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I'm using a Pandas DataFrame to do a row-wise t-test as per this example:

import numpy
import pandas

df = pandas.DataFrame(numpy.log2(numpy.randn(1000, 4), 
                      columns=["a", "b", "c", "d"])

df = df.dropna()

Now, supposing I have "a" and "b" as one group, and "c" and "d" at the other, I'm performing the t-test row-wise. This is fairly trivial with pandas, using apply with axis=1. However, I can either return a DataFrame of the same shape if my function doesn't aggregate, or a Series if it aggregates.

Normally I would just output the p-value (so, aggregation) but I would like to generate an additional value based on other calculations (in other words, return two values). I can of course do two runs, aggregating the p-values first, then doing the other work, but I was wondering if there is a more efficient way to do so as the data is reasonably large.

As an example of the calculation, a hypotethical function would be:

from scipy.stats import ttest_ind

def t_test_and_mean(series, first, second):
    first_group = series[first]
    second_group = series[second]
    _, pvalue = ttest_ind(first_group, second_group)

    mean_ratio = second_group.mean() / first_group.mean()

    return (pvalue, mean_ratio)

Then invoked with

df.apply(t_test_and_mean, first=["a", "b"], second=["c", "d"], axis=1)

Of course in this case it returns a single Series with the two tuples as value.

Instead, ny expected output would be a DataFrame with two columns, one for the first result, and one for the second. Is this possible or I have to do two runs for the two calculations, then merge them together?

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Why are you using apply in the first place? Your result is a new DataFrame with a shape different from the input (both rows and columns), therefore it's a completely new obj. You could just have t_test_and_mean accept your input dataframe (and the columns to group by) and return a 1-row-2-columns dataframe, without using apply. –  lbolla May 28 '12 at 10:48
@lbolla Right, I ended up doing that in my code, eventually. –  Einar May 28 '12 at 14:21
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1 Answer

Returning a Series, rather than tuple, should produce a new multi-column DataFrame. For example,

return pandas.Series({'pvalue': pvalue, 'mean_ratio': mean_ratio})
share|improve this answer
I will retry on Monday, but if I recall correctly it tries to coerce to the original column structure (thus ending up with NAs). –  Einar May 26 '12 at 8:09
@garrett - How can I make sure that the seried returned from a function will retain its "intended" order. My use case is- post returning this series from a function, I am saving it to a csv file using df.to_csv. Other than ofcourse being dumb, and naming them as A, B, C,D to retain its natural ordering in the csv file. –  ekta May 21 at 1:37
to specify column order, try constructing the series with lists rather than a dict, e.g.: pandas.Series([pvalue, mean_ratio], index=['pvalue', 'mean_ratio']) –  Garrett May 21 at 2:34
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