I have a Dataframe with 1 column (+the index) containing lists of sublists or elements. I would like to detect common elements in the lists/sublists and group the lists with at least 1 common element in order to have only lists of elements without any common elements. The lists/sublists are currently like this (exemple for 4 rows):

Row1   [['A1','A2','A3'],['A1','B1','B2','C3','D1']]`

Row2   ['A1','E2','E3']

Row3   [['B4','B5','G4'],['B6','B4']]

Row4   ['B4','C9']

n lists with no common elements (example for the first 2):


You can use NetworkX's connected_components method for this. Here's how I'd approach this adapting this solution:

import networkx as nx
from itertools import combinations, chain

df= pd.DataFrame({'Num_ID':[[['A1','A2','A3'],['A1','B1','B2','C3','D1']], 

Start by flattening the sublists in each list:

L = [[*chain.from_iterable(i)] if isinstance(i[0], list) else i 
       for i in df.Num_ID.values.tolist()]

[['A1', 'A2', 'A3', 'A1', 'B1', 'B2', 'C3', 'D1'],
 ['A1', 'E2', 'E3'],
 ['B4', 'B5', 'G4', 'B6', 'B4'],
 ['B4', 'C9']]

Given that the lists/sublists have more than 2 elements, you can get all the length 2 combinations from each sublist and use these as the network edges (note that edges can only connect two nodes):

L2_nested = [list(combinations(l,2)) for l in L]
L2 = list(chain.from_iterable(L2_nested))

Generate a graph, and add your list as the graph edges using add_edges_from. Then use connected_components, which will precisely give you a list of sets of the connected components in the graph:


[{'A1', 'A2', 'A3', 'B1', 'B2', 'C3', 'D1', 'E2', 'E3'},
 {'B4', 'B5', 'B6', 'C9', 'G4'}]
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  • 1
    Thanks a lot. As a newbie I've to digest all the concepts here but a quick test with my data seems very good. Could you please tell me what should be done to put the resulting sets in a Dataframe with columns Set1, Set2, Set3... ? Thanks again, really impressed by your quick answer – Jon1 Jun 20 '19 at 12:45
  • Yes just construct a dataframe and transpose @Jon1 pd.DataFrame(l).T. Glad it helped :) don' forget you can upvote and accept answers, see What should I do when someone answers my question? – yatu Jun 20 '19 at 13:02
  • 1
    Everything is fine. Grateful for eternity :-) – Jon1 Jun 20 '19 at 19:36

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