English

Sharp adaptive nonparametric testing for constant volatility

Statistics Theory 2026-04-29 v1 Statistics Theory

Abstract

Based on discrete observations, we develop a test to infer if the volatility function σ()\sigma(\cdot) within the nonparametric Gaussian white noise model dYt=σ(t)dWtdY_t = \sigma(t)dW_t is constant. The testing procedure is shown to be minimax-optimal and adaptive for infill asymptotics and these results entail that a deviation from the null hypothesis of constancy is best measured in terms of the ratio of σ(t)\sigma(t) and its L2L^2-average. The derivation of optimal constants requires the construction of hypotheses with height h(b)h(b), where the parameter bb solves Fn(b)=0F_n(b)=0 for given functions FnF_n. Proving this equation to be solvable for each nNn\in\mathbb{N} and establishing quantitative bounds of the solutions is built upon the implicit function theorem.

Keywords

Cite

@article{arxiv.2604.25668,
  title  = {Sharp adaptive nonparametric testing for constant volatility},
  author = {Johannes Brutsche and Lukas Riepl},
  journal= {arXiv preprint arXiv:2604.25668},
  year   = {2026}
}