How to Normalize Names

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情歌与酒
情歌与酒 2020-12-16 05:43

I am using pandas dataframes and I have data where I have customers per company. However, the company titles vary slightly but ultimately affect the data. Example:



        
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  •  一向
    一向 (楼主)
    2020-12-16 06:10

    I remember reading this blog about the fuzzywuzzy library (looking into another question), which can do this:

    pip install fuzzywuzzy
    

    You can use its partial_ratio function to "fuzzy match" the strings:

    In [11]: from fuzzywuzzy.fuzz import partial_ratio
    
    In [12]: partial_ratio('AAAB', 'the AAAB inc.')
    Out[12]: 100
    

    Which seems confident about it being a good match!

    In [13]: partial_ratio('AAAB', 'AAPL')
    Out[13]: 50
    
    In [14]: partial_ratio('AAAB', 'Google')
    Out[14]: 0
    

    We can take the best match in the actual company list (assuming you have it):

    In [15]: co_list = ['AAAB', 'AAPL', 'GOOG']
    
    In [16]: df.Company.apply(lambda mistyped_co: max(co_list, 
                                                      key=lambda co: partial_ratio(mistyped_co, co)))
    Out[16]: 
    0    AAAB
    1    AAAB
    2    AAAB
    3    AAAB
    Name: Company, dtype: object
    

    I strongly suspect there is something in scikit learn or a numpy library to do this more efficiently on large datasets... but this should get the job done.

    If you don't have the company list you'll probably have to do something more clevererer...

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