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Statistical inference for a partially observed interacting system of Hawkes processes

19 February 2019
Chenguang Liu
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Abstract

We observe the actions of a KKK sub-sample of NNN individuals up to time ttt for some large K<NK<NK<N. We model the relationships of individuals by i.i.d. Bernoulli(ppp)-random variables, where p∈(0,1]p\in (0,1]p∈(0,1] is an unknown parameter. The rate of action of each individual depends on some unknown parameter μ>0\mu> 0μ>0 and on the sum of some function ϕ\phiϕ of the ages of the actions of the individuals which influence him. The function ϕ\phiϕ is unknown but we assume it rapidly decays. The aim of this paper is to estimate the parameter ppp asymptotically as N→∞N\to \inftyN→∞, K→∞K\to \inftyK→∞, and t→∞t\to \inftyt→∞. Let mtm_tmt​ be the average number of actions per individual up to time ttt. In the subcritical case, where mtm_tmt​ increases linearly, we build an estimator of ppp with the rate of convergence 1K+NmtK+NKmt\frac{1}{\sqrt{K}}+\frac{N}{m_t\sqrt{K}}+\frac{N}{K\sqrt{m_t}}K​1​+mt​K​N​+Kmt​​N​. In the supercritical case, where mtm_{t}mt​ increases exponentially fast, we build an estimator of ppp with the rate of convergence 1K+NmtK\frac{1}{\sqrt{K}}+\frac{N}{m_{t}\sqrt{K}}K​1​+mt​K​N​.

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