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Nonparametric Estimation for I.I.D. Paths of a Martingale Driven Model with Application to Non-Autonomous Financial Models

Abstract

This paper deals with a projection least square estimator of the function J0J_0 computed from multiple independent observations on [0,T][0,T] of the process ZZ defined by dZt=J0(t)dMt+dMtdZ_t = J_0(t)d\langle M\rangle_t + dM_t, where MM is a centered, continuous and square integrable martingale vanishing at 00. Risk bounds are established on this estimator, on an associated adaptive estimator and on an associated discrete time version used in practice. An appropriate transformation allows to rewrite the differential equation dXt=V(Xt)(b0(t)dt+σ(t)dBt)dX_t = V(X_t)(b_0(t)dt +\sigma(t)dB_t), where BB is a fractional Brownian motion of Hurst parameter H[1/2,1)H\in [1/2,1), as a model of the previous type. So, the second part of the paper deals with risk bounds on a nonparametric estimator of b0b_0 derived from the results on the projection least square estimator of J0J_0. In particular, our results apply to the estimation of the drift function in a non-autonomous Black-Scholes model and to nonparametric estimation in a non-autonomous fractional stochastic volatility model.

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