Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I'm looking for a way to sort a two dimensional binary matrix so that we can visually identify "communities" in the data. My data-set is based on group membership (i.e a list of people and the groups to which they belong). For example:

   G1 G2 G3 G4
P1 1     1  
P2 1     1  
P3    1     1
P4    1     1

I'm looking for a sorting algorithm that will give me this:

   G1 G3 G2 G4
P1 1  1     
P2 1  1    
P3       1   1
P4       1   1

Another example of "sorted" data can be found here: http://mbostock.github.com/protovis/ex/matrix.html In this example, the creators reference a "community-detection algorithm" used for sorting. My data is different since there will be no memberships between dimensions (i.e. the first dimension (persons) are members of the second dimension (groups).

I've found a paper that discusses this in great detail: http://ricerca.mat.uniroma3.it/users/colanton/docs/visual.pdf (warning: PDF)

So in summary I'm taking membership data, trying to find "communities" within the data, and representing that visually.

I've found similar discussions that may be of some help here: Sorting a binary 2D matrix? http://stackoverflow.com/questions/5822265/are-there-implementations-of-algorithms-for-community-detection-in-graphs

share|improve this question
How are you handling the noise? –  ElKamina Feb 10 '12 at 17:33
That should be handled by the sorting algorithm. Take a look at the protovis example. –  RussellZ Feb 12 '12 at 19:46
see this thread –  Antoine Jul 14 at 16:00
Thanks for the link. Do you know what algorithm they are using? There is some code but I don't know how to actually use it. –  RussellZ Jul 14 at 21:36

1 Answer 1

up vote -1 down vote accepted

The best solution I've seen so far is here: http://matthewlincoln.net/2014/12/20/adjacency-matrix-plots-with-r-and-ggplot2.html

To summarize the approach:

One good alternative is to visualize an adjacency matrix encoding the network relationship data, where, for example, cell AB describes an edge connecting node A to node B. Mike Bostock has implemented this in D3, using Jacques Bretin’s Les Misérables co-occurrence network dataset. It is also fairly easy to generate an adjacency matrix visualization using ggplot2, but it does require that you bite the bullet and finally figure out how to work with ordered factors.

It's able to take a matrix plot that looks like this: enter image description here

and sorts it to this: enter image description here

share|improve this answer
Thanks for the feedback, though deleting the post seems a bit harsh. I've updated the answer with more info from the link. –  RussellZ Jul 15 at 23:01

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.