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I am using scikit-learning to do some dimension reduce task. My training/test data is in the libsvm format. It is a large sparse matrix in half million columns.

I use load_svmlight_file function load the data, and by using SparsePCA, the scikit-learning throw out an exception of the input data error.

How to fix it?

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Please post at least the exception message. –  larsmans Aug 4 '12 at 18:51
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up vote 7 down vote accepted

SparsePCA is an algorithm for finding a sparse decomposition (the components have a sparsity constraint) on dense data.

If you want to do vanilla PCA on sparse data you should use sklearn.decomposition.RandomizedPCA that implements an scalable approximate method that works on both sparse and dense data.

IIRC sklearn.decomposition.PCA only works on dense data at the moment. Support for sparse data could be added in the future by delegating the SVD computation on the sparse data matrix to arpack for instance.

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Thanks! It works! But the PCA result is terrible bad :( –  Bing Hsu Aug 22 '12 at 18:16
    
Do you mean incorrect? Or useless for your task? If you used the RandomizedPCA try to play with the number of power iterations iterated_power to see if you can improve the results (3 by default, you can try between between 0 an 10 for instance). –  ogrisel Aug 22 '12 at 21:00
    
For more details have a look at the reference documentation scikit-learn.org/dev/modules/generated/… and the linked references. –  ogrisel Aug 22 '12 at 21:01
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