Community detection and percolation of information in a geometric setting

Author:

Eldan Ronen,Mikulincer Dan,Pieters Hester

Abstract

AbstractWe make the first steps towards generalising the theory of stochastic block models, in the sparse regime, towards a model where the discrete community structure is replaced by an underlying geometry. We consider a geometric random graph over a homogeneous metric space where the probability of two vertices to be connected is an arbitrary function of the distance. We give sufficient conditions under which the locations can be recovered (up to an isomorphism of the space) in the sparse regime. Moreover, we define a geometric counterpart of the model of flow of information on trees, due to Mossel and Peres, in which one considers a branching random walk on a sphere and the goal is to recover the location of the root based on the locations of leaves. We give some sufficient conditions for percolation and for non-percolation of information in this model.

Publisher

Cambridge University Press (CUP)

Subject

Applied Mathematics,Computational Theory and Mathematics,Statistics and Probability,Theoretical Computer Science

Reference21 articles.

1. [20] Valdivia, E. A. (2018) Relative concentration bounds for the kernel matrix spectrum, arXiv preprint arXiv: 1812. 02108.

2. Information flow on trees;Mossel;Ann. Appl. Probab.,08 2003

3. Concentration of random graphs and application to community detection;Le;Proc. Int. Cong. Math.,2018

4. [9] Galhotra, S. , Mazumdar, A. , Pal, S. and Saha, B.. The geometric block model. arXiv preprint arXiv: 1709. 05510, 2017.

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