2

I want to fill df1 dataframe's "Category" column with the correct values from df2 dataframe's "Category" column.

import pandas as pd

df1 = pd.DataFrame({"Receiver": ["Insurance company", "Shop", "Pizza place", "Library", "Gas station 24/7", "Something else", "Whatever receiver"], "Category": ["","","","","","",""]}) 
df2 = pd.DataFrame({"Category": ["Insurances", "Groceries", "Groceries", "Fastfood", "Fastfood", "Car"], "Searchterm": ["Insurance", "Shop", "Market", "Pizza", "Burger", "Gas"]})

Output:

df1
Receiver                Category
0   Insurance company   
1   Shop    
2   Pizza place 
3   Library 
4   Gas station 24/7    
5   Something else  
6   Whatever receiver   

df2
    Category    Searchterm
0   Insurances  Insur
1   Groceries   Shop
2   Groceries   Market
3   Fastfood    Pizza
4   Fastfood    Burger
5   Car         Gas

I want to compare df1["Receiver"] to df2["Searchterm"] row by row, and where the latter even partially matches the former, assign that row's df2["Category"] to df1["Category"].

For example, "Pizza" in df2["Searchterm"] partially matches "Pizza place" in df1["Receiver"], so I want to assign "Fastfood" (which is Pizza's category in df2["Category"]) to the "Pizza place"'s category in df1["Category"].

The desired output would be:

df1
Receiver                Category
0   Insurance company   Insurances
1   Shop                Groceries
2   Pizza place         Fastfood
3   Library             
4   Gas station 24/7    Car
5   Something else      
6   Whatever receiver   

So how can I fill df1["Category"]with the right categories? Thank you.

5

Iterate categories

Under the assumption the number of categories is small relative to the number of receivers, one strategy is to iterate categories. With this solution, note the last match only will stick where multiple categories are found.

for tup in df2.itertuples(index=False):
    mask = df1['Receiver'].str.contains(tup.Searchterm, regex=False)
    df1.loc[mask, 'Category'] = tup.Category

print(df1)

#      Category           Receiver
# 0  Insurances  Insurance company
# 1   Groceries               Shop
# 2    Fastfood        Pizza place
# 3                        Library
# 4         Car   Gas station 24/7
# 5                 Something else
# 6              Whatever receiver

Performance benchmarking

As noted, this solution scales better with rows in df1 than with categories in df2. To illustrate, consider performance below for differently sized input dataframes.

def jpp(df1, df2):
    for tup in df2.itertuples(index=False):
        df1.loc[df1['Receiver'].str.contains(tup.Searchterm, regex=False), 'Category'] = tup.Category
    return df1

def user347(df1, df2):
    df1['Category'] = df1['Receiver'].replace((df2['Searchterm'] + r'.*').values,
                                              df2['Category'].values,
                                              regex=True)
    df1.loc[df1['Receiver'].isin(df1['Category']), 'Category'] = ''
    return df1

df1 = pd.concat([df1]*10**4, ignore_index=True)
df2 = pd.concat([df2], ignore_index=True)

%timeit jpp(df1, df2)      # 145 ms per loop
%timeit user347(df1, df2)  # 364 ms per loop

df1 = pd.concat([df1], ignore_index=True)
df2 = pd.concat([df2]*100, ignore_index=True)

%timeit jpp(df1, df2)      # 666 ms per loop
%timeit user347(df1, df2)  # 88 ms per loop
  • 1
    Thank you so much, I've spent hours and hours and tried hundreds of lines of different methods with no luck but this finally did it. I've tried to avoid for loops with dataframes but this just seems much simpler than the pandas's own methods, and probably doesn't have any issues unless there are thousands of receivers? Can you explain what you mean by "last match only will stick where multiple categories are found"? – KMFR Jan 11 at 14:29
  • 1
    @KMFR, First point, the method slows down more when you have a larger number of categories; otherwise should be fine. Second point, let's say you have a receiver called "Insurance Shop"... this will be mapped to groceries instead of insurance company.. it will map to the second match as per df2 row order. – jpp Jan 11 at 14:48
  • 1
    @jpp but you can use regex=True in replace to match partially... – user3471881 Jan 11 at 15:17
  • 1
    @user3471881, Fair point, +1 to your answer. – jpp Jan 11 at 15:32
  • 1
    Was just gonna ask you to show performance when categories are large - very good update and thank you for doing it so I didn't have to :D – user3471881 Jan 11 at 15:40
3

You could use Series.replace with regex for a vectorised approach:

df1['Category'] = df1['Receiver'].replace(
    (df2['Searchterm'] + r'.*').values,
    df2['Category'].values,
    regex=True
)

df1.loc[df1['Receiver'].isin(df1['Category']), 'Category'] = ''

print(df1)

     Category           Receiver
0  Insurances  Insurance company
1   Groceries               Shop
2    Fastfood        Pizza place
3                        Library
4         Car   Gas station 24/7
5                 Something else
6              Whatever receiver

Note that this assumes that each Searchterm string will be found in the beginning of each Receiver string. If this is not true, adjust the regex accordingly.

  • 2
    This is indeed a good solution, especially if you have a large number of categories. I've added some benchmarking in my answer to illustrate. – jpp Jan 11 at 15:39
3

One more solution using str.extract

pat = '('+'|'.join(df2['Searchterm'])+')'
df1["Category"] = df1['Receiver'].str.extract(pat)[0].map(df2.set_index('Searchterm')['Category'].to_dict()).fillna('')

    Receiver            Category
0   Insurance company   Insurances
1   Shop                Groceries
2   Pizza place         Fastfood
3   Library 
4   Gas station 24/7    Car
5   Something else  
6   Whatever receiver   

Performance Benchmarking

def jpp(df1, df2):
    for tup in df2.itertuples(index=False):
        df1.loc[df1['Receiver'].str.contains(tup.Searchterm, regex=False), 'Category'] = tup.Category
    return df1

def user347(df1, df2):
    df1['Category'] = df1['Receiver'].replace((df2['Searchterm'] + r'.*').values,
                                              df2['Category'].values,
                                              regex=True)
    df1.loc[df1['Receiver'].isin(df1['Category']), 'Category'] = ''
    return df1

def vai(df1, df2):
    pat = '('+'|'.join(df2['Searchterm'])+')'
    df1["Category"] = df1['Receiver'].str.extract(pat)[0].map(df2.set_index('Searchterm')['Category'].to_dict()).fillna('')

df1 = pd.concat([df1]*10**4, ignore_index=True)
df2 = pd.concat([df2], ignore_index=True)

%timeit jpp(df1, df2)    
%timeit user347(df1, df2)
%timeit vai(df1, df2)


120 ms ± 2.26 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
221 ms ± 4.74 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
78.2 ms ± 1.56 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

df1 = pd.concat([df1], ignore_index=True)
df2 = pd.concat([df2]*100, ignore_index=True)

%timeit jpp(df1, df2)
%timeit user347(df1, df2)
%timeit vai(df1, df2)

11.4 s ± 276 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
20.4 s ± 296 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
98.3 ms ± 408 µs per loop (mean ± std. dev. of 7 runs, 10 loops each)
  • 1
    Very cool, thank you! I tried to use str.contains(), str.extract() is new to me. – KMFR Jan 11 at 14:45
  • 2
    @Vaishali, excellent show with path + extract! +1 – pygo Jan 11 at 16:29
  • 1
    Very nice :). I'm not sure the results are exactly comparable because df2.set_index('Searchterm')['Category'].to_dict() collapses to a small container. Also for 10**5 I see performance jpp: 1.52 s per loop; user347: 3.82 s per loop; vai: 1.62 s per loop. So evens out somewhat between our methods. – jpp Jan 11 at 17:36
  • 1
    The second benchmark here is completely useless to be fair. Maybe remove it or figure out a different solution with str.extract? – user3471881 Jan 12 at 0:39

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