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I have a set of trainFeatures and a set of testFeatures with positive, neutral and negative labels:

trainFeats = negFeats + posFeats + neutralFeats
testFeats  = negFeats + posFeats + neutralFeats

For example, one entry inside the trainFeats is

(['blue', 'yellow', 'green'], 'POSITIVE') 

the same for the list of test features, so I specify the labels for each set. My question is how can I use the scikit implementation of Random Forest classifier and SVM to get the accuracy of this classifier altogether with precision and recall scores for each class? The problem is that I am currently using words as features, while from what I read these classifiers require numbers. Is there a way I can achieve my purpose without changing functionality? Many thanks!

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1 Answer 1

up vote 4 down vote accepted

You can look into this scikit-learn tutorial and especially section 2.3 for how to create and use a classifier. The example uses SVM, however it is simple to use RandomForestClassifier instead as all classifiers implement the fit and predict methods.

When working with text features you can use CountVectorizer or DictVectorizer. Take a look at feature extraction and especially section 4.1.3.

You can find an example for classifying text documents here.

Then you can get the precision and recall of the classifier with the classification report.

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Thanks for your reply! My problem is that I am currently using words as features, while from what I read I see that Random Forest and SVM require numbers. This is where I am totally stuck! –  Crista23 Feb 24 '14 at 0:48
    
@Crista23 I see. That wasn't mentioned in the first version of the question. I updated the answer with more info. –  dnll Feb 24 '14 at 8:52
    
Thanks for your response! It was very useful indeed! I am still facing one issue when I try to vectorize the testData: vec = DictVectorizer(sparse=False) testFeatures1 = vec.fit_transform(testFeatures) gives me a Memory Error. It works ok in the case of the train data since I have around 8000 instances, but on the test data there are 80000 and it displays a memory error. Is there anything I can do abut that? I really need to test on all test data. Thanks! –  Crista23 Feb 24 '14 at 14:22
    
@Crista23 that seems like an entirely different question. Depending on your use case there might be different approaches. I suggest you post a new question with some more details so that others can contribute as well. Also, try searching here, there might be some similar questions already. –  dnll Feb 24 '14 at 15:43
    
You can try to classify the test set in batches. –  Matt Feb 24 '14 at 18:28

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