0

Here is my problem:

I have a dataframe like this:

id   tfidf_weights   
1    {word1: 0.01, word2: 0.01, word3: 0.01, ...}
2    {word4: 0.01, word5: 0.01, word6: 0.01, ...}
3    {word7: 0.01, word8: 0.01, word9: 0.01, ...}
4    {word10: 0.01, word11: 0.01, word12: 0.01, ...}
5    {word13: 0.01, word14: 0.01, word15: 0.01, ...}    
.
.
.

column 'id' represent the ids of the docs and 'tfidf_weights' the tfidf weight for each word of each docs.

from this dataframe, i can obtain a dict with the following structure:

mydict = {1:{word1: 0.01, word2: 0.01, word3: 0.01, ...}, 2:{word4: 0.01, word5: 0.01, word6: 0.01, ...}, 3:{word7: 0.01, word8: 0.01, word9: 0.01, ...}, 4:{word10: 0.01, word11: 0.01, word12: 0.01, ...}, 5:{word13: 0.01, word14: 0.01, word15: 0.01, ...}, ...}

what i want to do is, from this dictionary, obtain a matrix like this:

      word1     word2     word3     word4   ...
1     0.01      0.01      0.01      0.01     
2     0.01      0.01      0.01      0.01
3     0.01      0.01      0.01      0.01
4     0.01      0.01      0.01      0.01
5     0.01      0.01      0.01      0.01
.
.
.

Thank you for your help !

0

You can convert a list of dictionaries into a dataframe by using the pandas DataFrame class directly.

import pandas as pd

a = [{"0": 0}, {"1": 1}]
df = pd.DataFrame(a)

To apply this to your problem, all you have to do is turn mydict into a list of dictionaries instead of a dictionary of dictionaries.

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  • Yes but i need to convert it into a matrix not into a dataframe because i want to calculate similarities between docs and i believe you need a matrix of tfidf weights for each doc – nipato Jul 3 '19 at 14:30
  • You have multiple options: you could first convert it to a dataframe, and then call df.as_matrix. Alternatively, you could use the DictVectorizer from sklearn, that will also take care of the problem for you. – amdex Jul 3 '19 at 14:32
  • Yes i have heard of DictVectorizer i will try that, thank you ! – nipato Jul 3 '19 at 14:44

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