train == y_train_pred)
        y_val_pred = net.predict(X_val)
        acc_val = np.mean(y_val == y_val_pred)
        results[(lr,rs)] = (acc_train,acc_val)
        if best_val < acc_val:
            best_stats = stats
            best_val = acc_val
            best_net = net
for (lr,reg) in sorted(results):
    (train_accuracy,val_accuracy) = results[(lr,reg)]
    print('lr:%f,reg:%f,train_accuracy:%f,val_accuracy:%f' %(lr,reg,train_accuracy,val_accuracy))
print('best validation accuracy achieved during cross-validation:%f' %best_val)
#################################################################################
#                               END OF YOUR CODE                                #
#################################################################################
原文地址:https://www.cnblogs.com/bernieloveslife/p/10179501.html