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I'm struggling with hierarchical indexes in the Python pandas package. Specifically I don't understand how to filter and compare data in rows after it has been pivoted.

Here is the example table from the documentation:

import pandas as pd
import numpy as np

In [1027]: df = pd.DataFrame({'A' : ['one', 'one', 'two', 'three'] * 6,
                             'B' : ['A', 'B', 'C'] * 8,
                             'C' : ['foo', 'foo', 'foo', 'bar', 'bar', 'bar'] * 4,
                             'D' : np.random.randn(24),
                             'E' : np.random.randn(24)})

In [1029]: pd.pivot_table(df, values='D', rows=['A', 'B'], cols=['C'])
    C             bar       foo
    A     B                    
    one   A -1.154627 -0.243234
          B -1.320253 -0.633158
          C  1.188862  0.377300
    three A -1.327977       NaN
          B       NaN -0.079051
          C -0.832506       NaN
    two   A       NaN -0.128534
          B  0.835120       NaN
          C       NaN  0.838040

I would like to analyze as follows:

1) Filter this table on column attributes, for example selecting rows with negative 'foo':

    C             bar       foo
    A     B                    
    one   A -1.154627 -0.243234
          B -1.320253 -0.633158
    three B       NaN -0.079051
    two   A       NaN -0.128534

2) Compare the remaining B series values between the distinct A series groups? I'm not sure how to access this information: {'one':['A','B'], 'two':['A'], 'three':['B']} and determine which series B values are unique to each key, or seen in multiple key groups, etc

Is there a way to do this directly within the pivot table structure, or do I need to convert this back in to a panda data frame?

Thank you

edit: I think this code is a step in the right direction. It at least lets me access individual values within this table, but I am still hard-coding the series vales:

table = pivot_table(df, values='D', rows=['A', 'B'], cols=['C'])
table.ix['one', 'A']
share|improve this question

1 Answer 1

Pivot table returns a DataFrame so you can simply filter by doing:

In [15]: pivoted = pivot_table(df, values='D', rows=['A', 'B'], cols=['C'])

In [16]: pivoted[pivoted.foo < 0]
C             bar       foo
A     B                    
one   A -0.412628 -1.062175
three B       NaN -0.562207
two   A       NaN -0.007245

You can use something like


to select all A series groups


pivoted.ix['one', 'A']

to select distinct A and B series groups

share|improve this answer
Thanks for your feedback. Is there a way to get a list of values in a pivot table column by specifying the header? I can do this on the dataframe with 'df['A'].values' but I'm struggling to obtain something similar from the pivot table –  alexhli Aug 15 '12 at 21:04
the result of the pivot table is a DataFrame. So you can simply do pivoted.bar.values –  Chang She Aug 16 '12 at 11:31
what's confusing me is that when I try pivoted.dtypes I see information on the C column, but I want to look at the A and B columns. I was hoping there was an easy way to get the set of B values per each A value like {'one':['A','B'], 'two':['A'], 'three':['B']} but I don't see anything like that in the pandas documentation –  alexhli Aug 16 '12 at 15:21

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