File:Traintest.svg

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Summary

Description
English: Plots showing a training set and a test set from the same statistical population. Two curves are fit to the training set, one of which is an overfit. By plotting these curves with the test data, the overfitting can be seen.
Date
Source Own work
Author Skbkekas
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  • English (original)
    English (original)
  • Ukrainian
    Ukrainian
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Source code
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Python code

import numpy as np
import matplotlib.pyplot as plt

m = 0.2 ## mesh on the abscissa
s = 3 ## standard deviation of errors

def pdesign(X, d):
    """Generate a polynomial design matrix on X of order d."""
    V = X[:,np.newaxis]
    F = [V**k for k in range(d+1)]
    D = np.concatenate(F, axis=1)
    return D

def regfit(Y, D):
    """Regress Y on D using least squares."""
    U,S,Vt = np.linalg.svd(D,0)
    V = np.transpose(Vt)
    return np.dot(U, np.dot(np.transpose(U), Y))

X = np.arange(-2, 2, m, dtype=np.float64)

D1 = pdesign(X, 3)
D2 = pdesign(X, 13)

EY = X + X**3
Y1 = EY + np.random.normal(size=len(X))*s
Y2 = EY + np.random.normal(size=len(X))*s

Yhat1 = regfit(Y1, D1)
Yhat2 = regfit(Y1, D2)

plt.clf()
plt.figure(figsize=(8,3))
ax1 = plt.axes([0.06,0.1,0.4,0.8])
plt.title("Training set")
plt.plot(X, Y1, 'o')
plt.hold(True)
plt.plot(X, Yhat1, '-', color='green')
plt.plot(X, Yhat2, '-', color='orange')
ax1.set_ylim(-10, 10)
ax1.set_xticks([-2,-1,0,1,2])
ax2 = plt.axes([0.56,0.1,0.4,0.8])
plt.title("Test set")
plt.plot(X, Y2, 'o')
plt.plot(X, Yhat1, '-', color='green')
plt.plot(X, Yhat2, '-', color='orange')
ax2.set_xticks([-2,-1,0,1,2])
ax2.set_ylim(-10, 10)
plt.savefig("traintest.png")
plt.savefig("traintest.svg")

print ((Yhat1-Y1)**2).mean()
print ((Yhat2-Y1)**2).mean()

print ((Yhat1-Y2)**2).mean()
print ((Yhat2-Y2)**2).mean()

Licensing

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w:en:Creative Commons
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11 May 2009

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Date/TimeThumbnailDimensionsUserComment
current04:33, 12 May 2009Thumbnail for version as of 04:33, 12 May 2009720 × 270 (35 KB)Skbkekas{{Information |Description={{en|1=Plots showing a training set and a test set from the same statistical population. Two curves are fit to the training set, one of which is an overfit. By plotting these curves with the test data, the overfitting can be s
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