I have just discovered pandas and am impressed by its capabilities. I am having difficulties understanding how to work with DataFrame with MultiIndex.
I have two questions :
(1) Exporting the DataFrame
Here my problem: This dataset
import pandas as pd import StringIO d1 = StringIO.StringIO( """Gender,Employed,Region,Degree m,yes,east,ba m,yes,north,ba f,yes,south,ba f,no,east,ba f,no,east,bsc m,no,north,bsc m,yes,south,ma f,yes,west,phd m,no,west,phd m,yes,west,phd """ ) df = pd.read_csv(d1) # Frequencies tables tab1 = pd.crosstab(df.Gender, df.Region) tab2 = pd.crosstab(df.Gender, [df.Region, df.Degree]) tab3 = pd.crosstab([df.Gender, df.Employed], [df.Region, df.Degree]) # Now we export the datasets tab1.to_excel('H:/test_tab1.xlsx') # OK tab2.to_excel('H:/test_tab2.xlsx') # fails tab3.to_excel('H:/test_tab3.xlsx') # fails
One work-around I could think of is to change the columns (The way R does)
def NewColums(DFwithMultiIndex): NewCol =  for item in DFwithMultiIndex.columns: NewCol.append('-'.join(item)) return NewCol # New Columns tab2.columns = NewColums(tab2) tab3.columns = NewColums(tab3) # New export tab2.to_excel('H:/test_tab2.xlsx') # OK tab3.to_excel('H:/test_tab3.xlsx') # OK
My question is : Is there a more efficient way to do this in Pandas that I missed in the documentation ?
2) Selecting columns
This new structure does not allow to select colums on a given variable (the advantage of hierarchical indexing in first place). How can I select columns containing a given string (e.g. '-ba') ?
P.S: I have seen this question which is related but have not understood the reply proposed