1

I want do add a column to dataframe a,

a = pd.DataFrame([[1,2],[3,4]],columns=['A','B'])
if a['B'] > a['A']:
    a['C']='是'
else:
    a['C']='否'

ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all().

4

Use numpy.where:

#swapped 2,1
a = pd.DataFrame([[2,1],[3,4]],columns=['A','B'])
a['C'] = np.where(a['B']>a['A'], '是','否')
print (a)
   A  B  C
0  2  1  否
1  3  4  是

Problem with your code is if use:

print (a['B']>a['A'])
0    False
1     True
dtype: bool

it return boolean mask and if cannot decide what to do.

Check also using if truth statements with pandas.

2

Yes, where or numpy.select:

a = pd.DataFrame([[2,1],[3,4]],columns=['A','B'])
a['C'] = np.select([a['B']>a['A']], '是', default = '否')
print(a)

Returns:

   A  B  C
0  2  1  否
1  3  4  是

Which easily scales to more conditions:

a = pd.DataFrame([[2,1],[3,4],[1,10]],columns=['A','B'])

condlist = [
    a['B'] > 5*a['A'],
    a['B'] > a['A']
]
valuelist = ['是', '否']

a['C'] = np.select(condlist, valuelist, default=np.nan)
print(a)

Returns:

   A   B    C
0  2   1   nan
1  3   4    否
2  1  10    是

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