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I have two types of feature vectors for a dataset. Both types of the feature vectors could give an predicting accuracy about 90% by training a SVM.

To achieve higher accuracy, I plan to combine the two types of feature vectors.

My question is which of the two following strategies I should take:

  1. Train one SVM for each type of feature vectors, and then combine the prediction results linearly.
  2. Merge the two types of feature vectors into a longer one, and then train a SVM.
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1 Answer 1

There's no way of telling which one will get you better accuracy. Simply try and see :)

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Thanks, I've tried both ways, which shows the latter one performs slightly better. – user1992738 Jan 20 '13 at 2:27

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