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Home/ Questions/Q 9241749
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Editorial Team
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Editorial Team
Asked: June 18, 20262026-06-18T08:25:51+00:00 2026-06-18T08:25:51+00:00

I’m experimenting with some document classification task and SVM works well so far on

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I’m experimenting with some document classification task and SVM works well so far on TF*IDF feature vectors. I want to incorporate some new features that are not term frequency based (e.g. document length) and see if these new features contribute towards classification performance. I’m having the following questions:

  1. can I simply concatenate the new features with the old term frequency based features and train an SVM on this heterogeneous feature space?
  2. if not, is Multiple Kernel Learning the way to go about it by training a kernel on each sub feature space and combine them using linear interpolation? (we still don’t have MKL implemented in scikit-learn, right?)
  3. or shall I turn to alternative learners that handle heterogeneous features well, such as MaxEnt and decision trees?

Thank you in advance for your kind advise!

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  1. Editorial Team
    Editorial Team
    2026-06-18T08:25:53+00:00Added an answer on June 18, 2026 at 8:25 am

    1) can I simply concatenate the new features with the old term frequency based features and train an SVM on this heterogeneous feature space?

    Since you tagged this with scikit-learn: yes, you can, and you can use FeatureUnion to do it for you.

    2) if not, is Multiple Kernel Learning the way to go about it by training a kernel on each sub feature space and combine them using linear interpolation? (we still don’t have MKL implemented in scikit-learn, right?)

    Linear SVMs are the standard model for this task. Kernel methods are too slow for real-world text classification (except maybe with training algorithms like LaSVM, but that’s not implemented in scikit-learn).

    3) or shall I turn to alternative learners that handle heterogeneous features well, such as MaxEnt and decision trees?

    SVMs handle heterogenous features just as well as MaxEnt/logistic regression. In both cases, you really must input scaled data, e.g. with MinMaxScaler. Note that scikit-learn’s TfidfTransformer produces normalized vectors by default, so you don’t need to scale its output, just the other features.

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