4.4 Article

RARE EVENT ASYMPTOTICS FOR EXPLORATION PROCESSES FOR RANDOM GRAPHS

Journal

ANNALS OF APPLIED PROBABILITY
Volume 32, Issue 2, Pages 1112-1178

Publisher

INST MATHEMATICAL STATISTICS-IMS
DOI: 10.1214/21-AAP1704

Keywords

Large deviation principle; random graphs; sparse regime; diminishing rates; Euler-Lagrange equations; calculus of variations problems; configuration model; branching processes; variational representations; Poisson random measures; exploration process; singular dynamics; giant component

Funding

  1. NSF [DMS-1606839, DMS-1613072, DMS-2113662, DMS-1305120, DMS-1814894, DMS-1853968, DMS-1904992]
  2. Army Research Office [W911NF-17-1-0010]
  3. DARPA [W911NF-15-2-0122]

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This paper studies the problem of large deviations in sparse random graph models by establishing large deviation principles on suitable path spaces. The exploration processes and stochastic differential equations are used to analyze the asymptotics of probabilities of non-typical behavior. The paper focuses on the configuration model and provides explicit formulas for decay rates of probabilities of non-typical component degree distributions.
Large deviations for random graph models has been a topic of significant recent research activity. Much work in this area is focused on the class of dense random graph models (number of edges in the graph scale as n(2), where n is the number of vertices) where the theory of graphons has emerged as a principal tool in the study of large deviation properties. These tools do not give a good approach to large deviation problems for random graph models in the sparse regime. The aim of this paper is to study an approach for large deviation problems in this regime by establishing large deviation principles (LDP) on suitable path spaces for certain exploration processes of the associated random graph sequence. Exploration processes are an important tool in the study of sparse random graph models and have been used to understand detailed asymptotics of many functionals of sparse random graphs, such as component sizes, surplus, deviations from trees, etc. In the context of rare event asymptotics of interest here, the point of view of exploration process transforms a large deviation analysis of a static random combinatorial structure to the study of a small noise LDP for certain stochastic dynamical systems with jumps. Our work focuses on one particular class of random graph models, namely the configuration model; however, the general approach of using exploration processes for studying large deviation properties of sparse random graph models has broader applicability. The goal is to study asymptotics of probabilities of nontypical behavior in the large network limit. The first key step for this is to establish a LDP for an exploration process associated with the configuration model. A suitable exploration process here turns out to be an infinite-dimensional Markov process with transition probability rates that diminish to zero in certain parts of the state space. Large deviation properties of such Markovian models is challenging due to poor regularity behavior of the associated local rate functions. Our proof of the LDP relies on a representation of the exploration process in terms of a system of stochastic differential equations driven by Poisson random measures and variational formulas for moments of nonnegative functionals of Poisson random measures. Uniqueness results for certain controlled systems of deterministic equations play a key role in the analysis. Next, using the rate function in the LDP for the exploration process we formulate a calculus of variations problem associated with the asymptotics of component degree distributions. The second key ingredient in our study is a careful analysis of the infinite-dimensional Euler-Lagrange equations associated with this calculus of variations problem. Exact solutions of these systems of nonlinear differential equations are identified which then provide explicit formulas for decay rates of probabilities of nontypical component degree distributions and related quantities.

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