Asymptotic bounds for clustering problems in random graphs

Author:

Lykhovyd Eugene1,Butenko Sergiy1ORCID,Krokhmal Pavlo2

Affiliation:

1. Wm. Michael Barnes'64 Department of Industrial and Systems Engineering Texas A&M University College Station Texas USA

2. Department of Systems and Industrial Engineering University of Arizona Tucson Arizona USA

Abstract

AbstractGraph clustering is an important problem in network analysis. This problem can be approached by first finding a large cluster subgraph (i.e., a subgraph in which every connected component is a complete graph), perhaps in a relaxed form (connected components may have missing edges), and then assigning each of the remaining vertices to one of the connected components of the cluster subgraph according to some optimization criteria. The more vertices can be included in the initial cluster subgraph (also referred to as independent union of clusters), the more “clusterable” the graph is. This paper proposes a framework for establishing asymptotic bounds on the cardinality of independent unions of clusters in Erdős‐Rényi random graphs with constant , referred to as uniform random graphs. In particular, sufficient conditions ensuring (where is the number of nodes) upper bounds with probability 1 are developed and shown to be applicable for the maximum independent union of cliques as well as some clique relaxations. In addition, it is shown that every graph must have an independent union of cliques of cardinality at least . Since this bound is asymptotically tight on uniform random graphs, this suggests that these graphs can be viewed as a “least clusterable” class of graphs.

Funder

Air Force Office of Scientific Research

Publisher

Wiley

Subject

Computer Networks and Communications,Hardware and Architecture,Information Systems,Software

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