First of all I started with python yesterday. I'm trying to do text classification with SciKit and a large dataset (250.000 tweets). For the algorithm, every tweet will be represented as a 4000 x 1 vector, so this means the input is 250.000 rows and 4000 columns. When i try to construct this in python, I run out of memory after 8500 tweets (when working with a list and appending it) and when I preallocate the memory I just get the error:
MemoryError (np.zeros(4000,2500000)). Is SciKit not able to work with these large datasets \? Am I doing something wrong (as it is my second day with python)? Is there another way of representing the features so that it can fit in my memory ?
edit: I want the to the Bernoulli NB
edit2: Maybe it is possible with online learning ? read a tweet, let the model use the tweet, remove it from memory , read another, let the model learn... but I don't think Bernoulli NB allows for online learning in scikit-learn