I have a dataframe column that looks like:

enter image description here

I'm looking into removing special characters. I' hoping to attach the tags (in list of lists) so that I can append the column to an existing df.

This is what I gathered so much, but it doesn't seem to work. Regex in particular is causing me so much pain as it always returns "expected string or byte-like objects".

df = pd.read_csv('flickr_tags_participation_inequality_omit.csv')
#df.dropna(inplace=True) and tokenise
tokens = df["tags"].astype(str).apply(nltk.word_tokenize)

filter_words = ['.',',',':',';','?','@','-','...','!','=', 'edinburgh', 'ecosse', 'écosse', 'scotland']
filtered = [i for i in tokens if i not in filter_words]
#filtered = [re.sub("[.,!?:;-=...@#_]", '', w) for w in tokens]
#the above line didn't work

tokenised_tags= []
for i in filtered:
    tokenised_tags.append(i) #this turns the single lists of tags into lists of lists

The above code doesn't remove the custom-defined stopwords.

Any help is very much appreciated! Thanks!

  • 1
    Hi! COuld you please hardcode your dataframe into your code, for instance with something like df = pd.DataFrame('column1': [...], 'column2': [...], ...)? We don't have access to your csv file.
    – Stef
    Apr 26, 2022 at 14:24
  • What is the exact problem? Removing tokens that are equal to filter_words? Or do you want to remove special chars from all tokens in the tokens list? Apr 26, 2022 at 14:28
  • 1
    Does filtered = [[t for t in tok_sent if t not in filter_words] for tok_sent in tokens] work as you need? Apr 26, 2022 at 14:38
  • Did that help? If not, please provide 1) text input, 2) expected respected output. Apr 26, 2022 at 16:02
  • Sorry, new to Stack so appreciate the comments and advice. The issue I'm having is to do with the above code not actually filtering out the words in filter_words . The dataframe is as: df = pd.DataFrame('ID': 1, 'tags': 'flower red bus ecosse') for illustration.
    – Victoria S
    Apr 30, 2022 at 14:50

1 Answer 1


You need to use

df['filtered'] = df['tags'].apply(lambda x: [t for t in nltk.word_tokenize(x) if t not in filter_words])

Note that nltk.word_tokenize(x) outputs a list of strings so you can apply a regulat list comprehension to it.


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