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ALGORITHM-18.py
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ALGORITHM-18.py
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#!/usr/bin/env python
# coding: utf-8
# In[1]:
import numpy as np
from numpy import linalg
def linear_kernel(x1, x2):
return np.dot(x1, x2)
def polynomial_kernel(x, y, p=3):
return (1 + np.dot(x, y)) ** p
def gaussian_kernel(x, y, sigma=5.0):
return np.exp(-linalg.norm(x-y)**2 / (2 * (sigma ** 2)))
class Perceptron(object):
def __init__(self, T=1):
self.T = T
def fit(self, X, y):
n_samples, n_features = X.shape
self.w = np.zeros(n_features, dtype=np.float64)
self.b = 0.0
for t in range(self.T):
for i in range(n_samples):
if self.predict(X[i])[0] != y[i]:
self.w += y[i] * X[i]
self.b += y[i]
def project(self, X):
return np.dot(X, self.w) + self.b
def predict(self, X):
X = np.atleast_2d(X)
return np.sign(self.project(X))
class KernelPerceptron(object):
def __init__(self, kernel=linear_kernel, T=1):
self.kernel = kernel
self.T = T
def fit(self, X, y):
n_samples, n_features = X.shape
#np.hstack((X, np.ones((n_samples, 1))))
self.alpha = np.zeros(n_samples, dtype=np.float64)
# Gram matrix
K = np.zeros((n_samples, n_samples))
for i in range(n_samples):
for j in range(n_samples):
K[i,j] = self.kernel(X[i], X[j])
for t in range(self.T):
for i in range(n_samples):
if np.sign(np.sum(K[:,i] * self.alpha * y)) != y[i]:
self.alpha[i] += 1.0
# Support vectors
sv = self.alpha > 1e-5
ind = np.arange(len(self.alpha))[sv]
self.alpha = self.alpha[sv]
self.sv = X[sv]
self.sv_y = y[sv]
print( "%d support vectors out of %d points" % (len(self.alpha),
n_samples))
def project(self, X):
y_predict = np.zeros(len(X))
for i in range(len(X)):
s = 0
for a, sv_y, sv in zip(self.alpha, self.sv_y, self.sv):
s += a * sv_y * self.kernel(X[i], sv)
y_predict[i] = s
return y_predict
def predict(self, X):
X = np.atleast_2d(X)
n_samples, n_features = X.shape
#np.hstack((X, np.ones((n_samples, 1))))
return np.sign(self.project(X))
if __name__ == "__main__":
import pylab as pl
def gen_lin_separable_data():
# generate training data in the 2-d case
mean1 = np.array([0, 2])
mean2 = np.array([2, 0])
cov = np.array([[0.8, 0.6], [0.6, 0.8]])
X1 = np.random.multivariate_normal(mean1, cov, 100)
y1 = np.ones(len(X1))
X2 = np.random.multivariate_normal(mean2, cov, 100)
y2 = np.ones(len(X2)) * -1
return X1, y1, X2, y2
def gen_non_lin_separable_data():
mean1 = [-1, 2]
mean2 = [1, -1]
mean3 = [4, -4]
mean4 = [-4, 4]
cov = [[1.0,0.8], [0.8, 1.0]]
X1 = np.random.multivariate_normal(mean1, cov, 50)
X1 = np.vstack((X1, np.random.multivariate_normal(mean3, cov, 50)))
y1 = np.ones(len(X1))
X2 = np.random.multivariate_normal(mean2, cov, 50)
X2 = np.vstack((X2, np.random.multivariate_normal(mean4, cov, 50)))
y2 = np.ones(len(X2)) * -1
return X1, y1, X2, y2
def gen_lin_separable_overlap_data():
# generate training data in the 2-d case
mean1 = np.array([0, 2])
mean2 = np.array([2, 0])
cov = np.array([[1.5, 1.0], [1.0, 1.5]])
X1 = np.random.multivariate_normal(mean1, cov, 100)
y1 = np.ones(len(X1))
X2 = np.random.multivariate_normal(mean2, cov, 100)
y2 = np.ones(len(X2)) * -1
return X1, y1, X2, y2
def split_train(X1, y1, X2, y2):
X1_train = X1[:90]
y1_train = y1[:90]
X2_train = X2[:90]
y2_train = y2[:90]
X_train = np.vstack((X1_train, X2_train))
y_train = np.hstack((y1_train, y2_train))
return X_train, y_train
def split_test(X1, y1, X2, y2):
X1_test = X1[90:]
y1_test = y1[90:]
X2_test = X2[90:]
y2_test = y2[90:]
X_test = np.vstack((X1_test, X2_test))
y_test = np.hstack((y1_test, y2_test))
return X_test, y_test
def plot_margin(X1_train, X2_train, clf):
def f(x, w, b, c=0):
# given x, return y such that [x,y] in on the line
# w.x + b = c
return (-w[0] * x - b + c) / w[1]
pl.plot(X1_train[:,0], X1_train[:,1], "ro")
pl.plot(X2_train[:,0], X2_train[:,1], "bo")
# w.x + b = 0
a0 = -4; a1 = f(a0, clf.w, clf.b)
b0 = 4; b1 = f(b0, clf.w, clf.b)
pl.plot([a0,b0], [a1,b1], "k")
pl.axis("tight")
pl.show()
def plot_contour(X1_train, X2_train, clf):
pl.plot(X1_train[:,0], X1_train[:,1], "ro")
pl.plot(X2_train[:,0], X2_train[:,1], "bo")
pl.scatter(clf.sv[:,0], clf.sv[:,1], s=100, c="g")
X1, X2 = np.meshgrid(np.linspace(-6,6,50), np.linspace(-6,6,50))
X = np.array([[x1, x2] for x1, x2 in zip(np.ravel(X1), np.ravel(X2))])
Z = clf.project(X).reshape(X1.shape)
pl.contour(X1, X2, Z, [0.0], colors='k', linewidths=1, origin='lower')
pl.axis("tight")
pl.show()
def test_linear():
X1, y1, X2, y2 = gen_lin_separable_data()
#X1, y1, X2, y2 = gen_lin_separable_overlap_data()
X_train, y_train = split_train(X1, y1, X2, y2)
X_test, y_test = split_test(X1, y1, X2, y2)
clf = Perceptron(T=3)
clf.fit(X_train, y_train)
y_predict = clf.predict(X_test)
correct = np.sum(y_predict == y_test)
print( "%d out of %d predictions correct" % (correct, len(y_predict)))
plot_margin(X_train[y_train==1], X_train[y_train==-1], clf)
def test_kernel():
X1, y1, X2, y2 = gen_non_lin_separable_data()
X_train, y_train = split_train(X1, y1, X2, y2)
X_test, y_test = split_test(X1, y1, X2, y2)
clf = KernelPerceptron(gaussian_kernel, T=20)
clf.fit(X_train, y_train)
y_predict = clf.predict(X_test)
correct = np.sum(y_predict == y_test)
print( "%d out of %d predictions correct" % (correct, len(y_predict)))
plot_contour(X_train[y_train==1], X_train[y_train==-1], clf)
test_linear()
# In[2]:
test_kernel()
# In[ ]: