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Sophie

distrib > Mandriva > 2010.2 > i586 > media > contrib-backports > by-pkgid > e578866d55cd81fdb23827cdf3cec911 > files > 380

python-scikits-learn-0.6-1mdv2010.2.i586.rpm

"""
==========================
SGD: Convex Loss Functions
==========================

Plot the convex loss functions supported by `scikits.learn.linear_model.stochastic_gradient`.
"""
print __doc__

import numpy as np
import pylab as pl
from scikits.learn.linear_model.sgd_fast import Hinge, \
     ModifiedHuber, SquaredLoss

###############################################################################
# Define loss funcitons
xmin, xmax = -3, 3
hinge = Hinge()
log_loss = lambda z, p: np.log2(1.0 + np.exp(-z))
modified_huber = ModifiedHuber()
squared_loss = SquaredLoss()

###############################################################################
# Plot loss funcitons
xx = np.linspace(xmin, xmax, 100)
pl.plot([xmin, 0, 0, xmax], [1, 1, 0, 0], 'k-',
        label="Zero-one loss")
pl.plot(xx, [hinge.loss(x,1) for x in xx], 'g-',
        label="Hinge loss")
pl.plot(xx, [log_loss(x,1) for x in xx], 'r-',
        label="Log loss")
pl.plot(xx, [modified_huber.loss(x,1) for x in xx], 'y-',
        label="Modified huber loss")
#pl.plot(xx, [2.0*squared_loss.loss(x,1) for x in xx], 'c-',
#        label="Squared loss")
pl.ylim((0, 5))
pl.legend(loc="upper right")
pl.xlabel(r"$y \cdot f(x)$")
pl.ylabel("$L(y, f(x))$")
pl.show()