Maximum likelihood estimator for skew Brownian motion: the convergence rate
Abstract
We give a thorough description of the asymptotic property of the maximum likelihood estimator (MLE) of the skewness parameter of a Skew Brownian Motion (SBM). Thanks to recent results on the Central Limit Theorem of the rate of convergence of estimators for the SBM, we prove a conjecture left open that the MLE has asymptotically a mixed normal distribution involving the local time with a rate of convergence of order . We also give a series expansion of the MLE and study the asymptotic behavior of the score and its derivatives, as well as their variation with the skewness parameter. In particular, we exhibit a specific behavior when the SBM is actually a Brownian motion, and quantify the explosion of the coefficients of the expansion when the skewness parameter is close to or .
Cite
@article{arxiv.2302.02954,
title = {Maximum likelihood estimator for skew Brownian motion: the convergence rate},
author = {Antoine Lejay and Sara Mazzonetto},
journal= {arXiv preprint arXiv:2302.02954},
year = {2023}
}