Lower Bounds on Paraclique Density

Discrete Appl Math. 2016 May 11:204:208-212. doi: 10.1016/j.dam.2015.11.010.

Abstract

The scientific literature teems with clique-centric clustering strategies. In this paper we analyze one such method, the paraclique algorithm. Paraclique has found practical utility in a variety of application domains, and has been successfully employed to reduce the effects of noise. Nevertheless, its formal analysis and worst-case guarantees have remained elusive. We address this issue by deriving a series of lower bounds on paraclique densities.

Keywords: clique; clustering; graph density; paraclique.