Nonparametric Estimation for SDE with Sparsely Sampled Paths: an FDA Perspective
Neda Mohammadi, Leonardo Santoro, Victor M. Panaretos

TL;DR
This paper develops a nonparametric method for estimating drift and diffusion coefficients of SDEs from sparsely sampled, noisy data, using PDE-based functional data analysis techniques, and establishes convergence rates.
Contribution
It introduces a novel PDE-based approach to nonparametrically estimate SDE coefficients from sparse, irregular data, bridging FDA and SDE methodologies.
Findings
Establishes uniform convergence rates for the estimators.
Handles arbitrarily sparse measurements per path.
Provides explicit rates depending on sampling frequency.
Abstract
We consider the problem of nonparametric estimation of the drift and diffusion coefficients of a Stochastic Differential Equation (SDE), based on independent replicates , observed sparsely and irregularly on the unit interval, and subject to additive noise corruption. By sparse we intend to mean that the number of measurements per path can be arbitrary (as small as two), and remain constant with respect to . We focus on time-inhomogeneous SDE of the form , where and , which includes prominent examples such as Brownian motion, Ornstein-Uhlenbeck process, geometric Brownian motion, and Brownian bridge. Our estimators are constructed by relating the local (drift/diffusion) parameters of the diffusion to their global parameters…
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Taxonomy
TopicsStochastic processes and financial applications · Statistical Methods and Inference · Mathematical Biology Tumor Growth
