如何在Python中为逻辑回归绘制决策边界?

时间:2019-12-03 11:22:01

标签: python matplotlib classification logistic-regression binary-decision-diagram

我试图在逻辑回归中绘制用于边界分类的决策边界,但是我不太了解应该如何做。

这是我生成的数据集,使用numpy对它进行逻辑回归

import numpy as np
import matplotlib.pyplot as plt


# class 0:
# covariance matrix and mean
cov0 = np.array([[5,-4],[-4,4]])
mean0 = np.array([2.,3])
# number of data points
m0 = 1000

# class 1
# covariance matrix
cov1 = np.array([[5,-3],[-3,3]])
mean1 = np.array([1.,1])
# number of data points
m1 = 1000

# generate m gaussian distributed data points with
# mean and cov.
r0 = np.random.multivariate_normal(mean0, cov0, m0)
r1 = np.random.multivariate_normal(mean1, cov1, m1)

X = np.concatenate((r0,r1))

enter image description here

在应用逻辑回归后,我发现最好的theta是:

thetas = [1.2182441664666837, 1.3233825647558795, -0.6480886684022018]

我尝试通过以下方式绘制决策界限:

yy = -(thetas[0] + thetas[1]*X)/thetas[1][2]
plt.plot(X,yy)

但是,出现的图形的斜率与预期的相反: enter image description here

预先感谢

1 个答案:

答案 0 :(得分:0)

我认为您有2个错误:

  • yy = -(thetas[0] + thetas[1]*X)/thetas[1][2]

    为什么用thetas[1][2]代替theta[2]

  • ,为什么要转换X完整的数据集?

您只能将转换应用于最小值x和最大值x:

minx = np.min(X[:, 0])
maxx = np.max(X[:, 1])

## compute transformation : 

y1 = -(thetas[0] + thetas[1]*minx) / thetas[2]
y2 = -(thetas[0] + thetas[1]*maxx) / thetas[2]

## then plot the line [(minx, y1), (maxx, y2)]

plt.plot([minx, maxx], [y1, y2], c='black')

使用sklearn LogisticRegression完成工作代码:

import numpy as np
import matplotlib.pyplot as plt
from sklearn.linear_model import LogisticRegression

# Youre job :
# =============

# class 0:
# covariance matrix and mean
cov0 = np.array([[5,-4],[-4,4]])
mean0 = np.array([2.,3])
# number of data points
m0 = 1000

# class 1
# covariance matrix
cov1 = np.array([[5,-3],[-3,3]])
mean1 = np.array([1.,1])
# number of data points
m1 = 1000

# generate m gaussian distributed data points with
# mean and cov.
r0 = np.random.multivariate_normal(mean0, cov0, m0)
r1 = np.random.multivariate_normal(mean1, cov1, m1)

X = np.concatenate((r0,r1))

## Added lines :

Y = np.concatenate((np.zeros(m0), np.ones(m1)))

model = LogisticRegression().fit(X,Y)

coefs =list(model.intercept_)
coefs.extend(model.coef_[0].tolist())
xmin = np.min(X[:, 0])
xmax = np.max(X[:, 0])


def bound(x):
    return -(coefs[0] + coefs[1] * x) / coefs[2]

p1 = np.array([xmin, bound(xmin)])
p2 = np.array([xmax, bound(xmax)])

plt.plot(r0[:, 0], r0[:, 1], ls='', marker='.', c='red')
plt.plot(r1[:, 0], r1[:, 1], ls ='', marker='.', c='blue')
plt.plot([p1[0], p1[1]], [p2[0], p2[1]], c='black')
plt.show()

更新

final plot link