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Fayl:Regressions sine demo.svg

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Juwmaq

Sıpatlama
English: Predictions over a perturbed sine curve with various learning models, e.g., GPR, KRR, SVR. The plot was prepared using scikit-learn.
Sáne
Fayl deregi Óz dóretiwshilik jumısım
 
This W3C-unspecified plot was created with Matplotlib.
Avtor Shiyu Ji

Python 3 Source Code

# 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

# Fit KernelRidge with param selection
param_grid_kr = {"alpha": [1e-1, 1e-2, 1e-3],
              "kernel": [ExpSineSquared(l, p)
                         for l in np.logspace(-2, 2, 10)
                         for p in np.logspace(0, 2, 10)]}
kr = GridSearchCV(KernelRidge(), cv=5, param_grid=param_grid_kr)
stime = time.time()
kr.fit(X, y)
print("Time for KRR fitting: %.3f" % (time.time() - stime))

# Fit GPR
gp_kernel = ExpSineSquared(1.0, 5.0, \
             periodicity_bounds=(1e-2, 1e1)) \
             + WhiteKernel(1e-1)
gpr = GaussianProcessRegressor(kernel=gp_kernel)
stime = time.time()
gpr.fit(X, y)
print("Time for GPR fitting: %.3f" % (time.time() - stime))

# Fit SVR
svr = SVR(kernel="rbf", C=1, gamma=1)
stime = time.time()
svr.fit(X, y)
print("Time for SVR fitting: %.3f" % (time.time() - stime))

# Predict using kernel ridge
X_plot = np.linspace(0, 20, 10000)[:, None]
stime = time.time()
y_kr = kr.predict(X_plot)
print("Time for KRR prediction: %.3f" % (time.time() - stime))

# Predict using Gaussian process
stime = time.time()
y_gpr = gpr.predict(X_plot, return_std=False)
print("Time for GPR prediction: %.3f" % (time.time() - stime))

stime = time.time()
y_gpr, y_std = gpr.predict(X_plot, return_std=True)
print("Time for GPR prediction with standard-deviation: %.3f"
      % (time.time() - stime))

# Predict using SVR
stime = time.time()
y_svr = svr.predict(X_plot)
print("Time for SVR prediction: %.3f" % (time.time() - stime))

# 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_svr, color='red', lw=lw, label='SVR (kernel=%s, C=%s, gamma=%s)' % (svr.get_params()['kernel'], svr.get_params()['C'], svr.get_params()['gamma']))
plt.plot(X_plot, y_kr, color='turquoise', lw=lw,
         label='KRR (%s)' % kr.best_params_)
plt.plot(X_plot, y_gpr, color='darkorange', lw=lw,
         label='GPR (%s)' % gpr.kernel_)
plt.fill_between(X_plot[:, 0], y_gpr - y_std, y_gpr + y_std, color='darkorange',
                 alpha=0.2)
plt.xlabel('data')
plt.ylabel('target')
plt.xlim(0, 20)
plt.ylim(-3, 5)
plt.title('GPR v.s. Kernel Ridge v.s. SVR')
plt.legend(loc="best",  scatterpoints=1, prop={'size': 8})

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

Licenziyalaw

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  • Bólisiw – Jumıstı nusqalaw, tarqatıw hám uzatıw
  • Remiks qılıw – Jumısqa beyimlesiw
Tómendegi shártler tiykarında :
  • atribut – Siz tiyisli kredit beriwińiz, licenziyaǵa siltemeni usınıwıńız hám ózgertiwler kiritilgenligin kórsetiwińiz kerek. Siz bunı hár qanday aqılǵa say jol menen etiwińiz múmkin, biraq licenziar sizdi yamasa siziń paydalanıwıńızdı maqullawın usınıs etetuǵın tárizde emes.
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