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Basic Problem:

I have several 'past' and 'present' variables that I'd like to perform a simple percent change 'row-wise' on. For example: ((exports_now - exports_past)/exports_past)).

These two questions accomplish this but when I try a similar method I get an error that my function deltas gets an unknown parameter axis.

Data Example :

exports_ past    exports_ now    imports_ past    imports_ now    ect.(6 other pairs)
   .23               .45             .43             .22              1.23
   .13               .21             .47             .32               .23
    0                 0              .41             .42               .93
   .23               .66             .43             .22               .21
    0                .12             .47             .21              1.23

Following the answer in the first question,

My solution is to use a function like this:

def deltas(row):
    '''
    simple pct change
    '''
    if int(row[0]) == 0 and int(row[1]) == 0:
        return 0
    elif int(row[0]) == 0:
        return np.nan
    else:
        return ((row[1] - row[0])/row[0])

And apply the function like this:

df['exports_delta'] = df.groupby(['exports_past', 'exports_now']).apply(deltas, axis=1)

This generates this error : TypeError: deltas() got an unexpected keyword argument 'axis' Any Ideas on how to get around the axis parameter error? Or a more elegant way to calculate the pct change? The kicker with my problem is that I needs be able to apply this function across several different column pairs, so hard coding the column names like the answer in 2nd question is undesirable. Thanks!

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1 Answer

Consider using the pct_change Series/DataFrame method to do this.

df.pct_change()

The confusion stems from two different (but equally named) apply functions, one on Series/DataFrame and one on groupby.

In [11]: df
Out[11]:
   0  1  2
0  1  1  1
1  2  2  2

The DataFrame apply method takes an axis argument:

In [12]: df.apply(lambda x: x[0] + x[1], axis=0)
Out[12]:
0    3
1    3
2    3
dtype: int64

In [13]: df.apply(lambda x: x[0] + x[1], axis=1)
Out[13]:
0    2
1    4
dtype: int64

The groupby apply doesn't, and the kwarg is passed to the function:

In [14]: g.apply(lambda x: x[0] + x[1])
Out[14]:
0    2
1    4
dtype: int64

In [15]: g.apply(lambda x: x[0] + x[1], axis=1)
TypeError: <lambda>() got an unexpected keyword argument 'axis'

Note: that groupby does have an axis argument, so you can use it there, if you really want to:

In [16]: g1 = df.groupby(0, axis=1)

In [17]: g1.apply(lambda x: x.iloc[0, 0] + x.iloc[1, 0])
Out[17]:
0
1    3
2    3
dtype: int64
share|improve this answer
    
Thanks for your answer Andy. If I stick with the groupby apply and remove the axis param, I get a key error KeyError: u'no item named 0' for accessing the elements as row[0] ect. Is there a way to use the groupby apply and still use a notation that keeps it easy to apply to several differently named column pairs? –  agconti Jul 31 '13 at 15:12
    
I thought about the the df.pct_change() function, but I believe it only applys to a single column. ie. df.pct_change(self, periods=1, fill_method='pad', limit=None, freq=None, **kwd). I haven't checked the source but I believe it accomplishes it through something similar to the .shift() method. If that is true I'm not sure it can be applied to multiple columns. –  agconti Jul 31 '13 at 15:17
    
@agconti updated, you can use the groupby with axis=1, you can apply pct_change to entire dataframe. Or perhaps you want to do this one each group using an apply (lambda x: x.pct_change()). –  Andy Hayden Jul 31 '13 at 15:20
    
I think I wasnt 100% clear in my post. (ive updated it). I'm looking to do the pct_change() calculation not by shifting periods within exports_past, and exports now but by using those values. ie. ((exports_now - exports_past)/exports_past). –  agconti Jul 31 '13 at 15:23
    
passing the axis=1 to groupby results in a ValueError: Wrong number of items passed 1, indices imply 0 when used like this:df['xx_delta'] = df.groupby(['xx_past', 'xx_now'], axis=1).apply(deltas) –  agconti Jul 31 '13 at 15:28
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