Combined Clustering of Graph and Attribute Data
This thesis presents combined clustering approaches for clustering graph data and attribute data simultaneously in order to detect clusters that are densely connected in the graph and at the same time show similarity in the attribute space. As for high-dimensional vector data, clusters usually exist only in subspaces of the attribute space, we follow the principle of subspace clustering to enable the detection of clusters which show similarity only in a subset of the attributes.
- Paperback | 263 pages
- 149 x 208 x 15mm | 375g
- 05 Jun 2014
- Apprimus Wissenschaftsver