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It seems the LogisticRegression implemented in scikit-learn cannot learn the simple boolean functions AND or OR. I would understand XOR giving bad results but AND and OR should be fine. Am I doing something wrong?

from sklearn.linear_model import LogisticRegression, LinearRegression
import numpy as np

bool_and = np.array([0., 0., 0., 1.])
bool_or  = np.array([0., 1., 1., 1.])
bool_xor = np.array([0., 1., 1., 0.])

x = np.array([[0., 0.],
              [0., 1.],
              [1., 0.],
              [1., 1.]])

y = bool_and
logit = LogisticRegression()

#linear = LinearRegression()
#linear.fit(x, y)

print "expected: ", y
print "predicted:", logit.predict(x)
#print linear.predict(x)

gives the following output:

expected:  [0 0 0 1]
predicted: [0 0 0 0]
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FWIW, I can fit a logit model for AND in R without any issues. This suggests the issue is somehow specific to scikits.learn. –  NPE Mar 15 '13 at 18:04

1 Answer 1

up vote 4 down vote accepted

The problem seems to have to do with regularization. The following makes the classifier work:

logit = LogisticRegression(C=100)

Unfortunately, the documentation is a bit sparse, so I am not sure what the range of the C parameter is.

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Nice finding. Maybe the regularization goes something like 10^(-C)? I'll have to check that. Thanks again. –  zermelozf Mar 15 '13 at 22:33
The meaning of C is the same as in support vector machines (because LogisticRegression is a wrapper around LibLinear): its range is (0, ∞) and the higher it's set, the less regularized the model is. I.e., compared to other linear models, C = 1/α. When fitting LR models, always do a parameter sweep to find the right setting of C. –  larsmans Mar 16 '13 at 13:00

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