File:Svr epsilons demo.svg

Summary

Description
English: SVR with different epsilons. The data was generated by normally perturbing a sine curve. The plot was prepared using scikit-learn.
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Source Own work
Author Shiyu Ji
SVG development
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Source code

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# Note: the original version of this demo is in sklearn doc:
# http://scikit-learn.org/stable/auto_examples/gaussian_process/plot_compare_gpr_krr.html
# http://scikit-learn.org/stable/auto_examples/plot_kernel_ridge_regression.html
# Authors: Jan Hendrik Metzen <jhm@informatik.uni-bremen.de>
# License: BSD 3 clause

import time

import numpy as np
import matplotlib
matplotlib.use('svg')
import matplotlib.pyplot as plt

from sklearn.svm import SVR
from sklearn.kernel_ridge import KernelRidge
from sklearn.model_selection import GridSearchCV
from sklearn.gaussian_process import GaussianProcessRegressor
from sklearn.gaussian_process.kernels import WhiteKernel, ExpSineSquared

rng = np.random.RandomState(0)

# Generate sample data
X = 15 * rng.rand(100, 1)
y = np.sin(X).ravel()
y[::2] += rng.normal(scale = 1.0, size = X.shape[0] // 2)  # add noise

# epsilon = 0.01
svr_e001 = SVR(kernel="rbf", epsilon=0.01, C=1)
svr_e001.fit(X, y)

# epsilon = 0.1
svr_e01 = SVR(kernel="rbf", epsilon=0.1, C=1)
svr_e01.fit(X, y)

# epsilon = 1.0
svr_e10 = SVR(kernel="rbf", epsilon=1.0, C=1)
svr_e10.fit(X, y)

# epsilon = 2.0
svr_e20 = SVR(kernel="rbf", epsilon=2.0, C=1)
svr_e20.fit(X, y)

X_plot = np.linspace(0, 20, 10000)[:, None]
# Predict using SVR
y_e001 = svr_e001.predict(X_plot)
y_e01 = svr_e01.predict(X_plot)
y_e10 = svr_e10.predict(X_plot)
y_e20 = svr_e20.predict(X_plot)

# Plot results
plt.figure(figsize=(10, 5))
lw = 2
plt.scatter(X, y, c='k', label='Data')
plt.plot(X_plot, np.sin(X_plot), color='navy', lw=lw, label='True')
plt.plot(X_plot, y_e001,color='brown', lw=lw, label = 'epsilon = 0.01')
plt.plot(X_plot, y_e01, color='turquoise', lw=lw,
         label='epsilon = 0.1')
plt.plot(X_plot, y_e10, color='orange', lw=lw,
         label='epsilon = 1.0')
plt.plot(X_plot, y_e20, color='red', lw=lw,
         label='epsilon = 2.0')
plt.xlabel('data')
plt.ylabel('target')
plt.xlim(0, 20)
plt.ylim(-3, 5)
plt.title('SVR (rbf kernel) with Different Epsilons')
plt.legend(loc="best",  scatterpoints=1, prop={'size': 8})

plt.savefig('svr_epsilons_demo.svg', format='svg')

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Shiyu Ji, the copyright holder of this work, hereby publishes it under the following license:
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Category:CC-BY-SA-4.0#Svr%20epsilons%20demo.svgCategory:Self-published work
Category:Machine learning algorithms Category:Regression analysis
Category:CC-BY-SA-4.0 Category:Images with Python source code Category:Machine learning algorithms Category:Regression analysis Category:Self-published work Category:Valid SVG created with Python