Text Mining/Printing with Python
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I have a list of users based on frequency of tweets[Here], and a dataset of tweets that looks like [This].I need to write a python script/program that reads my list of users line by line, then for each user, when i hit a line matching that user in my twitter data, i print the line underneath which contains the content, to a new document(as seen in picture 2). I need to produce two text corpuses, based on low and high frequency users. Does anyone know how to do this?
python text-mining data-cleaning
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$begingroup$
I have a list of users based on frequency of tweets[Here], and a dataset of tweets that looks like [This].I need to write a python script/program that reads my list of users line by line, then for each user, when i hit a line matching that user in my twitter data, i print the line underneath which contains the content, to a new document(as seen in picture 2). I need to produce two text corpuses, based on low and high frequency users. Does anyone know how to do this?
python text-mining data-cleaning
$endgroup$
add a comment |
$begingroup$
I have a list of users based on frequency of tweets[Here], and a dataset of tweets that looks like [This].I need to write a python script/program that reads my list of users line by line, then for each user, when i hit a line matching that user in my twitter data, i print the line underneath which contains the content, to a new document(as seen in picture 2). I need to produce two text corpuses, based on low and high frequency users. Does anyone know how to do this?
python text-mining data-cleaning
$endgroup$
I have a list of users based on frequency of tweets[Here], and a dataset of tweets that looks like [This].I need to write a python script/program that reads my list of users line by line, then for each user, when i hit a line matching that user in my twitter data, i print the line underneath which contains the content, to a new document(as seen in picture 2). I need to produce two text corpuses, based on low and high frequency users. Does anyone know how to do this?
python text-mining data-cleaning
python text-mining data-cleaning
asked 51 mins ago
Nichlas HolmgrenNichlas Holmgren
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