As a beginner in programming, I have some problems with the categorization of text via a machine learning experiment with Scikit learn. I use 10-fold cross validation so there is no division in train and test data.

My problem starts in the feature extraction module. This is the code with the error:

vec = DictVectorizer() 
X = vec.fit_transform(instances).toarray()

The last line gives the following error:

TypeError: float() argument must be a string or a number, not 'dict'

Instances is a list of feature vector dictionaries,with a dictionary per document. An example of the beginning of the instances list (you can see a part of the dictionary for the first document).

instances Some features are a dictionary nested in the feature vector dictionary. I don't know how to make it unnested, but maybe this is the problem?

  • 1
    Yes the nested dictionaries are the problem. You must find a way to either encode them to specific values or unwrap them and make them be in the same level as the other key-values.
    – mkaran
    Jul 12, 2017 at 10:11

1 Answer 1


Yes,the problem is with your nested dictionary feature vector. Split them and make them independent features.

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