RUS  ENG
Full version
JOURNALS // Theory of Stochastic Processes // Archive

Theory Stoch. Process., 2009 Volume 15(31), Issue 2, Pages 62–83 (Mi thsp86)

$M$-estimation for discretely sampled diffusions

Jaya P. N. Bishwal

Department of Mathematics and Statistics, University of North Carolina at Charlotte, 376 Fretwell Bldg, 9201 University City Blvd., Charlotte, NC 28223-0001

Abstract: We study the estimation of a parameter in the nonlinear drift coefficient of a stationary ergodic diffusion process satisfying a homogeneous Itô stochastic differential equation based on discrete observations of the process, when the true model does not necessarily belong to the observer's model. Local asymptotic normality of $M$-ratio random fields are studied. Asymptotic normality of approximate $M$-estimators based on the Itô and Fisk–Stratonovich approximations of a continuous $M$-functional are obtained under a moderately increasing experimental design condition through the weak convergence of approximate $M$-ratio random fields. The derivatives of an approximate log-$M$ functional based on the Itô approximation are martingales, but the derivatives of a log-$M$ functional based on the Fisk–Stratonovich approximation are not martingales, but the average of forward and backward martingales. The averaged forward and backward martingale approximations have a faster rate of convergence than the forward martingale approximations.

Keywords: Itô stochastic differential equations, diffusion processes, model misspecification, discrete observations, moderately increasing experimental design, approximate $M$-estimators, local asymptotic normality, robustness, weak convergence of random fields.

MSC: Primary 62F12, 62F15, 62M05, 62F35; Secondary 60F05, 60F10, 60H05, 60H10

Language: English



Bibliographic databases:


© Steklov Math. Inst. of RAS, 2024