I have a dataframe with many features, one of them is a list of keywords (space separated). In Weka you can specify a field as being a list of Strings. What is the best way to solve this situation in scikit learn?

Edit: Note that I have many keywords, creating manually a feature for each is not really an option. If someone can propose a way to create those features (initially I have a pandas dataframe) that would be great.

  • So what does WEKA do internally if it doesn't create a feature for each?
    – eickenberg
    Commented Oct 15, 2014 at 11:37
  • I don't know the details of weka unfortunately, but I'd be surprised if it doesn't do so. My concern is mainly on how to automatically create those features. I will clarify the question.
    – DED
    Commented Oct 15, 2014 at 11:39
  • 1
    this may be a lead (not necessarily a complete solution)
    – eickenberg
    Commented Oct 15, 2014 at 12:13
  • Have you read this question and the accepted answer? (In short: use DictVectorizer, don't be afraid of many features, and use an estimator that can handle sparse matrices. The fit docstring will contain the word "sparse".) If it doesn't work, please specify what the strings mean. I've no idea what Weka does with a list of strings.
    – Fred Foo
    Commented Oct 15, 2014 at 19:54


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