Item Type: | Conference or Workshop Item |
---|---|
Title: | Relational models for generating labeled real-world graphs |
Creators Name: | Lippert, C., Shervashidze, N. and Stegle, O. |
Abstract: | Analyzing and understanding the structure of social networks and other real-world graphs has become a major area of research in the field of data mining. An important problem setting is the creation of realistic synthetic graphs that resemble realworld social networks. While a range of efficient algorithms for this task have been proposed, current methods solely take the network topology into account ignoring any node labels. We propose a probabilistic approach to synthetic graph generation with node labels, building on concepts from relational learning. |
Keywords: | Synthetic Graph Generation, Statistical Relational Learning, Infinite Relational Models |
Date: | 2009 |
Repository Staff Only: item control page