如下所示:
import torch from torch.autograd import Variable import matplotlib.pyplot as plt torch.manual_seed(1) N_SAMPLES = 20 N_HIDDEN = 300 # training data x = torch.unsqueeze(torch.linspace(-1, 1, N_SAMPLES), 1) y = x + 0.3 * torch.normal(torch.zeros(N_SAMPLES, 1), torch.ones(N_SAMPLES, 1)) x, y = Variable(x), Variable(y) # test data test_x = torch.unsqueeze(torch.linspace(-1, 1, N_SAMPLES), 1) test_y = test_x + 0.3 * torch.normal(torch.zeros(N_SAMPLES, 1), torch.ones(N_SAMPLES, 1)) test_x = Variable(test_x, volatile=True) test_y = Variable(test_y, volatile=True) # show data # plt.scatter(x.data.numpy(), y.data.numpy(), c="magenta", s=50, alpha=0.5, label="train") # plt.scatter(test_x.data.numpy(), test_y.data.numpy(), c="cyan", s=50, alpha=0.5, label="test") # plt.legend(loc="upper left") # plt.ylim((-2.5, 2.5)) # plt.show() net_overfitting = torch.nn.Sequential( torch.nn.Linear(1, N_HIDDEN), torch.nn.ReLU(), torch.nn.Linear(N_HIDDEN, N_HIDDEN), torch.nn.ReLU(), torch.nn.Linear(N_HIDDEN, 1), ) net_dropped = torch.nn.Sequential( torch.nn.Linear(1, N_HIDDEN), torch.nn.Dropout(0.5), torch.nn.ReLU(), torch.nn.Linear(N_HIDDEN, N_HIDDEN), torch.nn.Dropout(0.5), torch.nn.ReLU(), torch.nn.Linear(N_HIDDEN, 1), ) print(net_overfitting) print(net_dropped) optimizer_ofit = torch.optim.Adam( net_overfitting.parameters(), lr = 0.01, ) optimizer_drop = torch.optim.Adam( net_dropped.parameters(), lr = 0.01, ) loss_func = torch.nn.MSELoss() plt.ion() for t in range(500): pred_ofit = net_overfitting(x) pred_drop = net_dropped(x) loss_ofit = loss_func(pred_ofit, y) loss_drop = loss_func(pred_drop, y) optimizer_ofit.zero_grad() optimizer_drop.zero_grad() loss_ofit.backward() loss_drop.backward() optimizer_ofit.step() optimizer_drop.step() if t % 10 == 0: net_overfitting.eval() net_dropped.eval() plt.cla() test_pred_ofit = net_overfitting(test_x) test_pred_drop = net_dropped(test_x) plt.scatter(x.data.numpy(), y.data.numpy(), c="magenta", s=50, alpha=0.3, label="train") plt.scatter(test_x.data.numpy(), test_y.data.numpy(), c="cyan", s=50, alpha=0.3, label="test") plt.plot(test_x.data.numpy(), test_pred_ofit.data.numpy(), "r-", lw=3, label="overfitting") plt.plot(test_x.data.numpy(), test_pred_drop.data.numpy(), "b--", lw=3, label="dropout(50%)") plt.text(0, -1.2, "overfitting loss=%.4f" % loss_func(test_pred_ofit, test_y).data[0], fontdict={"size": 20, "color": "red"}) plt.text(0, -1.5, "dropout loss=%.4f" % loss_func(test_pred_drop, test_y).data[0], fontdict={"size": 20, "color": "blue"}) plt.legend(loc="upper left"); plt.ylim((-2.5, 2.5));plt.pause(0.1) net_overfitting.train() net_dropped.train() plt.ioff() plt.show()
补充:pytorch避免过拟合-dropout丢弃法的实现
对于一个单隐藏层的多层感知机,其中输入个数为4,隐藏单元个数为5,且隐藏单元的计算表达式为:
开始实现drop丢弃法避免过拟合
定义dropout函数:
%matplotlib inline import torch import torch.nn as nn import numpy as np def dropout(X, drop_prob): X = X.float() assert 0 <= drop_prob <= 1 keep_prob = 1 - drop_prob # 这种情况下把全部元素都丢弃 if keep_prob == 0: return torch.zeros_like(X) mask = (torch.rand(X.shape) < keep_prob).float() return mask * X / keep_prob
定义模型参数:
num_inputs, num_outputs, num_hiddens1, num_hiddens2 = 784, 10, 256, 256 W1 = torch.tensor(np.random.normal(0, 0.01, size=(num_inputs, num_hiddens1)), dtype=torch.float, requires_grad=True) b1 = torch.zeros(num_hiddens1, requires_grad=True) W2 = torch.tensor(np.random.normal(0, 0.01, size=(num_hiddens1, num_hiddens2)), dtype=torch.float, requires_grad=True) b2 = torch.zeros(num_hiddens2, requires_grad=True) W3 = torch.tensor(np.random.normal(0, 0.01, size=(num_hiddens2, num_outputs)), dtype=torch.float, requires_grad=True) b3 = torch.zeros(num_outputs, requires_grad=True) params = [W1, b1, W2, b2, W3, b3]
定义模型将全连接层和激活函数ReLU串起来,并对每个激活函数的输出使用丢弃法。
分别设置各个层的丢弃概率。通常的建议是把靠近输入层的丢弃概率设得小一点。
在这个实验中,我们把第一个隐藏层的丢弃概率设为0.2,把第二个隐藏层的丢弃概率设为0.5。
我们可以通过参数is_training来判断运行模式为训练还是测试,并只在训练模式下使用丢弃法。
drop_prob1, drop_prob2 = 0.2, 0.5 def net(X, is_training=True): X = X.view(-1, num_inputs) H1 = (torch.matmul(X, W1) + b1).relu() if is_training: # 只在训练模型时使用丢弃法 H1 = dropout(H1, drop_prob1) # 在第一层全连接后添加丢弃层 H2 = (torch.matmul(H1, W2) + b2).relu() if is_training: H2 = dropout(H2, drop_prob2) # 在第二层全连接后添加丢弃层 return torch.matmul(H2, W3) + b3 def evaluate_accuracy(data_iter, net): acc_sum, n = 0.0, 0 for X, y in data_iter: if isinstance(net, torch.nn.Module): net.eval() # 评估模式, 这会关闭dropout acc_sum += (net(X).argmax(dim=1) == y).float().sum().item() net.train() # 改回训练模式 else: # 自定义的模型 if("is_training" in net.__code__.co_varnames): # 如果有is_training这个参数 # 将is_training设置成False acc_sum += (net(X, is_training=False).argmax(dim=1) == y).float().sum().item() else: acc_sum += (net(X).argmax(dim=1) == y).float().sum().item() n += y.shape[0] return acc_sum / n
训练和测试模型:
num_epochs, lr, batch_size = 5, 100.0, 256 loss = torch.nn.CrossEntropyLoss() def load_data_fashion_mnist(batch_size, resize=None, root="~/Datasets/FashionMNIST"): """Download the fashion mnist dataset and then load into memory.""" trans = [] if resize: trans.append(torchvision.transforms.Resize(size=resize)) trans.append(torchvision.transforms.ToTensor()) transform = torchvision.transforms.Compose(trans) mnist_train = torchvision.datasets.FashionMNIST(root=root, train=True, download=True, transform=transform) mnist_test = torchvision.datasets.FashionMNIST(root=root, train=False, download=True, transform=transform) if sys.platform.startswith("win"): num_workers = 0 # 0表示不用额外的进程来加速读取数据 else: num_workers = 4 train_iter = torch.utils.data.DataLoader(mnist_train, batch_size=batch_size, shuffle=True, num_workers=num_workers) test_iter = torch.utils.data.DataLoader(mnist_test, batch_size=batch_size, shuffle=False, num_workers=num_workers) return train_iter, test_iter def train_ch3(net, train_iter, test_iter, loss, num_epochs, batch_size, params=None, lr=None, optimizer=None): for epoch in range(num_epochs): train_l_sum, train_acc_sum, n = 0.0, 0.0, 0 for X, y in train_iter: y_hat = net(X) l = loss(y_hat, y).sum() # 梯度清零 if optimizer is not None: optimizer.zero_grad() elif params is not None and params[0].grad is not None: for param in params: param.grad.data.zero_() l.backward() if optimizer is None: sgd(params, lr, batch_size) else: optimizer.step() # “softmax回归的简洁实现”一节将用到 train_l_sum += l.item() train_acc_sum += (y_hat.argmax(dim=1) == y).sum().item() n += y.shape[0] test_acc = evaluate_accuracy(test_iter, net) print("epoch %d, loss %.4f, train acc %.3f, test acc %.3f" % (epoch + 1, train_l_sum / n, train_acc_sum / n, test_acc)) train_iter, test_iter = load_data_fashion_mnist(batch_size) train_ch3(net, train_iter, test_iter, loss, num_epochs, batch_size, params, lr)
以上为个人经验,希望能给大家一个参考,也希望大家多多支持服务器之家。
原文链接:https://www.jianshu.com/p/57f4ed660923