Journal article
Normal approximations for discrete-time occupancy processes
L Hodgkinson, R McVinish, PK Pollett
Stochastic Processes and their Applications | ELSEVIER | Published : 2020
Abstract
We study normal approximations for a class of discrete-time occupancy processes, namely, Markov chains with transition kernels of product Bernoulli form. This class encompasses numerous models which appear in the complex networks literature, including stochastic patch occupancy models in ecology, network models in epidemiology, and a variety of dynamic random graph models. Bounds on the rate of convergence for a central limit theorem are obtained using Stein's method and moment inequalities on the deviation from an analogous deterministic model. As a consequence, our work also implies a uniform law of large numbers for a subclass of these processes.
Grants
Awarded by Australian Research Council
Funding Acknowledgements
[ "All authors are supported in part by the Australian Research Council (Discovery Grant DP150101459 and the ARC Centre of Excellence for Mathematical and Statistical Frontiers, CE140100049).", "Supported by an Australian Postgraduate Award." ]