I have an arff file containing a set of textual sentences. I would like to obtain the absolute frequency of each word within each sentence. I used StringToWordVector.

This is the starting file

@relation dataset @attribute Text string @date 'I'm a movie lover and this is one of the best museums in which ...

After running StringToWordVector I get instances of this type:

@relation dataset1 @attribute word numeric ... {13 2, 19 2, 30 2, 33 1, 53 1, 55 4, 60 1, 61 2, 72 3, 78 1, 89 1, 90 1, 99 1, 106 1,120 1,121 1,123 2,124 5,126 2,136 1,140 1,147 5,148 2,160 1,186 1,198 1,202 1,248 9,253 1, ...}

Since I would like to keep track of the word, instead of using a numeric id, how can I associate the textual word to the frequency obtained after the execution of the stringtowordvector command?


This question was also asked on the Weka mailing list:


The StringToWordVector outputs data in sparse format, where the first value is the 0-based index of the attribute and the second the actual value:


  • Thanks. Is it possible to manipulate this sparse matrix? for example making aggregations on all the instances for each index so as to obtain the total frequency of each attribute on all documents. – user3062889 Apr 16 at 7:00
  • You can access the data in sparse format just like any other Weka dataset. Both, weka.core.SparseInstance and weka.core.DenseInstance both implement weka.core.Instance, which make up the rows in a weka.core.Instances dataset structure. – fracpete Apr 17 at 1:22

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