I am trying to count the frequency of hashtag words in the 'text' column of my dataframe.

index        text
1            ello ello ello ello #hello #ello
2            red green blue black #colours
3            Season greetings #hello #goodbye 
4            morning #goodMorning #hello
5            my favourite animal #dog

word_freq = df.text.str.split(expand=True).stack().value_counts()

The above code will perform a frequency count on all strings in the text column, but I just to return the hashtag frequencies.

For example after running the code on my dataframe above, it should return

#hello        3
#goodbye      1
#goodMorning  1
#ello         1
#colours      1
#dog          1

Is there a way of slightly re-jigging my word_freq code so it only counts hashtag words and returns them in the way I put above? Thanks in advance.

  • 1
    Please include Minimal, Reproducible Example – sushanth Aug 3 at 11:18
  • did you try to filter words in cells and keep only words which starts with # ? – furas Aug 3 at 14:40
  • Welcome to SO. The rules require you to show you tried to adapt the code yourself, and post a Minimal, Complete, Verifiable Example. This has no MCVE. You can't just post a spec of what code you want written for you. – smci Aug 3 at 15:37

Use Series.str.findall on column text to find all hashtag words then use Series.explode + Series.value_counts:

counts = df['text'].str.findall(r'(#\w+)').explode().value_counts()

Another idea using Series.str.split + DataFrame.stack:

s = df['text'].str.split(expand=True).stack()
counts = s[lambda x: x.str.startswith('#')].value_counts()


#hello          3
#dog            1
#colours        1
#ello           1
#goodMorning    1
#goodbye        1
Name: text, dtype: int64
| improve this answer | |

one way using str.extractall that would remove the # from the result. Then value_counts as well

s = df['text'].str.extractall('(?<=#)(\w*)')[0].value_counts()
hello          3
colours        1
goodbye        1
ello           1
goodMorning    1
dog            1
Name: 0, dtype: int64
| improve this answer | |

A slightly detailed solution but this does the trick.


dictionary_count={'accessgtgtjust': 1,
'sent': 1,
'investigate': 1,
'edit': 1,
'#prd': 1,
'getting': 1}

ert=[i for i in list(dictionary_count.keys()) if '#' in i]

Out[238]: ['#prd']

unwanted = set(dictionary_count.keys()) - set(ert)

for unwanted_key in unwanted: 
   del dictionary_count[unwanted_key]

Out[241]: {'#prd': 1}
| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.