# An algorithm to create clusters from data pairs in python

I am looking for a smart algorithm or pythonic approach to create clusters from pairs of data.

The input data is structured like this:

``````[
(productA,ProductB),
(productB,ProductC),
(productC,ProductD),
(productA,ProductD),
(productD,ProductB),
(productC,ProductA),

(productE,ProductF),
(productF,ProductG),
(productG,ProductH),
(productG,ProductE),
]
``````

and it should be clustered to:

``````[
(productA,productB,productC,productD),
(productE,productF,productG,productH)
]
``````

How can this be achieved? (The order of the products within the two clusters does not matter)

Any ideas are greatly appreciated!

• A cluster is the transitive closure over all products linked via some (directional) pair? Is the relation symmetric? – dhke Jan 26 '16 at 19:10

Using networkx, you could build a graph and find the connected components:

``````import networkx as nx

data = [
('productA','productB'),
('productB','productC'),
('productC','productD'),
('productA','productD'),
('productD','productB'),
('productC','productA'),
('productE','productF'),
('productF','productG'),
('productG','productH'),
('productG','productE'),
]

G = nx.Graph()
for connected_component in nx.connected_components(G):
print(connected_component)
``````

yields

``````['productG', 'productF', 'productE', 'productH']
['productD', 'productC', 'productB', 'productA']
``````
• will try this instantly. Two things to note: 1. I love SO... always a solution to any problem, 2. I love python... – Jabb Jan 26 '16 at 19:17

What you are looking for is: Quick Union algorithm.

• QU requires the relation to be transitive, reflexive and symmetric. The examples don't show if the relation is symmetric. – dhke Jan 26 '16 at 19:14