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I have 2 csv file, one is dictionary.csv which contains a list of words, and another is story.csv. In the story.csv there are many columns, and in one of the columns contains a lots of words called news_story. I wanted to check if the list of words from dictionary.csv exists in the news_story column. Afterwards i wanted to print all of the rows in which the news_story column contained words from the lists of words from dictionary.csv in a new csv file called New.csv

These are the codes i have tried so far

import csv
import pandas as pd

news=pd.read_csv("story.csv")
dictionary=pd.read_csv("dictionary.csv")

pattern = '|'.join(dictionary)

exist=news['news_story'].str.contains(pattern)
for CHECK in exist:
    if not CHECK:
        news['NEWcolumn']='NO'
    else:
        news['NEWcolumn']='YES'

news.to_csv('New.csv')

I kept on getting a nos eventhough there should be some trues

story.csv

news_url news_title news_date news_story
goog.com functional 2019      This story is about a functional requirement
live.com pbandJ     2001      I made a sandwich today
key.com  uAndI      1992      A code name of a spy
dictionary.csv
red
tie
lace
books
functional
New.csv
news_url news_title news_date news_story
goog.com functional   2019    This story is about a functional requirement
3
  • 1
    Can you create minimal, complete, and verifiable example of both files with expected output? – jezrael Sep 8 '19 at 13:22
  • Pattern is a single long string with words combined with the pipe symbol. You are unlikely to find such a word in your news story. The straight-forward solution is to loop through the words in the first file and use str.contains in the body of the loop. – lmo Sep 8 '19 at 13:25
  • @jezrael you may see the edited example – strawberrylatte Sep 8 '19 at 13:44
1

First convert column to Series with header=None for avoid remove first value with squeeze=True in read_csv:

dictionary=pd.read_csv("dictionary.csv", header=None, squeeze=True)
print (dictionary)
0           red
1           tie
2          lace
3         books
4    functional
Name: 0, dtype: object

pattern = '|'.join(dictionary)
#for avoid match substrings use words boundaries
#pattern = '|'.join(r"\b{}\b".format(x) for x in dictionary)

Last filter by boolean indexing:

exist = news['news_story'].str.contains(pattern)
news[exist].to_csv('New.csv')

Detail:

print (news[exist])
   news_url  news_title  news_date  \
0  goog.com  functional       2019   

                                     news_story  
0  This story is about a functional requirement  
2
  • thank you very much this works! But, what if i wanted to keep the rows that does not have words exist in dictionary.csv in another csv file as well? – strawberrylatte Sep 9 '19 at 11:08
  • @strawberrylatte - then use news[~exist].to_csv('New_not_exist.csv') – jezrael Sep 9 '19 at 11:09

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