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- #!/usr/bin/env python
- # encoding: utf-8
- """
- @author: HuRuiFeng
- @file: 7.9-backward-prop.py
- @time: 2020/2/24 17:32
- @desc: 7.9 反向传播算法实战的代码
- """
- import matplotlib.pyplot as plt
- import numpy as np
- import seaborn as sns
- from sklearn.datasets import make_moons
- from sklearn.model_selection import train_test_split
- plt.rcParams['font.size'] = 16
- plt.rcParams['font.family'] = ['STKaiti']
- plt.rcParams['axes.unicode_minus'] = False
- def load_dataset():
- # 采样点数
- N_SAMPLES = 2000
- # 测试数量比率
- TEST_SIZE = 0.3
- # 利用工具函数直接生成数据集
- X, y = make_moons(n_samples=N_SAMPLES, noise=0.2, random_state=100)
- # 将 2000 个点按着 7:3 分割为训练集和测试集
- X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=TEST_SIZE, random_state=42)
- return X, y, X_train, X_test, y_train, y_test
- def make_plot(X, y, plot_name, XX=None, YY=None, preds=None, dark=False):
- # 绘制数据集的分布, X 为 2D 坐标, y 为数据点的标签
- if (dark):
- plt.style.use('dark_background')
- else:
- sns.set_style("whitegrid")
- plt.figure(figsize=(16, 12))
- axes = plt.gca()
- axes.set(xlabel="$x_1$", ylabel="$x_2$")
- plt.title(plot_name, fontsize=30)
- plt.subplots_adjust(left=0.20)
- plt.subplots_adjust(right=0.80)
- if XX is not None and YY is not None and preds is not None:
- plt.contourf(XX, YY, preds.reshape(XX.shape), 25, alpha=1, cmap=plt.cm.Spectral)
- plt.contour(XX, YY, preds.reshape(XX.shape), levels=[.5], cmap="Greys", vmin=0, vmax=.6)
- # 绘制散点图,根据标签区分颜色
- plt.scatter(X[:, 0], X[:, 1], c=y.ravel(), s=40, cmap=plt.cm.Spectral, edgecolors='none')
- plt.savefig('数据集分布.svg')
- plt.close()
- class Layer:
- # 全连接网络层
- def __init__(self, n_input, n_neurons, activation=None, weights=None,
- bias=None):
- """
- :param int n_input: 输入节点数
- :param int n_neurons: 输出节点数
- :param str activation: 激活函数类型
- :param weights: 权值张量,默认类内部生成
- :param bias: 偏置,默认类内部生成
- """
- # 通过正态分布初始化网络权值,初始化非常重要,不合适的初始化将导致网络不收敛
- self.weights = weights if weights is not None else np.random.randn(n_input, n_neurons) * np.sqrt(1 / n_neurons)
- self.bias = bias if bias is not None else np.random.rand(n_neurons) * 0.1
- self.activation = activation # 激活函数类型,如’sigmoid’
- self.last_activation = None # 激活函数的输出值o
- self.error = None # 用于计算当前层的delta 变量的中间变量
- self.delta = None # 记录当前层的delta 变量,用于计算梯度
- # 网络层的前向传播函数实现如下,其中last_activation 变量用于保存当前层的输出值:
- def activate(self, x):
- # 前向传播函数
- r = np.dot(x, self.weights) + self.bias # X@W+b
- # 通过激活函数,得到全连接层的输出o
- self.last_activation = self._apply_activation(r)
- return self.last_activation
- # 上述代码中的self._apply_activation 函数实现了不同类型的激活函数的前向计算过程,
- # 尽管此处我们只使用Sigmoid 激活函数一种。代码如下:
- def _apply_activation(self, r):
- # 计算激活函数的输出
- if self.activation is None:
- return r # 无激活函数,直接返回
- # ReLU 激活函数
- elif self.activation == 'relu':
- return np.maximum(r, 0)
- # tanh 激活函数
- elif self.activation == 'tanh':
- return np.tanh(r)
- # sigmoid 激活函数
- elif self.activation == 'sigmoid':
- return 1 / (1 + np.exp(-r))
- return r
- # 针对于不同类型的激活函数,它们的导数计算实现如下:
- def apply_activation_derivative(self, r):
- # 计算激活函数的导数
- # 无激活函数,导数为1
- if self.activation is None:
- return np.ones_like(r)
- # ReLU 函数的导数实现
- elif self.activation == 'relu':
- grad = np.array(r, copy=True)
- grad[r > 0] = 1.
- grad[r <= 0] = 0.
- return grad
- # tanh 函数的导数实现
- elif self.activation == 'tanh':
- return 1 - r ** 2
- # Sigmoid 函数的导数实现
- elif self.activation == 'sigmoid':
- return r * (1 - r)
- return r
- # 神经网络模型
- class NeuralNetwork:
- def __init__(self):
- self._layers = [] # 网络层对象列表
- def add_layer(self, layer):
- # 追加网络层
- self._layers.append(layer)
- # 网络的前向传播只需要循环调各个网络层对象的前向计算函数即可,代码如下:
- # 前向传播
- def feed_forward(self, X):
- for layer in self._layers:
- # 依次通过各个网络层
- X = layer.activate(X)
- return X
- def backpropagation(self, X, y, learning_rate):
- # 反向传播算法实现
- # 前向计算,得到输出值
- output = self.feed_forward(X)
- for i in reversed(range(len(self._layers))): # 反向循环
- layer = self._layers[i] # 得到当前层对象
- # 如果是输出层
- if layer == self._layers[-1]: # 对于输出层
- layer.error = y - output # 计算2 分类任务的均方差的导数
- # 关键步骤:计算最后一层的delta,参考输出层的梯度公式
- layer.delta = layer.error * layer.apply_activation_derivative(output)
- else: # 如果是隐藏层
- next_layer = self._layers[i + 1] # 得到下一层对象
- layer.error = np.dot(next_layer.weights, next_layer.delta)
- # 关键步骤:计算隐藏层的delta,参考隐藏层的梯度公式
- layer.delta = layer.error * layer.apply_activation_derivative(layer.last_activation)
- # 循环更新权值
- for i in range(len(self._layers)):
- layer = self._layers[i]
- # o_i 为上一网络层的输出
- o_i = np.atleast_2d(X if i == 0 else self._layers[i - 1].last_activation)
- # 梯度下降算法,delta 是公式中的负数,故这里用加号
- layer.weights += layer.delta * o_i.T * learning_rate
- def train(self, X_train, X_test, y_train, y_test, learning_rate, max_epochs):
- # 网络训练函数
- # one-hot 编码
- y_onehot = np.zeros((y_train.shape[0], 2))
- y_onehot[np.arange(y_train.shape[0]), y_train] = 1
- # 将One-hot 编码后的真实标签与网络的输出计算均方误差,并调用反向传播函数更新网络参数,循环迭代训练集1000 遍即可
- mses = []
- accuracys = []
- for i in range(max_epochs + 1): # 训练1000 个epoch
- for j in range(len(X_train)): # 一次训练一个样本
- self.backpropagation(X_train[j], y_onehot[j], learning_rate)
- if i % 10 == 0:
- # 打印出MSE Loss
- mse = np.mean(np.square(y_onehot - self.feed_forward(X_train)))
- mses.append(mse)
- accuracy = self.accuracy(self.predict(X_test), y_test.flatten())
- accuracys.append(accuracy)
- print('Epoch: #%s, MSE: %f' % (i, float(mse)))
- # 统计并打印准确率
- print('Accuracy: %.2f%%' % (accuracy * 100))
- return mses, accuracys
- def predict(self, X):
- return self.feed_forward(X)
- def accuracy(self, X, y):
- return np.sum(np.equal(np.argmax(X, axis=1), y)) / y.shape[0]
- def main():
- X, y, X_train, X_test, y_train, y_test = load_dataset()
- # 调用 make_plot 函数绘制数据的分布,其中 X 为 2D 坐标, y 为标签
- make_plot(X, y, "Classification Dataset Visualization ")
- plt.show()
- nn = NeuralNetwork() # 实例化网络类
- nn.add_layer(Layer(2, 25, 'sigmoid')) # 隐藏层 1, 2=>25
- nn.add_layer(Layer(25, 50, 'sigmoid')) # 隐藏层 2, 25=>50
- nn.add_layer(Layer(50, 25, 'sigmoid')) # 隐藏层 3, 50=>25
- nn.add_layer(Layer(25, 2, 'sigmoid')) # 输出层, 25=>2
- mses, accuracys = nn.train(X_train, X_test, y_train, y_test, 0.01, 1000)
- x = [i for i in range(0, 101, 10)]
- # 绘制MES曲线
- plt.title("MES Loss")
- plt.plot(x, mses[:11], color='blue')
- plt.xlabel('Epoch')
- plt.ylabel('MSE')
- plt.savefig('训练误差曲线.svg')
- plt.close()
- # 绘制Accuracy曲线
- plt.title("Accuracy")
- plt.plot(x, accuracys[:11], color='blue')
- plt.xlabel('Epoch')
- plt.ylabel('Accuracy')
- plt.savefig('网络测试准确率.svg')
- plt.close()
- if __name__ == '__main__':
- main()
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