Social Network Analysis with Gephi

The next software package that we were introduced to in the DALMOOC was Gephi, which is an open source tool for conducting social network analysis. I found Gephi an easier tool to use than Tableau, and it was fairly straightforward to load the sample data that was provided and start analysing it.

These were the results of my analysis to determine the density and centrality measures of each dataset :

For the example_1 dataset:

Example_1

For the example_2 dataset:

Example_2

For the CCK11 dataset (Twitter network):

CCK_Twitter

For the CCK11 dataset (blog network):

CCK_blogs

These were the results of using the Giant Component filter, and then determining the modularity for each dataset:

For the example_1 dataset:

Example_1 modularity

For the example_2 dataset:

Example_2 modularity

For the CCK11 dataset (Twitter network):

CCK Twitter modularity

For the CCK11 dataset (blog network):

CCK blogs modularityIt was also fun to play around with the various network representations, and the options for partitioning and highlighting various properties of the network. This is the example_1 network with a few changes made to it: it’s in the Fruchterman Reingold representation, nodes are sized according to betweenness centrality, labels are turned on, and each community is a different colour

Example_1 extra

Here’s the example_2 network with similar changes:

Example_2_extra

And for the CCK dataset (Twitter network):

CCK_Twitter_extra

And finally the CCK dataset (blogs network):

CCK_blogs extraI found these exercises a useful way to get some experience with social network analysis, and I have some ideas of how I could use Gephi in a project that I’m working on.

 

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About Andrew

I'm a health librarian in Sydney, Australia, who also happens to be a geocacher.

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