模型优化学习笔记—对比各种梯度下降算法

发布于:2024-08-08 ⋅ 阅读:(202) ⋅ 点赞:(0)
import math

import numpy as np
from opt_utils import *
import matplotlib.pyplot as plt


# 标准梯度下降
def update_parameters_with_gd(parameters, grads, learning_rate):
    L = len(parameters) // 2
    for l in range(1, L + 1):
        parameters[f"W{l}"] = parameters[f"W{l}"] - learning_rate * grads[f"dW{l}"]
        parameters[f"b{l}"] = parameters[f"b{l}"] - learning_rate * grads[f"db{l}"]
    return parameters


# mini-batch梯度下降
def random_mini_batches(X, Y, mini_batch_size=64, seed=0):
    np.random.seed(seed)
    m = X.shape[1]
    mini_batches = []
    permutation = list(np.random.permutation(m))
    # 洗牌
    shuffled_X = X[:, permutation]
    shuffled_Y = Y[:, permutation].reshape((1, m))
    # 分割
    num_complete_minibatches = math.floor(m / mini_batch_size)
    for k in range(0, num_complete_minibatches):
        mini_batch_X = shuffled_X[:, k * mini_batch_size:(k + 1) * mini_batch_size]
        mini_batch_Y = shuffled_Y[:, k * mini_batch_size:(k + 1) * mini_batch_size]
        mini_batch = (mini_batch_X, mini_batch_Y)
        mini_batches.append(mini_batch)
    if m % mini_batch_size != 0:
        mini_batch_X = shuffled_X[:, num_complete_minibatches * mini_batch_size:]
        mini_batch_Y = shuffled_Y[:, num_complete_minibatches * mini_batch_size:]
        mini_batch = (mini_batch_X, mini_batch_Y)
        mini_batches.append(mini_batch)
    return mini_batches


# 动量梯度下降
def initialize_velocity(parameters):
    L = len(parameters) // 2
    v = {}
    for l in range(1, L + 1):
        v[f"dW{l}"] = np.zeros_like(parameters[f"W{l}"])
        v[f"db{l}"] = np.zeros_like(parameters[f"b{l}"])
    return v


def update_parameters_with_momentum(parameters, grads, v, beta, learning_rate):
    L = len(parameters) // 2

    for l in range(L):
        v["dW" + str(l + 1)] = beta * v["dW" + str(l + 1)] + (1 - beta) * grads['dW' + str(l + 1)]
        v["db" + str(l + 1)] = beta * v["db" + str(l + 1)] + (1 - beta) * grads['db' + str(l + 1)]

        parameters["W" + str(l + 1)] = parameters["W" + str(l + 1)] - learning_rate * v["dW" + str(l + 1)]
        parameters["b" + str(l + 1)] = parameters["b" + str(l + 1)] - learning_rate * v["db" + str(l + 1)]

    return parameters, v


# Adam梯度下降
def initialize_adam(parameters):
    L = len(parameters) // 2
    v = {}
    s = {}

    for l in range(L):
        v["dW" + str(l + 1)] = np.zeros_like(parameters["W" + str(l + 1)])
        v["db" + str(l + 1)] = np.zeros_like(parameters["b" + str(l + 1)])

        s["dW" + str(l + 1)] = np.zeros_like(parameters["W" + str(l + 1)])
        s["db" + str(l + 1)] = np.zeros_like(parameters["b" + str(l + 1)])

    return v, s


def update_parameters_with_adam(parameters, grads, v, s, t, learning_rate=0.01,
                                beta1=0.9, beta2=0.999, epsilon=1e-8):
    L = len(parameters) // 2
    v_corrected = {}
    s_corrected = {}

    for l in range(L):
        v["dW" + str(l + 1)] = beta1 * v["dW" + str(l + 1)] + (1 - beta1) * grads['dW' + str(l + 1)]
        v["db" + str(l + 1)] = beta1 * v["db" + str(l + 1)] + (1 - beta1) * grads['db' + str(l + 1)]

        v_corrected["dW" + str(l + 1)] = v["dW" + str(l + 1)] / (1 - np.power(beta1, t))
        v_corrected["db" + str(l + 1)] = v["db" + str(l + 1)] / (1 - np.power(beta1, t))

        s["dW" + str(l + 1)] = beta2 * s["dW" + str(l + 1)] + (1 - beta2) * np.power(grads['dW' + str(l + 1)], 2)
        s["db" + str(l + 1)] = beta2 * s["db" + str(l + 1)] + (1 - beta2) * np.power(grads['db' + str(l + 1)], 2)

        s_corrected["dW" + str(l + 1)] = s["dW" + str(l + 1)] / (1 - np.power(beta2, t))
        s_corrected["db" + str(l + 1)] = s["db" + str(l + 1)] / (1 - np.power(beta2, t))

        parameters["W" + str(l + 1)] = parameters["W" + str(l + 1)] - learning_rate * v_corrected[
            "dW" + str(l + 1)] / np.sqrt(s_corrected["dW" + str(l + 1)] + epsilon)
        parameters["b" + str(l + 1)] = parameters["b" + str(l + 1)] - learning_rate * v_corrected[
            "db" + str(l + 1)] / np.sqrt(s_corrected["db" + str(l + 1)] + epsilon)

    return parameters, v, s


def model(X, Y, layers_dims, optimizer, learning_rate=0.0007, mini_batch_size=64, beta=0.9, beta1=0.9, beta2=0.999,
          epsilon=1e-8, num_epochs=10000, print_cost=True):
    L = len(layers_dims)
    costs = []
    t = 0
    seed = 10
    parameters = initialize_parameters(layers_dims)
    if optimizer == "gd":
        pass
    elif optimizer == "momentum":
        v = initialize_velocity(parameters)
    elif optimizer == "adam":
        v, s = initialize_adam(parameters)

    # 一个epoch 就是遍历整个数据集一遍,一个epoch有多个mini-batch
    for i in range(num_epochs):
        seed = seed + 1
        minibatches = random_mini_batches(X, Y, mini_batch_size, seed)
        for minibatch in minibatches:
            (minibatch_X, minibatch_Y) = minibatch
            a3, caches = forward_propagation(minibatch_X, parameters)
            cost = compute_cost(a3, minibatch_Y)
            grads = backward_propagation(minibatch_X, minibatch_Y, caches)
            if optimizer == "gd":
                parameters = update_parameters_with_gd(parameters, grads, learning_rate)
            elif optimizer == "momentum":
                parameters, v = update_parameters_with_momentum(parameters, grads, v, beta, learning_rate)
            elif optimizer == "adam":
                t = t + 1
                parameters, v, s = update_parameters_with_adam(parameters, grads, v, s, t, learning_rate, beta1, beta2,
                                                               epsilon)
        if print_cost and i % 1000 == 0:
            print("Cost after epoch %i: %f" % (i, cost))
        if print_cost and i % 100 == 0:
            costs.append(cost)
    return parameters, costs


def training1(train_X, train_Y, layers_dims):
    # 标准mini-batch梯度下降
    parameters, costs = model(train_X, train_Y, layers_dims, optimizer="gd")
    p = predict_dec(parameters, train_X)
    print("Accuracy: " + str(np.mean((p[0, :] == train_Y[0, :]))))
    plt.subplot(131)
    plt.plot(costs)
    plt.ylabel('cost')
    plt.xlabel('epochs (per 100)')
    plt.title("Learning rate = " + str(0.0007))
    # plot_decision_boundary(lambda x: predict_dec(parameters, x.T), train_X, train_Y.ravel())


def training2(train_X, train_Y, layers_dims):
    # mini-batch动量梯度下降

    parameters, costs = model(train_X, train_Y, layers_dims, optimizer="momentum")
    p = predict_dec(parameters, train_X)
    print("Accuracy: " + str(np.mean((p[0, :] == train_Y[0, :]))))
    plt.subplot(132)
    plt.plot(costs)
    plt.ylabel('cost')
    plt.xlabel('epochs (per 100)')

    # plot_decision_boundary(lambda x: predict_dec(parameters, x.T), train_X, train_Y.ravel())


def training3(train_X, train_Y, layers_dims):
    # mini-batch Adam梯度下降
    parameters, costs = model(train_X, train_Y, layers_dims, optimizer="adam")
    p = predict_dec(parameters, train_X)
    print("Accuracy: " + str(np.mean((p[0, :] == train_Y[0, :]))))
    plt.subplot(133)
    plt.plot(costs)
    plt.ylabel('cost')
    plt.xlabel('epochs (per 100)')
    # plot_decision_boundary(lambda x: predict_dec(parameters, x.T), train_X, train_Y.ravel())


if __name__ == "__main__":
    train_X, train_Y = load_dataset()
    layers_dims = [train_X.shape[0], 5, 2, 1]
    print("mini batch with gd:")
    training1(train_X, train_Y, layers_dims)
    print("mini batch with momentum:")
    training2(train_X, train_Y, layers_dims)
    print("mini batch with adam:")
    training3(train_X, train_Y, layers_dims)
    plt.show()

util:

import numpy as np
import matplotlib.pyplot as plt
import h5py
import scipy.io
import sklearn
import sklearn.datasets

def sigmoid(x):
    """
    Compute the sigmoid of x

    Arguments:
    x -- A scalar or numpy array of any size.

    Return:
    s -- sigmoid(x)
    """
    s = 1/(1+np.exp(-x))
    return s

def relu(x):
    """
    Compute the relu of x

    Arguments:
    x -- A scalar or numpy array of any size.

    Return:
    s -- relu(x)
    """
    s = np.maximum(0,x)
    
    return s

def load_params_and_grads(seed=1):
    np.random.seed(seed)
    W1 = np.random.randn(2,3)
    b1 = np.random.randn(2,1)
    W2 = np.random.randn(3,3)
    b2 = np.random.randn(3,1)

    dW1 = np.random.randn(2,3)
    db1 = np.random.randn(2,1)
    dW2 = np.random.randn(3,3)
    db2 = np.random.randn(3,1)
    
    return W1, b1, W2, b2, dW1, db1, dW2, db2


def initialize_parameters(layer_dims):
    """
    Arguments:
    layer_dims -- python array (list) containing the dimensions of each layer in our network
    
    Returns:
    parameters -- python dictionary containing your parameters "W1", "b1", ..., "WL", "bL":
                    W1 -- weight matrix of shape (layer_dims[l], layer_dims[l-1])
                    b1 -- bias vector of shape (layer_dims[l], 1)
                    Wl -- weight matrix of shape (layer_dims[l-1], layer_dims[l])
                    bl -- bias vector of shape (1, layer_dims[l])
                    
    Tips:
    - For example: the layer_dims for the "Planar Data classification model" would have been [2,2,1]. 
    This means W1's shape was (2,2), b1 was (1,2), W2 was (2,1) and b2 was (1,1). Now you have to generalize it!
    - In the for loop, use parameters['W' + str(l)] to access Wl, where l is the iterative integer.
    """
    
    np.random.seed(3)
    parameters = {}
    L = len(layer_dims) # number of layers in the network

    for l in range(1, L):
        parameters['W' + str(l)] = np.random.randn(layer_dims[l], layer_dims[l-1])*  np.sqrt(2 / layer_dims[l-1])
        parameters['b' + str(l)] = np.zeros((layer_dims[l], 1))
        
        assert(parameters['W' + str(l)].shape == layer_dims[l], layer_dims[l-1])
        assert(parameters['W' + str(l)].shape == layer_dims[l], 1)
        
    return parameters


def compute_cost(a3, Y):
    
    """
    Implement the cost function
    
    Arguments:
    a3 -- post-activation, output of forward propagation
    Y -- "true" labels vector, same shape as a3
    
    Returns:
    cost - value of the cost function
    """
    m = Y.shape[1]
    
    logprobs = np.multiply(-np.log(a3),Y) + np.multiply(-np.log(1 - a3), 1 - Y)
    cost = 1./m * np.sum(logprobs)
    
    return cost

def forward_propagation(X, parameters):
    """
    Implements the forward propagation (and computes the loss) presented in Figure 2.
    
    Arguments:
    X -- input dataset, of shape (input size, number of examples)
    parameters -- python dictionary containing your parameters "W1", "b1", "W2", "b2", "W3", "b3":
                    W1 -- weight matrix of shape ()
                    b1 -- bias vector of shape ()
                    W2 -- weight matrix of shape ()
                    b2 -- bias vector of shape ()
                    W3 -- weight matrix of shape ()
                    b3 -- bias vector of shape ()
    
    Returns:
    loss -- the loss function (vanilla logistic loss)
    """
    
    # retrieve parameters
    W1 = parameters["W1"]
    b1 = parameters["b1"]
    W2 = parameters["W2"]
    b2 = parameters["b2"]
    W3 = parameters["W3"]
    b3 = parameters["b3"]
    
    # LINEAR -> RELU -> LINEAR -> RELU -> LINEAR -> SIGMOID
    z1 = np.dot(W1, X) + b1
    a1 = relu(z1)
    z2 = np.dot(W2, a1) + b2
    a2 = relu(z2)
    z3 = np.dot(W3, a2) + b3
    a3 = sigmoid(z3)
    
    cache = (z1, a1, W1, b1, z2, a2, W2, b2, z3, a3, W3, b3)
    
    return a3, cache

def backward_propagation(X, Y, cache):
    """
    Implement the backward propagation presented in figure 2.
    
    Arguments:
    X -- input dataset, of shape (input size, number of examples)
    Y -- true "label" vector (containing 0 if cat, 1 if non-cat)
    cache -- cache output from forward_propagation()
    
    Returns:
    gradients -- A dictionary with the gradients with respect to each parameter, activation and pre-activation variables
    """
    m = X.shape[1]
    (z1, a1, W1, b1, z2, a2, W2, b2, z3, a3, W3, b3) = cache
    
    dz3 = 1./m * (a3 - Y)
    dW3 = np.dot(dz3, a2.T)
    db3 = np.sum(dz3, axis=1, keepdims = True)
    
    da2 = np.dot(W3.T, dz3)
    dz2 = np.multiply(da2, np.int64(a2 > 0))
    dW2 = np.dot(dz2, a1.T)
    db2 = np.sum(dz2, axis=1, keepdims = True)
    
    da1 = np.dot(W2.T, dz2)
    dz1 = np.multiply(da1, np.int64(a1 > 0))
    dW1 = np.dot(dz1, X.T)
    db1 = np.sum(dz1, axis=1, keepdims = True)
    
    gradients = {"dz3": dz3, "dW3": dW3, "db3": db3,
                 "da2": da2, "dz2": dz2, "dW2": dW2, "db2": db2,
                 "da1": da1, "dz1": dz1, "dW1": dW1, "db1": db1}
    
    return gradients

def predict(X, y, parameters):
    """
    This function is used to predict the results of a  n-layer neural network.
    
    Arguments:
    X -- data set of examples you would like to label
    parameters -- parameters of the trained model
    
    Returns:
    p -- predictions for the given dataset X
    """
    
    m = X.shape[1]
    p = np.zeros((1,m), dtype = np.int)
    
    # Forward propagation
    a3, caches = forward_propagation(X, parameters)
    
    # convert probas to 0/1 predictions
    for i in range(0, a3.shape[1]):
        if a3[0,i] > 0.5:
            p[0,i] = 1
        else:
            p[0,i] = 0

    # print results

    #print ("predictions: " + str(p[0,:]))
    #print ("true labels: " + str(y[0,:]))
    print("Accuracy: "  + str(np.mean((p[0,:] == y[0,:]))))
    
    return p

def load_2D_dataset():
    data = scipy.io.loadmat('datasets/data.mat')
    train_X = data['X'].T
    train_Y = data['y'].T
    test_X = data['Xval'].T
    test_Y = data['yval'].T

    plt.scatter(train_X[0, :], train_X[1, :], c=train_Y, s=40, cmap=plt.cm.Spectral);
    
    return train_X, train_Y, test_X, test_Y

def plot_decision_boundary(model, X, y):
    # Set min and max values and give it some padding
    x_min, x_max = X[0, :].min() - 1, X[0, :].max() + 1
    y_min, y_max = X[1, :].min() - 1, X[1, :].max() + 1
    h = 0.01
    # Generate a grid of points with distance h between them
    xx, yy = np.meshgrid(np.arange(x_min, x_max, h), np.arange(y_min, y_max, h))
    # Predict the function value for the whole grid
    Z = model(np.c_[xx.ravel(), yy.ravel()])
    Z = Z.reshape(xx.shape)
    # Plot the contour and training examples
    plt.contourf(xx, yy, Z, cmap=plt.cm.Spectral)
    plt.ylabel('x2')
    plt.xlabel('x1')
    plt.scatter(X[0, :], X[1, :], c=y, cmap=plt.cm.Spectral)
    plt.show()
    
def predict_dec(parameters, X):
    """
    Used for plotting decision boundary.
    
    Arguments:
    parameters -- python dictionary containing your parameters 
    X -- input data of size (m, K)
    
    Returns
    predictions -- vector of predictions of our model (red: 0 / blue: 1)
    """
    
    # Predict using forward propagation and a classification threshold of 0.5
    a3, cache = forward_propagation(X, parameters)
    predictions = (a3 > 0.5)
    return predictions

def load_dataset():
    np.random.seed(3)
    train_X, train_Y = sklearn.datasets.make_moons(n_samples=300, noise=.2) #300 #0.2 
    # Visualize the data
    # plt.scatter(train_X[:, 0], train_X[:, 1], c=train_Y, s=40, cmap=plt.cm.Spectral);
    train_X = train_X.T
    train_Y = train_Y.reshape((1, train_Y.shape[0]))
    
    return train_X, train_Y
mini batch with gd:
Cost after epoch 0: 0.690736
Cost after epoch 1000: 0.685273
Cost after epoch 2000: 0.647072
Cost after epoch 3000: 0.619525
Cost after epoch 4000: 0.576584
Cost after epoch 5000: 0.607243
Cost after epoch 6000: 0.529403
Cost after epoch 7000: 0.460768
Cost after epoch 8000: 0.465586
Cost after epoch 9000: 0.464518
Accuracy: 0.7966666666666666
mini batch with momentum:
Cost after epoch 0: 0.690741
Cost after epoch 1000: 0.685341
Cost after epoch 2000: 0.647145
Cost after epoch 3000: 0.619594
Cost after epoch 4000: 0.576665
Cost after epoch 5000: 0.607324
Cost after epoch 6000: 0.529476
Cost after epoch 7000: 0.460936
Cost after epoch 8000: 0.465780
Cost after epoch 9000: 0.464740
Accuracy: 0.7966666666666666
mini batch with adam:
Cost after epoch 0: 0.690552
Cost after epoch 1000: 0.185501
Cost after epoch 2000: 0.150830
Cost after epoch 3000: 0.074454
Cost after epoch 4000: 0.125959
Cost after epoch 5000: 0.104344
Cost after epoch 6000: 0.100676
Cost after epoch 7000: 0.031652
Cost after epoch 8000: 0.111973
Cost after epoch 9000: 0.197940
Accuracy: 0.94

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