9

I have the following dataframe in pandas

  target   A       B      C
0 cat      bridge  cat    brush  
1 brush    dog     cat    shoe
2 bridge   cat     shoe   bridge

How do I test whether df.target is in any of the columns ['A','B','C', etc.], where there are many columns to check?

I have tried merging A,B and C into a string to use df.abcstring.str.contains(df.target) but this does not work.

12

You can use drop, isin and any.

  • drop the target column to have a df with your A, B, C columns only
  • check if the values isin the target column
  • and check if any hits are present

That's it.

df["exists"] = df.drop("target", 1).isin(df["target"]).any(1)
print(df)

    target  A       B       C       exists
0   cat     bridge  cat     brush   True
1   brush   dog     cat     shoe    False
2   bridge  cat     shoe    bridge  True
  • 1
    Minor: "isin" is an unfortunate column name because it's also the name of a DataFrame method. – DSM Mar 29 '17 at 12:43
  • @Minor You're right, thanks for the comment. Edited it. – pansen Mar 29 '17 at 12:44
  • 1
    Come to think of it, .isin(df["target"]) is an alternative to .eq(df["target"], 0) here. But basically equivalent. – DSM Mar 29 '17 at 12:48
3

OneHotEncoder approach:

In [165]: x = pd.get_dummies(df.drop('target',1), prefix='', prefix_sep='')

In [166]: x
Out[166]:
   bridge  cat  dog  cat  shoe  bridge  brush  shoe
0       1    0    0    1     0       0      1     0
1       0    0    1    1     0       0      0     1
2       0    1    0    0     1       1      0     0

In [167]: x[df['target']].eq(1).any(1)
Out[167]:
0    True
1    True
2    True
dtype: bool

Explanation:

In [168]: x[df['target']]
Out[168]:
   cat  cat  brush  bridge  bridge
0    0    1      1       1       0
1    0    1      0       0       0
2    1    0      0       0       1
2

You can use eq, for drop column pop if neech check by rows:

mask = df.eq(df.pop('target'), axis=0)
print (mask)
       A      B      C
0  False   True  False
1  False  False  False
2  False  False   True

And then if need check at least one True add any:

mask = df.eq(df.pop('target'), axis=0).any(axis=1)
print (mask)
0     True
1    False
2     True
dtype: bool

df['new'] = df.eq(df.pop('target'), axis=0).any(axis=1)
print (df)
        A     B       C    new
0  bridge   cat   brush   True
1     dog   cat    shoe  False
2     cat  shoe  bridge   True

But if need check all values in column use isin:

mask = df.isin(df.pop('target').values.tolist())
print (mask)
       A      B      C
0   True   True   True
1  False   True  False
2   True  False   True

And if want check if all values are True add all:

df['new'] = df.isin(df.pop('target').values.tolist()).all(axis=1)
print (df)
        A     B       C    new
0  bridge   cat   brush   True
1     dog   cat    shoe  False
2     cat  shoe  bridge  False
  • I like the usage of pop but it actually changes the orginal df inplace removing the target column. This might be some unintended side effect. – pansen Mar 29 '17 at 12:37
  • I think here is better pop, it depends what OP need. – jezrael Mar 29 '17 at 12:39
1

you can use apply a function for each row that counts the number of value that match the value in the 'target' column:

df["exist"] = df.apply(lambda row:row.value_counts()[row['target']] > 1 , axis=1)

for a dataframe that looks like:

   b  c target
0  3  a      a
1  3  4      2
2  3  4      2
3  3  4      2
4  3  4      4

the output will be:

   b  c target  exist
0  3  a      a   True
1  3  4      2  False
2  3  4      2  False
3  3  4      2  False
4  3  4      4   True
1

Another approach using index difference method:

matches = df[df.columns.difference(['target'])].eq(df['target'], axis = 0)

#       A      B      C
#0  False   True  False
#1  False  False  False
#2  False  False   True

# Check if at least one match:
matches.any(axis = 1)

#Out[30]: 
#0     True
#1    False
#2     True

In case you wanted to see which columns meet the target, here is a possible solution:

matches.apply(lambda x: ", ".join(x.index[np.where(x.tolist())]), axis = 1)

Out[53]: 
0    B
1     
2    C
dtype: object

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