波士顿房价预测
代码
import numpy as np
import matplotlib.pyplot as plt
def load_data():
datafile = 'D:\Python\PythonProject\sklearn\housing.data'
data = np.fromfile(datafile, sep=' ')
feature_names = [ 'CRIM', 'ZN', 'INDUS', 'CHAS', 'NOX', 'RM', 'AGE', \
'DIS', 'RAD', 'TAX', 'PTRATIO', 'B', 'LSTAT', 'MEDV' ]
feature_num = len(feature_names)
data = data.reshape([data.shape[0] // feature_num, feature_num])
ratio = 0.8
offset = int(data.shape[0] * ratio)
training_data = data[:offset]
maximums, minimums, avgs = training_data.max(axis=0), training_data.min(axis=0), \
training_data.sum(axis=0) / training_data.shape[0]
for i in range(feature_num):
data[:, i] = (data[:, i] - avgs[i]) / (maximums[i] - minimums[i])
training_data = data[:offset]
test_data = data[offset:]
return training_data, test_data
class Network(object):
def __init__(self, num_of_weights):
self.w = np.random.randn(num_of_weights, 1)
self.b = 0.
def forward(self, x):
z = np.dot(x, self.w) + self.b
return z
def loss(self, z, y):
error = z - y
num_samples = error.shape[0]
cost = error * error
cost = np.sum(cost) / num_samples
return cost
def gradient(self, x, y):
z = self.forward(x)
N = x.shape[0]
gradient_w = 1. / N * np.sum((z-y) * x, axis=0)
gradient_w = gradient_w[:, np.newaxis]
gradient_b = 1. / N * np.sum(z-y)
return gradient_w, gradient_b
def update(self, gradient_w, gradient_b, eta = 0.01):
self.w = self.w - eta * gradient_w
self.b = self.b - eta * gradient_b
def train(self, training_data, num_epoches, batch_size=10, eta=0.01):
n = len(training_data)
losses = []
for epoch_id in range(num_epoches):
np.random.shuffle(training_data)
mini_batches = [training_data[k:k+batch_size] for k in range(0, n, batch_size)]
for iter_id, mini_batch in enumerate(mini_batches):
x = mini_batch[:, :-1]
y = mini_batch[:, -1:]
a = self.forward(x)
loss = self.loss(a, y)
gradient_w, gradient_b = self.gradient(x, y)
self.update(gradient_w, gradient_b, eta)
losses.append(loss)
print('Epoch {:3d} / iter {:3d}, loss = {:.4f}'.
format(epoch_id, iter_id, loss))
return losses
train_data, test_data = load_data()
net = Network(13)
losses = net.train(train_data, num_epoches=50, batch_size=100, eta=0.1)
plot_x = np.arange(len(losses))
plot_y = np.array(losses)
plt.plot(plot_x, plot_y)
plt.show()
x_test = test_data[:, :-1]
y_test = test_data[:, -1:]
score = net.loss(net.forward(x_test), y_test)
运行结果
