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I have a text file with about 8.5 million data points in the form:

Company 87178481
Company 893489
Company 2345788

I want to use Python to create a connection graph to see what the network between companies looks like. From the above sample, two companies would share an edge if the value in the second column is the same (clarification from/for Hooked).

I've been using the NetworkX package and have been able to generate a network for a few thousand points, but it's not making it through the full 8.5 million-node text file. I ran it and left for about 15 hours, and when I came back, the cursor in the shell was still blinking, but there was no output graph.

Is it safe to assume that it was still running? Is there a better/faster/easier approach to graph millions of points?

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How are the companies connected? I.e. is an edge shared between company A and B if the second column is the same? –  Hooked Oct 25 '12 at 16:28
Yes, that is correct. –  Jon Oct 25 '12 at 16:30
Can't say I've had any problems with 8.5million in networkx. How many distinct vertices do you have? Are you using directed/un-directed? Also, when you say "no output graph" - what exactly do you mean? [eg, you haven't tried to print it or something] –  Jon Clements Oct 25 '12 at 16:40
I just mean that I don't see a generated graph...there's no new window that pops up with the drawn graph. –  Jon Oct 25 '12 at 16:58

2 Answers 2

up vote 4 down vote accepted

If you have 1000K points of data, you'll need some way of looking at the broad picture. Depending on what you are looking for exactly, if you can assign a "distance" between companies (say number of connections apart) you can visualize relationships (or clustering) via a Dendrogram.

Scipy does clustering:


and has a function to turn them into dendrograms for visualization:


An example for a shortest path distance function via networkx:


Ultimately you'll have to decide how you want to weight the distance between two companies (vertices) in your graph.

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Is there a simpler or preferred way to do this network building in SAS or R? –  Jon Oct 25 '12 at 17:08
@Jon This answer (even though links are provided) is language agnostic. What are you looking to show with your graph of a million points? General connections, disparate clustering, central hubs? It is unclear what you'd like to get out of your data set as many different questions can be asked of it. –  Hooked Oct 25 '12 at 17:14
It is a little vague. I'd like to see clusters and connection points between clusters. The idea is to utilize the data for network outreach to see where singular connections exist between a master cluster and a smaller cluster. These singular business connections can then be utilized for more targeted marketing purposes, etc. –  Jon Oct 25 '12 at 17:30
@Jon This is a very general question in graph theory (and there is a huge volume of research on the subject!) but I'll point out a few things. networkx as visualization is irrelevant, with this many points you need an algorithmic approach. I would first cluster the vertices (see answer) by some threshold. Then by looking at the dendrogram I would see which clusters are joined when raising the threshold slightly. Those new connections are your "singular business connections". –  Hooked Oct 25 '12 at 18:02
I think you've helped me identify the scope of this. Thanks, Hooked. –  Jon Oct 25 '12 at 18:53

You have too many datapoints and if you did visualize the network it won't make any sense. You need to have ways to 1)reduce the number of companies by removing those that are less important/less connected 2)summarize the graph somehow and then visualize.

to reduce the size of data it might be better to create the network independently (using your own code to create an edgelist of companies). This way you can reduce the size of your graph (by removing singletons for example, which may be many).

For summarization I recommend running a clustering or a community detection algorithm. This can be done very fast even for very large networks. Use the "fastgreedy" method in the igraph package: http://igraph.sourceforge.net/doc/R/fastgreedy.community.html (there is a faster algorithm available online as well, this is by Blondel et al: http://perso.uclouvain.be/vincent.blondel/publications/08BG.pdf I know their code is available online somewhere)

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