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I have a DataFrame, say a volatility surface with index as time and column as strike. How do I do two dimensional interpolation? I can reindex but how do i deal with NaN? I know we can fillna(method='pad') but it is not even linear interpolation. Is there a way we can plug in our own method to do interpolation?

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1 Answer 1

up vote 16 down vote accepted

You can use DataFrame.apply with Series.interpolate to get a linear interpolation.

In : df = pandas.DataFrame(numpy.random.randn(5,3), index=['a','c','d','e','g'])

In : df
Out:
          0         1         2
a -1.987879 -2.028572  0.024493
c  2.092605 -1.429537  0.204811
d  0.767215  1.077814  0.565666
e -1.027733  1.330702 -0.490780
g -1.632493  0.938456  0.492695

In : df2 = df.reindex(['a','b','c','d','e','f','g'])

In : df2
Out:
          0         1         2
a -1.987879 -2.028572  0.024493
b       NaN       NaN       NaN
c  2.092605 -1.429537  0.204811
d  0.767215  1.077814  0.565666
e -1.027733  1.330702 -0.490780
f       NaN       NaN       NaN
g -1.632493  0.938456  0.492695

In : df2.apply(pandas.Series.interpolate)
Out:
          0         1         2
a -1.987879 -2.028572  0.024493
b  0.052363 -1.729055  0.114652
c  2.092605 -1.429537  0.204811
d  0.767215  1.077814  0.565666
e -1.027733  1.330702 -0.490780
f -1.330113  1.134579  0.000958
g -1.632493  0.938456  0.492695

For anything more complex, you need to roll-out your own function that will deal with a Series object and fill NaN values as you like and return another Series object.

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Avaris, Thank you very much for your answers! –  archlight May 7 '12 at 16:28
4  
It would be a good idea to incorporate this as an option in fillna. –  DanB Sep 11 '12 at 4:05
    
What if there is another dimension (or category) to hold constant (separate) in the interpolation step? ie, how can I combine your wonderful solution with a groupby? Right now, if there are repeated values of the index (e.g. they are identical across the different categories I wish to group by), the reindex() step fails, claiming "Reindexing only valid with uniquely valued Index objects". (Maybe this should be a new question?) –  Christopher Barrington-Leigh May 26 '13 at 2:46
    
That's a great and somewhat obscure answer. It would be nice to have a convenience function for this where you can pick the axes to interpolate over –  Bicubic Jun 4 '13 at 5:56

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