I use the following code to try and make a dataframe from a Tf-Idf vectorizer. The output of the vectorizer's fit_transform is a sparse matrix so I use toarray() to convert to array, and then pandas.DataFrame to convert to dataframe. I also extract the list of features using vectorizer.get_feature_names() and use that as column names for the dataframe.
vect = TfidfVectorizer() X = vect.fit_transform(text_list) word_list = vect.get_feature_names() df1 = pd.DataFrame(X.toarray()) df1.to_excel("temp1.xlsx") df2 = pd.DataFrame(X.toarray(), columns = word_list) df2.to_excel("temp2.xlsx")
In case-1, the dataframe df1 gets exported with no problem. However the column names are missing - labeled 0,1,2 ...
In case-2, I try to include the column names, but the export throws an error.
AttributeError: 'DataFrame' object has no attribute 'data'
Funnily, this error happens only in some cases and not all. For different text data, this problem does not arise. So I think it may have something to do the word_list and maybe formatting.
After a bit more investigation, I found that one of the column names was "render" and that is creating the problem. How to I work around it? The following code throws the same error. df = pd.DataFrame([1,2,3,4,5], columns = ["render"]) followed by df.to_excel("temp.xlsx")
Can someone explain why?