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Adaptive estimation for small diffusion processes based on sampled data

Abstract

We consider parametric estimation for multi-dimensional diffusion processes with a small dispersion parameter ε\varepsilon from discrete observations. For parametric estimation of diffusion processes, the main targets are the drift parameter α\alpha and the diffusion parameter β\beta. In this paper, we propose two types of adaptive estimators for (α,β)(\alpha,\beta) and show their asymptotic properties under ε0\varepsilon\to0, nn\to\infty and the balance condition that (εnρ)1=O(1)(\varepsilon n^\rho)^{-1} =O(1) for some ρ1/2\rho\ge 1/2. In simulation studies, we examine and compare asymptotic behaviors of the two kinds of adaptive estimators. Moreover, we treat the SIR model which describes a simple epidemic spread for a biological application.

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