19
2

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 squares 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 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 squares 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.

View on arXiv
Comments on this paper