7

I want to convert data of 'edjefe' column which contains int as well as 'yes' and 'no' values. My problem is I just want to map 'yes' and 'no' to 1 and 0 and keep the int values as it is So I wrote this code

def foo(x):
    if x == 'no':
        return 0
    elif x == 'yes':
        return 1
    else:
        return x

and df1.edjefe.map(lambda x : foo(x))

But I am getting an error as,

RecursionError: maximum recursion depth exceeded while calling a Python object
4
  • 2
    Full traceback where? Aug 3, 2018 at 12:34
  • maybe apply the function instead of map. But hard to assess the error without a working example Aug 3, 2018 at 12:36
  • Question has nothing to do with machine-learning (or numpy) - kindly do not spam the tags (removed)
    – desertnaut
    Aug 3, 2018 at 12:36
  • same error with the apply Aug 3, 2018 at 12:39

5 Answers 5

17

You can also just use replace:

df.edjefe.replace(to_replace=['no', 'yes'], value=[0, 1])

3
  • TypeError: Cannot compare types 'ndarray(dtype=int64)' and 'str' Aug 3, 2018 at 12:40
  • String replace requires a string as an input and an output. Replace yes and no with value=['0', '1'], then cast the result with int().
    – addohm
    Aug 3, 2018 at 12:47
  • Note also that replace has a flag inplace=True for replacing the values in the dataframe in-place, rather than returning the modified values. Nov 21, 2022 at 11:27
8

Just use dict-like to_replace:

df['edjefe'].replace({'no': 0, 'yes': 1})
2
  • what about all the columns? Mar 13, 2020 at 0:39
  • 1
    @mLstudent33, just use replace on the full DataFrame, not specific column: df.replace({'no': 0, 'yes': 1}). Mar 13, 2020 at 8:18
4

You can use pd.Series.map with a dictionary mapping followed by pd.Series.fillna:

d = {'no': 0, 'yes': 1}
df1['edjefe'] = df1['edjefe'].map(d).fillna(df1['edjefe'])

You will likely find this more efficient than pd.Series.replace.

See Replace values in a pandas series via dictionary efficiently for more details.

If you have mutable objects in your series, this will fail, since dictionary keys must be hashable. You can convert to strings in this case:

df1['edjefe'] = df1['edjefe'].astype(str).map(d).fillna(df1['edjefe'])
5
  • I am getting TypeError: 'Series' objects are mutable, thus they cannot be hashed error Aug 3, 2018 at 12:43
  • @JaqenH'ghar, Can you provide a minimal reproducible example? I cannot replicate your error.
    – jpp
    Aug 3, 2018 at 12:44
  • @JaqenH'ghar, Also, see update. Seems you might have list or other mutable types in your series.
    – jpp
    Aug 3, 2018 at 12:47
  • Got it the 0 and 1 are of type str. Tnx Aug 3, 2018 at 13:06
  • @JaqenH'ghar, Nope that's incorrect. We're converting series elements to str as an intermediary step to ensure elements are hashable.
    – jpp
    Aug 3, 2018 at 13:14
1

You can also try:

df1['edjefe'] = (df1['edjefe']=="yes")*1 
0

You can use pandas.Categorical as well.

df1["edjefe"] = pd.Categorical(df1["edjefe"]).codes

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