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Given this data frame:

>>> a = pd.DataFrame(data={'words':['w1','w2','w3','w4','w5'],'value':np.random.rand(5)})
>>> a

     value   words
0  0.157876    w1
1  0.784586    w2
2  0.875567    w3
3  0.649377    w4
4  0.852453    w5

>>> b = pd.Series(data=['w3','w4'])
>>> b

0    w3
1    w4

I'd like to replace the elements of value with zero but only for the words that match those in b. The resulting data frame should therefore look like this:

    value    words
0  0.157876    w1
1  0.784586    w2
2  0           w3
3  0           w4
4  0.852453    w5

I thought of something along these lines: a.value[a.words==b] = 0 but it's obviously wrong.

share|improve this question
up vote 3 down vote accepted

You're close, just use pandas.Series.isin() instead of ==:

>>> a.value[a['words'].isin(b)] = 0
>>> a
      value words
0  0.340138    w1
1  0.533770    w2
2  0.000000    w3
3  0.000000    w4
4  0.002314    w5

Or you can use ix selector:

>>> a.ix[a['words'].isin(b), 'value'] = 0
>>> a
      value words
0  0.340138    w1
1  0.533770    w2
2  0.000000    w3
3  0.000000    w4
4  0.002314    w5

update You can see documentation about differences betweed .ix and .loc, some quotes:

.loc is strictly label based, will raise KeyError when the items are not found ...

.iloc is strictly integer position based (from 0 to length-1 of the axis), will raise IndexError when the requested indicies are out of bounds ...

.ix supports mixed integer and label based access. It is primarily label based, but will fallback to integer positional access. .ix is the most general and will support any of the inputs to .loc and .iloc, as well as support for floating point label schemes. .ix is especially useful when dealing with mixed positional and label based hierarchial indexes ...

share|improve this answer
    
Thanks @Roman! Is there a difference in efficiency between .ix and .loc as seen in EdChum's answer? – HappyPy Nov 5 '13 at 19:40
    
@HappyPy added some quotes from docs – Roman Pekar Nov 5 '13 at 19:46
    
Great, many thanks again! – HappyPy Nov 5 '13 at 19:48

Use .loc to select the column values you want to assign to:

a.loc[a.words.isin(b),'value']=0

Out[10]:

      value words
0  0.065556    w1
1  0.776099    w2
2  0.000000    w3
3  0.000000    w4
4  0.331185    w5
share|improve this answer
    
slightly more correct would be isin(b) – alko Nov 5 '13 at 19:40

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