PyTorch学习笔记(16)损失函数(一)

损失函数

损失函数:衡量模型输出与真实标签的诧异

损失函数(Loss Function):

计算一个样本的差异
 Loss  = f ( y , y ) \text { Loss }=f\left(y^{\wedge}, y\right)

代价函数(Cost Function)

计算整个样本集的loss的平均值
cos t = 1 N i N f ( y i , y i ) \cos t=\frac{1}{N} \sum_{i}^{N} f\left(y_{i}^{\wedge}, y_{i}\right)

目标函数(Objective Function)

obj = Cost +  Regularization  \text{obj}=\text{Cost}+\text { Regularization }

nn.CrossEntropyLoss

功能:nn.LogSoftmax()与nn.NLLLoss()结合,进行交叉熵计算
主要参数
weight 各个类别的loss设置权值
ignore_index 忽略某个类别
reduction 计算模式,可分为none/sum/mean
none 逐个元素计算
sum 所有元素求和 返回标量
mean 加权平均,返回标量

交叉熵 = 信息熵 + 相对熵
交叉熵
H ( P , Q ) = i = 1 N P ( x i ) log Q ( x i ) \mathrm{H}(\boldsymbol{P}, \boldsymbol{Q})=-\sum_{i=1}^{N} \boldsymbol{P}\left(\boldsymbol{x}_{i}\right) \log \boldsymbol{Q}\left(\boldsymbol{x}_{i}\right)
自信息
I ( x ) = log [ p ( x ) ] \mathrm{I}(\boldsymbol{x})=-\log [\boldsymbol{p}(\boldsymbol{x})]

H ( P ) = E x p [ I ( x ) ] = i N P ( x i ) log P ( x i ) \mathrm{H}(\mathrm{P})=\boldsymbol{E}_{x \sim p}[\boldsymbol{I}(\boldsymbol{x})]=-\sum_{i}^{N} \boldsymbol{P}\left(\boldsymbol{x}_{i}\right) \log P\left(\boldsymbol{x}_{i}\right)
相对熵
D K L ( P , Q ) = E x p [ log P ( x ) Q ( x ) ] \boldsymbol{D}_{K L}(\boldsymbol{P}, \boldsymbol{Q})=\boldsymbol{E}_{\boldsymbol{x} \sim \boldsymbol{p}}\left[\log \frac{\boldsymbol{P}(\boldsymbol{x})}{\boldsymbol{Q}(\boldsymbol{x})}\right]
= E x p [ log P ( x ) log Q ( x ) =\boldsymbol{E}_{\boldsymbol{x} \sim \boldsymbol{p}}[\boldsymbol{\log \boldsymbol{P}(\boldsymbol{x})-\log \boldsymbol{Q}(\boldsymbol{x}})
= i = 1 N P ( x i ) [ log P ( x i ) log Q ( x i ) ] =\sum_{i=1}^{N} P\left(x_{i}\right)\left[\log P\left(x_{i}\right)-\log Q\left(x_{i}\right)\right]
= i = 1 N P ( x i ) log P ( x i ) i = 1 N P ( x i ) log Q ( x i ) =\sum_{i=1}^{N} P\left(x_{i}\right) \log P\left(x_{i}\right)-\sum_{i=1}^{N} P\left(x_{i}\right) \log Q\left(x_{i}\right)
= H ( P , Q ) H ( P ) =H(P, Q)-H(P)

nn.NLLLoss

功能 实现负对数似然函数中的负号功能
主要参数
weight 各类别的loss设置权值
ignore_index 忽略某个类别
reduction 计算模式,可分为none/sum/mean
none 逐个元素计算
sum 所有元素求和 返回标量
mean 加权平均,返回标量
l n = w y n x n , y n l_{n}=-w_{y_{n}} x_{n, y_{n}}

nn.BCELoss

功能 二分类交叉熵 注意事项 输入值取值在[0,1]
主要参数
weight 各类别的loss设置权值
ignore_index 忽略某个类别
reduction 计算模式,可分为none/sum/mean
none 逐个元素计算
sum 所有元素求和 返回标量
mean 加权平均,返回标量
l n = w n [ y n log x n + ( 1 y n ) log ( 1 x n ) ] l_{n}=-w_{n}\left[y_{n} \cdot \log x_{n}+\left(1-y_{n}\right) \cdot \log \left(1-x_{n}\right)\right]

nn.BCEWithLogitsLoss

功能 结合sigmoid 与 二分类交叉熵 注意事项 网络最后不加sigmoid函数
主要参数
pos_weight 正样本的权值
weight 各类别的loss设置权值
ignore_index 忽略某个类别
reduction 计算模式,可分为none/sum/mean
none 逐个元素计算
sum 所有元素求和 返回标量
mean 加权平均,返回标量
l n = w n [ y n log σ ( x n ) + ( 1 y n ) log ( 1 σ ( x n ) ) ] l_{n}=-w_{n}\left[y_{n} \cdot \log \sigma\left(x_{n}\right)+\left(1-y_{n}\right) \cdot \log \left(1-\sigma\left(x_{n}\right)\right)\right]

# -*- coding: utf-8 -*-

import os
import random
import numpy as np
import torch
import torch.nn as nn
from torch.utils.data import DataLoader
import torchvision.transforms as transforms
import torch.optim as optim
from PIL import Image
from matplotlib import pyplot as plt
from model.lenet import LeNet
from tools.my_dataset import RMBDataset
from tools.common_tools import transform_invert, set_seed

set_seed(1)  # 设置随机种子
rmb_label = {"1": 0, "100": 1}

# 参数设置
MAX_EPOCH = 10
BATCH_SIZE = 16
LR = 0.01
log_interval = 10
val_interval = 1

# ============================ step 1/5 数据 ============================

split_dir = os.path.join( "data", "rmb_split")
train_dir = os.path.join(split_dir, "train")
valid_dir = os.path.join(split_dir, "valid")

norm_mean = [0.485, 0.456, 0.406]
norm_std = [0.229, 0.224, 0.225]

train_transform = transforms.Compose([
    transforms.Resize((32, 32)),
    transforms.RandomCrop(32, padding=4),
    transforms.RandomGrayscale(p=0.8),
    transforms.ToTensor(),
    transforms.Normalize(norm_mean, norm_std),
])

valid_transform = transforms.Compose([
    transforms.Resize((32, 32)),
    transforms.ToTensor(),
    transforms.Normalize(norm_mean, norm_std),
])

# 构建MyDataset实例
train_data = RMBDataset(data_dir=train_dir, transform=train_transform)
valid_data = RMBDataset(data_dir=valid_dir, transform=valid_transform)

# 构建DataLoder
train_loader = DataLoader(dataset=train_data, batch_size=BATCH_SIZE, shuffle=True)
valid_loader = DataLoader(dataset=valid_data, batch_size=BATCH_SIZE)

# ============================ step 2/5 模型 ============================

net = LeNet(classes=2)
net.initialize_weights()

# ============================ step 3/5 损失函数 ============================
loss_functoin = nn.CrossEntropyLoss()                                                   # 选择损失函数

# ============================ step 4/5 优化器 ============================
optimizer = optim.SGD(net.parameters(), lr=LR, momentum=0.9)                        # 选择优化器
scheduler = torch.optim.lr_scheduler.StepLR(optimizer, step_size=10, gamma=0.1)     # 设置学习率下降策略

# ============================ step 5/5 训练 ============================
train_curve = list()
valid_curve = list()

for epoch in range(MAX_EPOCH):

    loss_mean = 0.
    correct = 0.
    total = 0.

    net.train()
    for i, data in enumerate(train_loader):

        # forward
        inputs, labels = data
        outputs = net(inputs)

        # backward
        optimizer.zero_grad()
        loss = loss_functoin(outputs, labels)
        loss.backward()

        # update weights
        optimizer.step()

        # 统计分类情况
        _, predicted = torch.max(outputs.data, 1)
        total += labels.size(0)
        correct += (predicted == labels).squeeze().sum().numpy()

        # 打印训练信息
        loss_mean += loss.item()
        train_curve.append(loss.item())
        if (i+1) % log_interval == 0:
            loss_mean = loss_mean / log_interval
            print("Training:Epoch[{:0>3}/{:0>3}] Iteration[{:0>3}/{:0>3}] Loss: {:.4f} Acc:{:.2%}".format(
                epoch, MAX_EPOCH, i+1, len(train_loader), loss_mean, correct / total))
            loss_mean = 0.

    scheduler.step()  # 更新学习率

    # validate the model
    if (epoch+1) % val_interval == 0:

        correct_val = 0.
        total_val = 0.
        loss_val = 0.
        net.eval()
        with torch.no_grad():
            for j, data in enumerate(valid_loader):
                inputs, labels = data
                outputs = net(inputs)
                loss = loss_functoin(outputs, labels)

                _, predicted = torch.max(outputs.data, 1)
                total_val += labels.size(0)
                correct_val += (predicted == labels).squeeze().sum().numpy()

                loss_val += loss.item()

            valid_curve.append(loss_val)
            print("Valid:\t Epoch[{:0>3}/{:0>3}] Iteration[{:0>3}/{:0>3}] Loss: {:.4f} Acc:{:.2%}".format(
                epoch, MAX_EPOCH, j+1, len(valid_loader), loss_val, correct / total))


train_x = range(len(train_curve))
train_y = train_curve

train_iters = len(train_loader)
valid_x = np.arange(1, len(valid_curve)+1) * train_iters*val_interval # 由于valid中记录的是epochloss,需要对记录点进行转换到iterations
valid_y = valid_curve

plt.plot(train_x, train_y, label='Train')
plt.plot(valid_x, valid_y, label='Valid')

plt.legend(loc='upper right')
plt.ylabel('loss value')
plt.xlabel('Iteration')
plt.show()

# ============================ inference ============================

BASE_DIR = os.path.dirname(os.path.abspath(__file__))
test_dir = os.path.join(BASE_DIR, "test_data")

test_data = RMBDataset(data_dir=test_dir, transform=valid_transform)
valid_loader = DataLoader(dataset=test_data, batch_size=1)

for i, data in enumerate(valid_loader):
    # forward
    inputs, labels = data
    outputs = net(inputs)
    _, predicted = torch.max(outputs.data, 1)

    rmb = 1 if predicted.numpy()[0] == 0 else 100

    img_tensor = inputs[0, ...]  # C H W
    img = transform_invert(img_tensor, train_transform)
    plt.imshow(img)
    plt.title("LeNet got {} Yuan".format(rmb))
    plt.show()
    plt.pause(0.5)
    plt.close()
# -*- coding: utf-8 -*-


import torch
import torch.nn as nn
import torch.nn.functional as F
import numpy as np

# fake data
inputs = torch.tensor([[1, 2], [1, 3], [1, 3]], dtype=torch.float)
target = torch.tensor([0, 1, 1], dtype=torch.long)

# ----------------------------------- CrossEntropy loss: reduction -----------------------------------
# flag = 0
flag = 1
if flag:
    # def loss function
    loss_f_none = nn.CrossEntropyLoss(weight=None, reduction='none')
    loss_f_sum = nn.CrossEntropyLoss(weight=None, reduction='sum')
    loss_f_mean = nn.CrossEntropyLoss(weight=None, reduction='mean')

    # forward
    loss_none = loss_f_none(inputs, target)
    loss_sum = loss_f_sum(inputs, target)
    loss_mean = loss_f_mean(inputs, target)

    # view
    print("Cross Entropy Loss:\n ", loss_none, loss_sum, loss_mean)

# --------------------------------- compute by hand
# flag = 0
flag = 1
if flag:

    idx = 0

    input_1 = inputs.detach().numpy()[idx]      # [1, 2]
    target_1 = target.numpy()[idx]              # [0]

    # 第一项
    x_class = input_1[target_1]

    # 第二项
    sigma_exp_x = np.sum(list(map(np.exp, input_1)))
    log_sigma_exp_x = np.log(sigma_exp_x)

    # 输出loss
    loss_1 = -x_class + log_sigma_exp_x

    print("第一个样本loss为: ", loss_1)


# ----------------------------------- weight -----------------------------------
flag = 0
# flag = 1
if flag:
    # def loss function
    weights = torch.tensor([1, 2], dtype=torch.float)
    # weights = torch.tensor([0.7, 0.3], dtype=torch.float)

    loss_f_none_w = nn.CrossEntropyLoss(weight=weights, reduction='none')
    loss_f_sum = nn.CrossEntropyLoss(weight=weights, reduction='sum')
    loss_f_mean = nn.CrossEntropyLoss(weight=weights, reduction='mean')

    # forward
    loss_none_w = loss_f_none_w(inputs, target)
    loss_sum = loss_f_sum(inputs, target)
    loss_mean = loss_f_mean(inputs, target)

    # view
    print("\nweights: ", weights)
    print(loss_none_w, loss_sum, loss_mean)


# --------------------------------- compute by hand
flag = 0
# flag = 1
if flag:
    weights = torch.tensor([1, 2], dtype=torch.float)
    weights_all = np.sum(list(map(lambda x: weights.numpy()[x], target.numpy())))  # [0, 1, 1]  # [1 2 2]

    mean = 0
    loss_sep = loss_none.detach().numpy()
    for i in range(target.shape[0]):

        x_class = target.numpy()[i]
        tmp = loss_sep[i] * (weights.numpy()[x_class] / weights_all)
        mean += tmp

    print(mean)


# ----------------------------------- 2 NLLLoss -----------------------------------
flag = 0
# flag = 1
if flag:

    weights = torch.tensor([1, 1], dtype=torch.float)

    loss_f_none_w = nn.NLLLoss(weight=weights, reduction='none')
    loss_f_sum = nn.NLLLoss(weight=weights, reduction='sum')
    loss_f_mean = nn.NLLLoss(weight=weights, reduction='mean')

    # forward
    loss_none_w = loss_f_none_w(inputs, target)
    loss_sum = loss_f_sum(inputs, target)
    loss_mean = loss_f_mean(inputs, target)

    # view
    print("\nweights: ", weights)
    print("NLL Loss", loss_none_w, loss_sum, loss_mean)


# ----------------------------------- 3 BCE Loss -----------------------------------
flag = 0
# flag = 1
if flag:
    inputs = torch.tensor([[1, 2], [2, 2], [3, 4], [4, 5]], dtype=torch.float)
    target = torch.tensor([[1, 0], [1, 0], [0, 1], [0, 1]], dtype=torch.float)

    target_bce = target

    # itarget
    inputs = torch.sigmoid(inputs)

    weights = torch.tensor([1, 1], dtype=torch.float)

    loss_f_none_w = nn.BCELoss(weight=weights, reduction='none')
    loss_f_sum = nn.BCELoss(weight=weights, reduction='sum')
    loss_f_mean = nn.BCELoss(weight=weights, reduction='mean')

    # forward
    loss_none_w = loss_f_none_w(inputs, target_bce)
    loss_sum = loss_f_sum(inputs, target_bce)
    loss_mean = loss_f_mean(inputs, target_bce)

    # view
    print("\nweights: ", weights)
    print("BCE Loss", loss_none_w, loss_sum, loss_mean)


# --------------------------------- compute by hand
flag = 0
# flag = 1
if flag:

    idx = 0

    x_i = inputs.detach().numpy()[idx, idx]
    y_i = target.numpy()[idx, idx]              #

    # loss
    # l_i = -[ y_i * np.log(x_i) + (1-y_i) * np.log(1-y_i) ]      # np.log(0) = nan
    l_i = -y_i * np.log(x_i) if y_i else -(1-y_i) * np.log(1-x_i)

    # 输出loss
    print("BCE inputs: ", inputs)
    print("第一个loss为: ", l_i)


# ----------------------------------- 4 BCE with Logis Loss -----------------------------------
# flag = 0
flag = 1
if flag:
    inputs = torch.tensor([[1, 2], [2, 2], [3, 4], [4, 5]], dtype=torch.float)
    target = torch.tensor([[1, 0], [1, 0], [0, 1], [0, 1]], dtype=torch.float)

    target_bce = target

    # inputs = torch.sigmoid(inputs)

    weights = torch.tensor([1, 1], dtype=torch.float)

    loss_f_none_w = nn.BCEWithLogitsLoss(weight=weights, reduction='none')
    loss_f_sum = nn.BCEWithLogitsLoss(weight=weights, reduction='sum')
    loss_f_mean = nn.BCEWithLogitsLoss(weight=weights, reduction='mean')

    # forward
    loss_none_w = loss_f_none_w(inputs, target_bce)
    loss_sum = loss_f_sum(inputs, target_bce)
    loss_mean = loss_f_mean(inputs, target_bce)

    # view
    print("\nweights: ", weights)
    print(loss_none_w, loss_sum, loss_mean)


# --------------------------------- pos weight

# flag = 0
flag = 1
if flag:
    inputs = torch.tensor([[1, 2], [2, 2], [3, 4], [4, 5]], dtype=torch.float)
    target = torch.tensor([[1, 0], [1, 0], [0, 1], [0, 1]], dtype=torch.float)

    target_bce = target

    # itarget
    # inputs = torch.sigmoid(inputs)

    weights = torch.tensor([1], dtype=torch.float)
    pos_w = torch.tensor([3], dtype=torch.float)        # 3

    loss_f_none_w = nn.BCEWithLogitsLoss(weight=weights, reduction='none', pos_weight=pos_w)
    loss_f_sum = nn.BCEWithLogitsLoss(weight=weights, reduction='sum', pos_weight=pos_w)
    loss_f_mean = nn.BCEWithLogitsLoss(weight=weights, reduction='mean', pos_weight=pos_w)

    # forward
    loss_none_w = loss_f_none_w(inputs, target_bce)
    loss_sum = loss_f_sum(inputs, target_bce)
    loss_mean = loss_f_mean(inputs, target_bce)

    # view
    print("\npos_weights: ", pos_w)
    print(loss_none_w, loss_sum, loss_mean)



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