posted on 2010-12-01, 00:00authored byMary McGlohon
Network data (also referred to as relational data, social network data, real graph
data) has become ubiquitous, and understanding patterns in this data has become an
important research problem. We investigate how interactions in social networks are
formed and how these interactions facilitate diffusion, model these behaviors, and
apply these findings to real-world problems.
We examined graphs of size up to 16 million nodes, across many domains from
academic citation networks, to campaign contributions and actor-movie networks.
We also performed several case studies in online social networks such as blogs and
message board communities.
Our major contributions are the following: (a) We discover several surprising
patterns in network topology and interactions, such as Popularity Decay power law
(in-links to a blog post decay with a power law with -1:5 exponent) and the oscillating
size of connected components; (b) We propose generators such as the Butterfly
generator that reproduce both established and new properties found in real networks;
(c) several case studies, including a proposed method of detecting misstatements in
accounting data, where using network effects gave a significant boost in detection
accuracy.