I am trying to get the scores of all the features of my data set.

file_data = numpy.genfromtxt(input_file)
y = file_data[:,-1]
X = file_data[:,0:-1]

x_new = SelectKBest(chi2, k='all').fit_transform(X,y)

Before the first row of X had the "Feature names" in string format but I was getting "Input contains NaN, infinity or a value too large for dtype('float64')" error. So, now X contains only the data and y contains the target values(1,-1).

How can I get the score of each feature from SelectKBest(trying to use Uni-variate feature selection)?


  • Looks like you can just do x_new = SelectKBest(chi2, k='all') followed by x_new.scores_ – Ryan Sep 21 '15 at 18:25
  • @Ryan You mean like this: x_new = SelectKBest(chi2, k='all').fit_transform(X,y) print(x_new.scores_)? It gives me "'numpy.ndarray' object has no attribute 'scores_'" error. I apologize, I am kinda new to Python. – Black Dragon Sep 21 '15 at 18:41
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    x_new = SelectKBest(chi2, k='all') then x_new.fit_transform(X,y) then print x_new.scores_ – Ryan Sep 21 '15 at 18:44
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    The scores_ are accessible from the SelectKBest object. When you fit_transform the object that is returned is a numpy array – Ryan Sep 21 '15 at 19:23
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    @Ryan Using x_new as a variable name for an estimator object (which is not a new version of X) makes your explanation confusing. Maybe just call it selector? The OP was using x_new to refer to the transformed X. – ldirer Sep 21 '15 at 21:35


You just have to do something like this.

file_data = numpy.genfromtxt(input_file)
y = file_data[:,-1]
X = file_data[:,0:-1]

selector = SelectKBest(chi2, k='all').fit(X,y)
x_new = selector.transform(X) # not needed to get the score
scores = selector.scores_

Your problem

When you use directly .fit_transform(features, target), the selector is not stored and you are returning the selected features. However, the scores is an attribute of the selector. In order to get it, you have to use .fit(features, target). Once you have your selector fitted, you can get the selected features by calling selector.transform(features), as you can see in the code avobe.

As I commented in the code, you don't need to have transformed the features to get the score. Just with fitting them is enough.


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