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I am using scikit learn to calculate the basic chi-square statistics(sklearn.feature_selection.chi2(X, y)):

def chi_square(feat,target):
"""   """
from sklearn.feature_selection import chi2
ch,pval =  chi2(feat,target)
return ch,pval



chisq,p = chi_square(feat_mat,target_sc)
print(chisq)
print("**********************")
print(p)

I have 1500 samples,45 features,4 classes. The input is a feature matrix with 1500x45 and a target array with 1500 components. The feature matrix is not sparse. When I run the program and I print the arrray "chisq" with 45 components, I can see that the component 13 has a negative value and p = 1. How is it possible? Or what does it mean or what is the big mistake that I am doing?

I am attaching the printouts of chisq and p:

[  9.17099260e-01   3.77439701e+00   5.35004211e+01   2.17843312e+03
   4.27047184e+04   2.23204883e+01   6.49985540e-01   2.02132664e-01
   1.57324454e-03   2.16322638e-01   1.85592258e+00   5.70455805e+00
   1.34911126e-02  -1.71834753e+01   1.05112366e+00   3.07383691e-01
   5.55694752e-02   7.52801686e-01   9.74807972e-01   9.30619466e-02
   4.52669897e-02   1.08348058e-01   9.88146259e-03   2.26292358e-01
   5.08579194e-02   4.46232554e-02   1.22740419e-02   6.84545170e-02
   6.71339545e-03   1.33252061e-02   1.69296016e-02   3.81318236e-02
   4.74945604e-02   1.59313146e-01   9.73037448e-03   9.95771327e-03
   6.93777954e-02   3.87738690e-02   1.53693158e-01   9.24603716e-04
   1.22473138e-01   2.73347277e-01   1.69060817e-02   1.10868365e-02
   8.62029628e+00]

**********************

[  8.21299526e-01   2.86878266e-01   1.43400668e-11   0.00000000e+00
   0.00000000e+00   5.59436980e-05   8.84899894e-01   9.77244281e-01
   9.99983411e-01   9.74912223e-01   6.02841813e-01   1.26903019e-01
   9.99584918e-01   1.00000000e+00   7.88884155e-01   9.58633878e-01
   9.96573548e-01   8.60719653e-01   8.07347364e-01   9.92656816e-01
   9.97473024e-01   9.90817144e-01   9.99739526e-01   9.73237195e-01
   9.96995722e-01   9.97526259e-01   9.99639669e-01   9.95333185e-01
   9.99853998e-01   9.99592531e-01   9.99417113e-01   9.98042114e-01
   9.97286030e-01   9.83873717e-01   9.99745466e-01   9.99736512e-01
   9.95239765e-01   9.97992843e-01   9.84693908e-01   9.99992525e-01
   9.89010468e-01   9.64960636e-01   9.99418323e-01   9.99690553e-01
   3.47893682e-02]
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1 Answer

If you put some print statements in the code defining chi2,

def chi2(X, y):
    X = atleast2d_or_csr(X)
    Y = LabelBinarizer().fit_transform(y)
    if Y.shape[1] == 1:
        Y = np.append(1 - Y, Y, axis=1)
    observed = safe_sparse_dot(Y.T, X)          # n_classes * n_features
    print(repr(observed))
    feature_count = array2d(X.sum(axis=0))
    class_prob = array2d(Y.mean(axis=0))
    expected = safe_sparse_dot(class_prob.T, feature_count)
    print(repr(expected))
    return stats.chisquare(observed, expected)

you'll see that expected ends up having some negative values.

import numpy as np
import sklearn.feature_selection as FS

x = np.array([-0.23918515, -0.29967287, -0.33007592, 0.07383528, -0.09205183,
              -0.12548226, 0.04770942, -0.54318463, -0.16833203, -0.00332341,
              0.0179646, -0.0526383, 0.04288736, -0.27427317, -0.16136621,
              -0.09228812, -0.2255725, -0.03744027, 0.02953499, -0.17387492])

y = np.array([1, 2, 2, 1, 1, 1, 1, 3, 1, 1, 3, 2, 2, 1, 1, 2, 1, 2, 1, 1],
             dtype = 'int64')

FS.chi2(x.reshape(-1,1),y)

yields

observed:
array([[-1.31238179],
       [-0.76922812],
       [-0.52522003]])

expected:
array([[-1.56409796],
       [-0.78204898],
       [-0.26068299]])

stats.chisquared(observed, expected) is then called. There, observed and expected are assumed to be frequencies of categories. They should all be non-negative numbers since frequencies are non-negative.

I'm not familiar enough with scikits-learn to suggest how your problem should be fixed, but it appears that the kind of data you are sending to chi2 is of the wrong sort, since expected should be non-negative.

(e.g. Could it be that the x values above should all be positive and represent frequencies of observations?)

share|improve this answer
    
Thanks unutbu. Both the feature matrix and the target arrays are numpy arrays. I checked my data and the "feature matrix" has dtype= float64. The target array that contains the target values between (0,1,2,3) is typed as "int64". Ok I may change the dtype of the target array to float but I still get the same problem. –  user963386 Oct 20 '12 at 13:16
    
Hm, sorry then. Can you simplify your data to make the error easily reproducible? –  unutbu Oct 20 '12 at 17:15
    
one column of the feature matrix with 20 rows (numpy float 64): [-0.23918515 -0.29967287 -0.33007592 0.07383528 -0.09205183 -0.12548226 0.04770942 -0.54318463 -0.16833203 -0.00332341 0.0179646 -0.0526383 0.04288736 -0.27427317 -0.16136621 -0.09228812 -0.2255725 -0.03744027 0.02953499 -0.17387492] 20 rows of the target as int64:[1 2 2 1 1 1 1 3 1 1 3 2 2 1 1 2 1 2 1 1] –  user963386 Oct 20 '12 at 17:53
    
I must have misunderstood the usage of chi-square in feature ranking (classification) where there are "features"that are not frequencies and the target are a classes(categories). In my case, it will be dificult to get the frequencies for the features because they are float. –  user963386 Oct 20 '12 at 21:25
2  
In practice, chi2 works as long as the data is non-negative. Use the f-score (f_classif) for your data. –  Andreas Mueller Oct 21 '12 at 8:46
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