I have a dictionary of dictionaries with the following structure:
1:{'Amendment': '1',
'status': 'Stadf\xc3\xa6stet',
'Name': 'Bodil Kornbek',
'title': 'L 1 Forslag til till\xc3\xa6gsbevillingslov for 2004.',
'fremsat': '2005-03-04',
'Vote.Numeric': '2',
'PSession': '1',
'vedtaget': '2005-04-12',
'Lsession': '3',
'Voteid': '38',
'Month': '4',
'Year': '2005',
'Vote': 'Frav\xc3\xa6rende',
'Party': 'KD',
'Law': 'L 1',
'ministerie': 'Finansministeriet'}
the keys range from 1 to ca. 500000, and each nested dictionary contains information about one member of the Danish parliament on one vote. Furthermore there is information that identifies the unique vote on which the member voted. I would like for each member to extract all the votes on which that member was active, and compare that members voting behavior to all other members that were active on the same subset of votes, iteratively.
Ideally for each member I would compare that member to one other member on the votes where they were active, and calculate the proportion of votes where they voted the same to all of their common votes. If the proportion is larger than, say, .65 then the pair gets added to a list.
So the end results should be a list with the format:
[member1, member2
member1, member4
member1, member7
member2, member5
etc..
]
I can anyone show me how this could be done in python?