I'm attempting to use sklearn 0.11's LogisticRegression object to fit a model on 200,000 observations with about 80,000 features. The goal is to classify short text descriptions into 1 of 800 classes.
When I attempt to fit the classifier pythonw.exe gives me:
Application Error "The instruction at ... referenced memory at 0x00000000". The memory could not be written".
The features are extremely sparse, about 10 per observation, and are binary (either 1 or 0), so by my back of the envelope calculation my 4 GB of RAM should be able to handle the memory requirements, but that doesn't appear to be the case. The models only fit when I use fewer observations and/or fewer features.
If anything, I would like to use even more observations and features. My naive understanding is that the liblinear library running things behind the scenes is capable of supporting that. Any ideas for how I might squeeze a few more observations in?
My code looks like this:
y_vectorizer = LabelVectorizer(y) # my custom vectorizer for labels y = y_vectorizer.fit_transform(y) x_vectorizer = CountVectorizer(binary = True, analyzer = features) x = x_vectorizer.fit_transform(x) clf = LogisticRegression() clf.fit(x, y)
The features() function I pass to analyzer just returns a list of strings indicating the features detected in each observation.
I'm using Python 2.7, sklearn 0.11, Windows XP with 4 GB of RAM.