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I have a problem with reduction dimension using scikit-learn and PCA.

I have two numpy matrices, one has size (1050,4096) and another has size (50,4096). I tried to reduce the dimensions of both to yield (1050, 399) and (50,399) but, after doing the pca I got (1050,399) and (50,50) matrices. One matrix is for knn training and another for knn test. What's wrong with my code below?

pca = decomposition.PCA()
pca.fit(train)
pca.n_components = 399
train_reduced = pca.fit_transform(train)
pca.n_components = 399
pca.fit(test)
test_reduced = pca.fit_transform(test)
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1 Answer 1

Call fit_transform() on train, transform() on test:

from sklearn import decomposition

train = np.random.rand(1050, 4096)
test = np.random.rand(50, 4096)

pca = decomposition.PCA()
pca.n_components = 399
train_reduced = pca.fit_transform(train)
test_reduced = pca.transform(test)
share|improve this answer
    
Thanks HYRY, it works! But, if I have a third matrix to reduce dimension (forget about training and testing), which should I use? transform() or fit_transform()? –  mad Mar 15 '13 at 0:33
    
You should use fit_transform() for independent data. In case of (train, test) set, they are the same dataset, so you fit on the train data, and transform both the train and test data. –  HYRY Mar 15 '13 at 0:36
    
thanks again HYRY. –  mad Mar 15 '13 at 0:38

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