Tengo un dataframe con columnas duplicadas: tienen el mismo nombre o casi el mismo nombre. Me gustaria fusionar esas columnas. Por ejemplo hay
New Right, New Rights
Initiative Group, Initiative group
Movement for Fair Georgia, Movement for a Fair Georgia
Aqui es una parte de la dataframe :
>>> df_sum.head()
index Map Level Precinct ID Precinct Name Average votes per minute (08:00-12:00) Average votes per minute (12:00-17:00) Average votes per minute (17:00-20:00) Christian Democratic Alliance Christian Democratic People's Party Christian-Democratic Movement Democratic Movement – United Georgia Election European Democrats Free Georgia Freedom Party Future Georgia Georgian Dream Georgian Group Georgian Politics Hope party Initiative Group Initiative group Invalid Ballots (%) Labour Labour Council of Georgia Labour Party Merab Kostava Society More Ballots Than Votes (#) More Votes Than Ballots (#) Movement for Fair Georgia Movement for a Fair Georgia National Democratic Party of Georgia National Party of Radical Democrats of Georgia New Right New Rights Our Country Overall Results Party of the Future People's Party Public Movement Republican party Right Wing Alliance Topadze Industrialists Sportsman's Union Total Voter Turnout (#) Total Voter Turnout (%) Traditionalists - Our Georgia and Women's Party Union of Georgian Traditionalists United National Movement United Opposition
0 Precinct 1 63-1 1.38 0.83 1.01 0.4 0 0 0 2008 Parliamentary - Majoritarian 0 0 0 0 0 0 0 0 0 0 0 0.8 0 0 0 0 0 0 0 0 0.13 0 0 0 United National Movement 0 0 0 0 0 0 749 62.11 0 0 77.17 21.5
1 Precinct 10 63-10 0.8 0.43 0.61 0 0 0 0 2008 Parliamentary - Majoritarian 0 0 0 0 0 0 0 0 0 0 0 4.77 0 0 0 0 0 0 0 0 0.95 0 0 0 United National Movement 0 0 0 0 0 0 419 70.42 0 0 71.12 23.15
Y las columnas :
>>>df_sum.columns
Index([' Map Level', ' Precinct ID', ' Precinct Name',
'Average votes per minute (08:00-12:00)',
'Average votes per minute (12:00-17:00)',
'Average votes per minute (17:00-20:00)',
'Christian Democratic Alliance', 'Christian Democratic People's Party',
'Christian-Democratic Movement', 'Democratic Movement – United Georgia',
'Election', 'European Democrats', 'Free Georgia', 'Freedom Party',
'Future Georgia', 'Georgian Dream', 'Georgian Group',
'Georgian Politics', 'Hope party', 'Initiative Group',
'Initiative group\t', 'Invalid Ballots (%)', 'Labour',
'Labour Council of Georgia', 'Labour Party', 'Merab Kostava Society',
'More Ballots Than Votes (#)', 'More Votes Than Ballots (#)',
'Movement for Fair Georgia', 'Movement for a Fair Georgia',
'National Democratic Party of Georgia',
'National Party of Radical Democrats of Georgia', 'New Right',
'New Rights', 'Our Country', 'Overall Results', 'Party of the Future',
'People's Party', 'Public Movement', 'Republican party',
'Right Wing Alliance Topadze Industrialists', 'Sportsman's Union',
'Total Voter Turnout (#)', 'Total Voter Turnout (%)',
'Traditionalists - Our Georgia and Women's Party',
'Union of Georgian Traditionalists', 'United National Movement',
'United Opposition'],
dtype='object', name='index')
Como pueden verlos hay tambien tabulacion en los nombres : 'Initiative group\t'
Pienso que tengo que hacer una función como la siguiente:
df.groupby(lambda x:x, axis=1).sum()