| 123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215 |
- import matplotlib.pyplot as plt
- # 导入数据集生成工具
- import numpy as np
- import seaborn as sns
- from sklearn.datasets import make_moons
- from sklearn.model_selection import train_test_split
- from tensorflow.keras import layers, Sequential, regularizers
- from mpl_toolkits.mplot3d import Axes3D
- plt.rcParams['font.size'] = 16
- plt.rcParams['font.family'] = ['STKaiti']
- plt.rcParams['axes.unicode_minus'] = False
- OUTPUT_DIR = 'output_dir'
- N_EPOCHS = 500
- def load_dataset():
- # 采样点数
- N_SAMPLES = 1000
- # 测试数量比率
- TEST_SIZE = None
- # 从 moon 分布中随机采样 1000 个点,并切分为训练集-测试集
- X, y = make_moons(n_samples=N_SAMPLES, noise=0.25, random_state=100)
- 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, file_name, XX=None, YY=None, preds=None, dark=False, output_dir=OUTPUT_DIR):
- # 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")
- axes = plt.gca()
- axes.set_xlim([-2, 3])
- axes.set_ylim([-1.5, 2])
- axes.set(xlabel="$x_1$", ylabel="$x_2$")
- plt.title(plot_name, fontsize=20, fontproperties='SimHei')
- 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=0.08, 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m=markers
- markers = ['o' if i == 1 else 's' for i in y.ravel()]
- mscatter(X[:, 0], X[:, 1], c=y.ravel(), s=20, cmap=plt.cm.Spectral, edgecolors='none', m=markers, ax=axes)
- # 保存矢量图
- plt.savefig(output_dir + '/' + file_name)
- plt.close()
- def mscatter(x, y, ax=None, m=None, **kw):
- import matplotlib.markers as mmarkers
- if not ax: ax = plt.gca()
- sc = ax.scatter(x, y, **kw)
- if (m is not None) and (len(m) == len(x)):
- paths = []
- for marker in m:
- if isinstance(marker, mmarkers.MarkerStyle):
- marker_obj = marker
- else:
- marker_obj = mmarkers.MarkerStyle(marker)
- path = marker_obj.get_path().transformed(
- marker_obj.get_transform())
- paths.append(path)
- sc.set_paths(paths)
- return sc
- def network_layers_influence(X_train, y_train):
- # 构建 5 种不同层数的网络
- for n in range(5):
- # 创建容器
- model = Sequential()
- # 创建第一层
- model.add(layers.Dense(8, input_dim=2, activation='relu'))
- # 添加 n 层,共 n+2 层
- for _ in range(n):
- model.add(layers.Dense(32, activation='relu'))
- # 创建最末层
- model.add(layers.Dense(1, activation='sigmoid'))
- # 模型装配与训练
- model.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy'])
- model.fit(X_train, y_train, epochs=N_EPOCHS, verbose=1)
- # 绘制不同层数的网络决策边界曲线
- # 可视化的 x 坐标范围为[-2, 3]
- xx = np.arange(-2, 3, 0.01)
- # 可视化的 y 坐标范围为[-1.5, 2]
- yy = np.arange(-1.5, 2, 0.01)
- # 生成 x-y 平面采样网格点,方便可视化
- XX, YY = np.meshgrid(xx, yy)
- preds = model.predict_classes(np.c_[XX.ravel(), YY.ravel()])
- title = "网络层数:{0}".format(2 + n)
- file = "网络容量_%i.png" % (2 + n)
- make_plot(X_train, y_train, title, file, XX, YY, preds, output_dir=OUTPUT_DIR + '/network_layers')
- def dropout_influence(X_train, y_train):
- # 构建 5 种不同数量 Dropout 层的网络
- for n in range(5):
- # 创建容器
- model = Sequential()
- # 创建第一层
- model.add(layers.Dense(8, input_dim=2, activation='relu'))
- counter = 0
- # 网络层数固定为 5
- for _ in range(5):
- model.add(layers.Dense(64, activation='relu'))
- # 添加 n 个 Dropout 层
- if counter < n:
- counter += 1
- model.add(layers.Dropout(rate=0.5))
- # 输出层
- model.add(layers.Dense(1, activation='sigmoid'))
- # 模型装配
- model.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy'])
- # 训练
- model.fit(X_train, y_train, epochs=N_EPOCHS, verbose=1)
- # 绘制不同 Dropout 层数的决策边界曲线
- # 可视化的 x 坐标范围为[-2, 3]
- xx = np.arange(-2, 3, 0.01)
- # 可视化的 y 坐标范围为[-1.5, 2]
- yy = np.arange(-1.5, 2, 0.01)
- # 生成 x-y 平面采样网格点,方便可视化
- XX, YY = np.meshgrid(xx, yy)
- preds = model.predict_classes(np.c_[XX.ravel(), YY.ravel()])
- title = "无Dropout层" if n == 0 else "{0}层 Dropout层".format(n)
- file = "Dropout_%i.png" % n
- make_plot(X_train, y_train, title, file, XX, YY, preds, output_dir=OUTPUT_DIR + '/dropout')
- def build_model_with_regularization(_lambda):
- # 创建带正则化项的神经网络
- model = Sequential()
- model.add(layers.Dense(8, input_dim=2, activation='relu')) # 不带正则化项
- # 2-4层均是带 L2 正则化项
- model.add(layers.Dense(256, activation='relu', kernel_regularizer=regularizers.l2(_lambda)))
- model.add(layers.Dense(256, activation='relu', kernel_regularizer=regularizers.l2(_lambda)))
- model.add(layers.Dense(256, activation='relu', kernel_regularizer=regularizers.l2(_lambda)))
- # 输出层
- model.add(layers.Dense(1, activation='sigmoid'))
- model.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy']) # 模型装配
- return model
- def plot_weights_matrix(model, layer_index, plot_name, file_name, output_dir=OUTPUT_DIR):
- # 绘制权值范围函数
- # 提取指定层的权值矩阵
- weights = model.layers[layer_index].get_weights()[0]
- shape = weights.shape
- # 生成和权值矩阵等大小的网格坐标
- X = np.array(range(shape[1]))
- Y = np.array(range(shape[0]))
- X, Y = np.meshgrid(X, Y)
- # 绘制3D图
- fig = plt.figure()
- ax = fig.gca(projection='3d')
- ax.xaxis.set_pane_color((1.0, 1.0, 1.0, 0.0))
- ax.yaxis.set_pane_color((1.0, 1.0, 1.0, 0.0))
- ax.zaxis.set_pane_color((1.0, 1.0, 1.0, 0.0))
- plt.title(plot_name, fontsize=20, fontproperties='SimHei')
- # 绘制权值矩阵范围
- ax.plot_surface(X, Y, weights, cmap=plt.get_cmap('rainbow'), linewidth=0)
- # 设置坐标轴名
- ax.set_xlabel('网格x坐标', fontsize=16, rotation=0, fontproperties='SimHei')
- ax.set_ylabel('网格y坐标', fontsize=16, rotation=0, fontproperties='SimHei')
- ax.set_zlabel('权值', fontsize=16, rotation=90, fontproperties='SimHei')
- # 保存矩阵范围图
- plt.savefig(output_dir + "/" + file_name + ".svg")
- plt.close(fig)
- def regularizers_influence(X_train, y_train):
- for _lambda in [1e-5, 1e-3, 1e-1, 0.12, 0.13]: # 设置不同的正则化系数
- # 创建带正则化项的模型
- model = build_model_with_regularization(_lambda)
- # 模型训练
- model.fit(X_train, y_train, epochs=N_EPOCHS, verbose=1)
- # 绘制权值范围
- layer_index = 2
- plot_title = "正则化系数:{}".format(_lambda)
- file_name = "正则化网络权值_" + str(_lambda)
- # 绘制网络权值范围图
- plot_weights_matrix(model, layer_index, plot_title, file_name, output_dir=OUTPUT_DIR + '/regularizers')
- # 绘制不同正则化系数的决策边界线
- # 可视化的 x 坐标范围为[-2, 3]
- xx = np.arange(-2, 3, 0.01)
- # 可视化的 y 坐标范围为[-1.5, 2]
- yy = np.arange(-1.5, 2, 0.01)
- # 生成 x-y 平面采样网格点,方便可视化
- XX, YY = np.meshgrid(xx, yy)
- preds = model.predict_classes(np.c_[XX.ravel(), YY.ravel()])
- title = "正则化系数:{}".format(_lambda)
- file = "正则化_%g.svg" % _lambda
- make_plot(X_train, y_train, title, file, XX, YY, preds, output_dir=OUTPUT_DIR + '/regularizers')
- def main():
- X, y, X_train, X_test, y_train, y_test = load_dataset()
- # 绘制数据集分布
- make_plot(X, y, None, "月牙形状二分类数据集分布.svg")
- # 网络层数的影响
- network_layers_influence(X_train, y_train)
- # Dropout的影响
- dropout_influence(X_train, y_train)
- # 正则化的影响
- regularizers_influence(X_train, y_train)
- if __name__ == '__main__':
- main()
|