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Looking at Kaggel's Job Salary Prediction, I see numeric features (like Category) and textual ones (like FullDescription).

How do I go about training on such data? I thought about vectorizing the text using TfidfTransformer, however it creates sparse matrix which many learning algorithms (such as RandomForestRegressor) refuse to work with. Also, once I have the feature vector for the text, how do I combine it with other features?

Any pointers on how to work with such data?


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up vote 3 down vote accepted

I would first learn a linear model on the tf-idf features of each text field independently and add the linear models predictions as a additional feature to the other features and train an ExtraTreesRegressor or GradientBoostedTreeRegressor on the combined features.

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Thanks, that's a great idea - I'll try it out. – lazy1 May 30 '13 at 13:54
Let us know if the combined model is any better than just a linear model on the text features or a random forest on the non-text features only. – ogrisel May 31 '13 at 14:01
BTW: Which regressor works with sparse matrix? – lazy1 May 31 '13 at 18:55
Linear model regressors such as ElasticNet and SGDRegressor should work out of the box and so it the case for non linear SVR or NuSVR regressors. Tree based regressors do not support sparse input yet. – ogrisel Jun 1 '13 at 8:57
@ogrisel: How much of a gain are you expecting by using this dual-model approach? Why not just use your hashingvectorizer combined with SGD (or whatever other linear model that allows partial fitting)? – vgoklani Jun 2 '13 at 4:24

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