import numpy as np import torch import torch.optim as optim import torch.nn as nn import matplotlib.pyplot as plt import os data = np.genfromtxt("data.txt",delimiter=",",dtype=np.float32) data0 = data[data[:,2]==0.] data1 = data[data[:,2]==1.] data0_x = data0[:,0] data0_y = data0[:,1] data1_x = data1[:,0] data1_y = data1[:,1] class LogisticRegression(nn.Module): def __init__(self): super(LogisticRegression, self).__init__() self.linear = nn.Linear(2,1) self.sigmoid = nn.Sigmoid() def forward(self,x): x = self.linear(x) out = self.sigmoid(x) return out model = LogisticRegression().cuda() criterion = nn.MSELoss() optimizer = optim.SGD(model.parameters(), lr=1e-3,momentum=0.9) for epoch in range(50000): x = torch.from_numpy(data[:,0:2]).cuda() y = torch.from_numpy(data[:,2]).unsqueeze(1).cuda() output = model(x) loss = criterion(output,y) print_loss = loss.item() mask = output.ge(0.5).float() correct = (mask == y).sum() total = x.size(0) accuracy = correct.item() / total optimizer.zero_grad() loss.backward() optimizer.step() if (epoch+1) % 100 == 0: print('*'*10) print("epoch[{}/{}]".format(epoch+1, 50000)) print("loss: {:.6f}".format(print_loss)) print("accuracy: {:.4f}".format(accuracy)) w0,w1 = model.linear.weight[0] w0,w1 = w0.item(),w1.item() b = model.linear.bias.item() plot_x = np.arange(30,100,0.1) plot_y = (-w0 * plot_x - b) / w1 plt.plot(data0_x,data0_y,"ro", label="data0") plt.plot(data1_x,data1_y,"bo", label="data1") plt.plot(plot_x, plot_y) plt.legend(loc="best") plt.show()

data.txt内容
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本文详细介绍使用PyTorch实现逻辑回归的过程,包括数据加载、模型定义、损失函数选择、优化器配置及训练循环。通过5万次迭代,模型达到较高准确率,并展示了决策边界。
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