Title :
Learning and Predicting the Evolution of Social Networks
Author :
Bringmann, Björn ; Berlingerio, Michele ; Bonchi, Francesco ; Gionis, Aristides
Author_Institution :
Katholieke Univ. Leuven, Leuven, Belgium
Abstract :
With the increasing availability of large social network data, there is also an increasing interest in analyzing how those networks evolve over time. Traditionally, the analysis of social networks has focused only on a single snapshot of a network. Researchers have already verified that social networks follow power-law degree distribution, have a small diameter, and exhibit small-world structure and community structure. Attempts to explain the properties of social networks have led to dynamic models inspired by the preferential attachment models which assumes that new network nodes have a higher probability of forming links with high-degree nodes, creating a rich-get-richer effect. Although some effort has been devoted to analyzing global properties of social network evolution, not much has been done to study graph evolution at a microscopic level. A first step in this direction investigated a variety of network formation strategies, showing that edge locality plays a critical role in network evolution. We propose a different approach. Following the paradigm of association rules and frequent-pattern mining, our work searches for typical patterns of structural changes in dynamic networks. Mining for such local patterns is a computationally challenging task that can provide further insight into the increasing amount of evolving network data. Beyond the notion of graph evolution rules (GERs), a concept that we introduced in an earlier work, we developed the Graph Evolution Rule Miner (GERM) software to extract such rules and applied these rules to predict future network evolution.
Keywords :
data mining; evolutionary computation; graph theory; learning systems; social networking (online); association rules; edge locality; frequent-pattern mining; graph evolution rule miner software; network formation strategies; power-law degree distribution; preferential attachment models; social network evolution; Bibliographies; Data mining; Intelligent systems; Libraries; Pattern matching; Prediction theory; Social network services; graph evolution rules; intelligent systems; link prediction; social learning; social networks;
Journal_Title :
Intelligent Systems, IEEE
DOI :
10.1109/MIS.2010.91