Title :
Sharp performance bounds for graph clustering via convex optimization
Author :
Vinayak, Ramya Korlakai ; Oymak, Samet ; Hassibi, Babak
Author_Institution :
California Inst. of Technol., Pasadena, CA, USA
Abstract :
The problem of finding clusters in a graph arises in several applications such as social networks, data mining and computer networks. A typical, convex optimization-approach, that is often adopted is to identify a sparse plus low-rank decomposition of the adjacency matrix of the graph, with the (dense) low-rank component representing the clusters. In this paper, we sharply characterize the conditions for successfully identifying clusters using this approach. In particular, we introduce the “effective density” of a cluster that measures its significance and we find explicit upper and lower bounds on the minimum effective density that demarcates regions of success or failure of this technique. Our conditions are in terms of (a) the size of the clusters, (b) the denseness of the graph, and (c) regularization parameter of the convex program. We also present extensive simulations that corroborate our theoretical findings.
Keywords :
convex programming; matrix algebra; pattern clustering; adjacency matrix; cluster effective density; cluster representation; computer networks; convex optimization; data mining; graph clustering; performance bounds; regularization parameter; social networks; sparse plus low-rank decomposition; Clustering algorithms; Convex functions; Correlation; Data mining; Matrix decomposition; Sparse matrices; Stochastic processes; Graph clustering; convex optimization; low rank plus sparse; thresholds;
Conference_Titel :
Acoustics, Speech and Signal Processing (ICASSP), 2014 IEEE International Conference on
Conference_Location :
Florence
DOI :
10.1109/ICASSP.2014.6855219