Multivariate Hawkes processes on inhomogeneous random graphs
Abstract
We consider a population of N interacting neurons, represented by a multivariate Hawkes process: the firing rate of each neuron depends on the history of the connected neurons. Contrary to the mean-field framework where the interaction occurs on the complete graph, the connectivity between particles is given by a random possibly diluted and inhomogeneous graph where the probability of presence of each edge depends on the spatial position of its vertices. We address the well-posedness of this system and Law of Large Numbers results as N∞. A crucial issue will be to understand how spatial inhomogeneity influences the large time behavior of the system.
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