Pytorch学习系列(2):线性回归(Linear Regression)

Pytorch学习系列(2):线性回归(Linear Regression)

导包

# 包
import torch
import torch.nn as nn
import numpy as np
import matplotlib.pyplot as plt

加载数据和设置模型参数

# 超参数设置
input_size = 1
output_size = 1
num_epochs = 60
learning_rate = 0.001

# Toy dataset 
# 玩具资料:小数据集
x_train = np.array([[3.3], [4.4], [5.5], [6.71], [6.93], [4.168], 
                    [9.779], [6.182], [7.59], [2.167], [7.042], 
                    [10.791], [5.313], [7.997], [3.1]], dtype=np.float32)

y_train = np.array([[1.7], [2.76], [2.09], [3.19], [1.694], [1.573], 
                    [3.366], [2.596], [2.53], [1.221], [2.827], 
                    [3.465], [1.65], [2.904], [1.3]], dtype=np.float32)

# 线性回归模型
model = nn.Linear(input_size, output_size)

# 损失函数和优化器
criterion = nn.MSELoss()
optimizer = torch.optim.SGD(model.parameters(), lr=learning_rate) 

训练模型

# 训练模型
for epoch in range(num_epochs):
    # 将Numpy数组转换为torch张量
    inputs = torch.from_numpy(x_train)
    targets = torch.from_numpy(y_train)

    # 前向传播
    outputs = model(inputs)
    loss = criterion(outputs, targets)

    # 反向传播和优化
    optimizer.zero_grad()
    loss.backward()
    optimizer.step()

    if (epoch+1) % 5 == 0:
        print ('Epoch [{}/{}], Loss: {:.4f}'.format(epoch+1, num_epochs, loss.item()))
Epoch [5/60], Loss: 6.9578
Epoch [10/60], Loss: 2.9329
Epoch [15/60], Loss: 1.3022
Epoch [20/60], Loss: 0.6416
Epoch [25/60], Loss: 0.3740
Epoch [30/60], Loss: 0.2655
Epoch [35/60], Loss: 0.2215
Epoch [40/60], Loss: 0.2037
Epoch [45/60], Loss: 0.1964
Epoch [50/60], Loss: 0.1934
Epoch [55/60], Loss: 0.1922
Epoch [60/60], Loss: 0.1916

绘制预测值与真实值图形

# 绘制图形
# torch.from_numpy(x_train)将X_train转换为Tensor
# model()根据输入和模型,得到输出
# detach().numpy()预测结结果转换为numpy数组
predicted = model(torch.from_numpy(x_train)).detach().numpy()
plt.plot(x_train, y_train, 'ro', label='Original data')
plt.plot(x_train, predicted, label='Fitted line')
plt.legend()
plt.show()

![img]()

保存模型

# 将模型的记录节点保存下来
torch.save(model.state_dict(), 'model.ckpt')
暂无评论

发送评论 编辑评论


				
|´・ω・)ノ
ヾ(≧∇≦*)ゝ
(☆ω☆)
(╯‵□′)╯︵┴─┴
 ̄﹃ ̄
(/ω\)
∠( ᐛ 」∠)_
(๑•̀ㅁ•́ฅ)
→_→
୧(๑•̀⌄•́๑)૭
٩(ˊᗜˋ*)و
(ノ°ο°)ノ
(´இ皿இ`)
⌇●﹏●⌇
(ฅ´ω`ฅ)
(╯°A°)╯︵○○○
φ( ̄∇ ̄o)
ヾ(´・ ・`。)ノ"
( ง ᵒ̌皿ᵒ̌)ง⁼³₌₃
(ó﹏ò。)
Σ(っ °Д °;)っ
( ,,´・ω・)ノ"(´っω・`。)
╮(╯▽╰)╭
o(*////▽////*)q
>﹏<
( ๑´•ω•) "(ㆆᴗㆆ)
😂
😀
😅
😊
🙂
🙃
😌
😍
😘
😜
😝
😏
😒
🙄
😳
😡
😔
😫
😱
😭
💩
👻
🙌
🖕
👍
👫
👬
👭
🌚
🌝
🙈
💊
😶
🙏
🍦
🍉
😣
Source: github.com/k4yt3x/flowerhd
颜文字
Emoji
小恐龙
花!
上一篇
下一篇