Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am doing some machine learning and had started using called scikit-learn as recommended in this question and elsewhere. To my surprise it does not appear to provide access to the actual models it trains, e.g. if I create an SVM, linear classifier or even a decision tree, it doesn't seem to provide a way for me to see the parameters selected for the actual trained model.

Seeing the actual model is quite useful if the model is being created partly to get a clearer picture of what dominant factors are (e.g. in the case of a decision tree). Seeing the model is also a significant issue if one wants to use python to train the model and some other code to actually implement it.

Am I missing something in scikit-learn or is there some way to get at this in scikit-learn? If not, what is the a good free machine learning workbench in which models are transparently available (doesn't have to be python)?

share|improve this question
It's called scikit-learn, not scipy sklearn. sklearn is the library's top-level module name. –  larsmans Jun 8 '12 at 10:20
Doh! Thanks. My mistake, don't know what I was thinking. Question corrected. –  John Robertson Jun 8 '12 at 14:08
BTW I have started to improve the documentation of the forest models to add a new paragraph about the feature importance computation stuff as it was missing scikit-learn.org/dev/modules/… –  ogrisel Jun 13 '12 at 14:55
add comment

1 Answer 1

up vote 4 down vote accepted

The fitted model parameters are stored directly as attributes on the model instance. There is a specific naming convention for those fitted parameters: they all end with a trailing underscore as opposed to user-provided constructor parameters (a.k.a. hyperparameters) which don't.

The type of the fitted attributes is algorithm-dependent. For instance for a kernel Support Vector Machine you will have the arrays support vectors, dual coefs and intercepts while for random forests and extremly randomized trees you will have a collection of binary trees (internally represented in memory as contiguous numpy arrays for performance matters: structure of arrays representation).

See the Attributes section of the docstring of each model for more details, for instance for SVC:


For tree based models you also have a helper function to generate a graphivz_export of the learned trees:


To find the importance of features in forests models you should also have a look at the compute_importances parameter, see the following examples for instance:



share|improve this answer
add comment

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.