Logistic Regression
目的:用逻辑回归来预测一个学生能否被大学录取
数据:有以前申请人的历史数据,用来逻辑回归的预测模型
建立一个分类模型,用来描述被录取入学的概率
#导入函数库
import pandas as pd
import numpy as np
import matplotlib.pyplot as plt
#ipython内置的魔法函数(magic function)有了%matplotlib inline 就可以省掉plt.show(),在界面显示,而不弹出界面窗口
%matplotlib inline
import os
path = "data"+os.sep+"LogiReg_data.txt"
pdData = pd.read_csv(path, header=None, names=['Exam1','Exam2','Admitted'])
pdData.head()
pdData.shape
positive = pdData[pdData['Admitted']==1]#return the subset of rows such 'Admitted'=1,the set of 'positive' example
negative = pdData[pdData['Admitted']==0]#return the subset of rows such 'Admitted'=0,the set of 'negative' example
fig,ax = plt.subplots(figsize=(10,5))
ax.scatter(positive['Exam1'],positive['Exam2'],s=30,c='b',marker='o',label='Admitted')
ax.scatter(negative['Exam1'],negative['Exam2'],s=30,c='r',marker='x',label='Not Admitted')
ax.legend()
ax.set_xlabel('Exam1 Score')
ax.set_ylabel('Exam2 Score')
def sigmoid(z):
return 1/(1 + np.exp(-z))
nums = np.arange(-10,10,step=1)#create a vector containing 20 equally spaced values from -10 to 10
fig,ax = plt.subplots(figsize=(12,4))
ax.plot(nums,sigmoid(nums),'r')
def model(X,theta):
return sigmoid(np.dot(X,theta.T))#no.dot():矩阵相乘
pdData.insert(0,'Ones',1)# in a try/except structure so as not to return an error if the block si executed several times
#set X(training data)and y (target variable)
orig_data = pdData.as_matrix() #convert the Pandas representation of the data to an array useful for further computations
cols = orig_data.shape[1] #shape[1] stands for axis
x = orig_data[:,0:cols-1]
y = orig_data[:,cols-1:cols]
#convert to numpy arrays and initialize the parameter array theta
# X = np.matrix(X.values)
# Y = np.matrix(data.iloc[:,3:4].values)#np.array(y.values)
theta = np.zeros([1,3])
x[:cols]#x[:5]
theta
x.shape,y.shape,theta.shape
def cost(x,y,theta):
left = np.multiply(-y,np.log(model(x,theta)))
right = np.multiply(1-y,np.log(1-model(x,theta)))
return np.sum(left-right)/(len(x))
cost(x,y,theta)
def gradient(x,y,theta):
grad = np.zeros(theta.shape)
error = (model(x,theta)-y).ravel()#ravel():将多维数组降为一维
for j in range(len(theta.ravel())):# for each parameter
term = np.multiply(error,x[:,j])
grad[0,j] = np.sum(term)/len(x)
return grad
gradient(x,y,theta)
STOP_ITER = 0
STOP_COST = 1
STOP_GRAD = 2
def stopGriterion(type,value,threshold):
#设置三种不同的停止策略
if type == STOP_ITER:
return value > threshold
elif type == STOP_COST:
return abs(value[-1]-value[-2]) < threshold
elif type == STOP_GRID:
return np.linalg.norm(value) < threshold
import numpy.random
#洗牌
def shuffleData(data):
np.random.shuffle(data)
cols = data.shape[1]
x = data[:,0:cols-1]
y = data[:,cols-1:]
return x, y
import time
def descent(data,theta,batchSize,stopType,thresh,alpha):
#梯度下降求解
init_time = time.time()
i = 0 #迭代次数
k = 0 #batch
x,y = shuffleData(data)
grad = np.zeros(theta.shape) #计算的梯度
costs = [cost(x,y,theta)] #损失值
while True:
grad = gradient(x[k:k+batchSize],y[k:k+batchSize],theta)
k += batchSize #取batch数量个数据
if k >= n:
k = 0
x, y = shuffleData(data) #重新洗牌
theta = theta - alpha*grad #参数更新
costs.append(cost(x,y,theta))#计算新的损失
i+= 1
if stopType == STOP_ITER:
value = i
elif stopType == STOP_COST:
value = costs
elif stopType == STOP_GRAD:
value = grad
if stopGriterion(stopType,value,thresh):
break
return theta, i-1, costs, grad, time.time()-init_time
def runExpe(data,theta,batchSize,stopType,thresh,alpha):
#import pdb:pdb.set_trace():
theta,iter,costs,grad,dur = descent(data,theta,batchSize,stopType,thresh,alpha)
name = "Original" if(data[:,1]>2).sum() > 1 else "Scaled"
name += " data - learning rate: {} -".format(alpha)
if batchSize == n:
strDescType = "Gradient"
elif batchSize == 1:
strDescType = "Stochastic"
else:
strDescType ="Mini-batch ({})".format(batchSize)
name += strDescType + " descent - Stop"
if stopType == STOP_ITER:
strStop = "{} iterations".format(thresh)
elif stopType ==STOP_COST:
strStop = "costs change < {}".format(thresh)
else:
strStop = "gradient norm < {}".format(thresh)
name += strStop
print("***{}\nTheta: {} - Iter: {} - Last cost: {:03.2f} - Duration: {:03.2f}s".format(name,theta,iter,costs[-1],dur))
fix, ax = plt.subplots(figsize=(12,4))
ax.plot(np.arange(len(costs)),costs,'r')
ax.set_xlabel('Iterations')
ax.set_ylabel('Cost')
ax.set_title(name.upper()+' - Error vs. Iteration')
return theta
#选择的梯度下降方法是基于所有样本的
n = 100
runExpe(orig_data,theta,n,STOP_ITER,thresh=5000,alpha=0.000001)
runExpe(orig_data, theta, n, STOP_GRAD, thresh=0.05, alpha=0.001)
runExpe(orig_data, theta, 1, STOP_ITER, thresh=5000, alpha=0.001)
runExpe(orig_data, theta, 1, STOP_ITER, thresh=15000, alpha=0.000002)
runExpe(orig_data, theta, 16, STOP_ITER, thresh=15000, alpha=0.001)
from sklearn import preprocessing as pp
scaled_data = orig_data.copy()
scaled_data[:,1:3] = pp.scale(orig_data[:,1:3])
runExpe(orig_data, theta, n, STOP_ITER, thresh=5000, alpha=0.001)
runExpe(orig_data, theta, n, STOP_GRAD, thresh=0.02, alpha=0.001)
theta = runExpe(scaled_data, theta, 1, STOP_GRAD, thresh=0.002/5, alpha=0.001)
runExpe(scaled_data, theta, 16, STOP_GRAD, thresh=0.002*2, alpha=0.001)
#设定阈值
def predict(x, theta):
return [1 if x >= 0.5 else 0 for x in model(x,theta)]
scaled_x = scaled_data[:,:3]
y = scaled_data[:,3]
predictions = predict(scaled_x, theta)
correct = [1 if((a==1 and b==1) or (a==0 and b==0)) else 0 for (a,b) in zip(predictions, y)]
accuracy = (sum(map(int, correct)) % len(correct))
print("accuracy={0}%".format(accuracy))