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Besov-Orlicz moduli of Brownian motion and polygonal partial sum processes


Preprint


Fabian Mies
arXiv, 2603.25966, 2026


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APA   Click to copy
Mies, F. (2026). Besov-Orlicz moduli of Brownian motion and polygonal partial sum processes. ArXiv, 2603.25966. https://doi.org/10.48550/arXiv.2603.25966


Chicago/Turabian   Click to copy
Mies, Fabian. “Besov-Orlicz Moduli of Brownian Motion and Polygonal Partial Sum Processes.” arXiv 2603.25966 (2026).


MLA   Click to copy
Mies, Fabian. “Besov-Orlicz Moduli of Brownian Motion and Polygonal Partial Sum Processes.” ArXiv, vol. 2603.25966, 2026, doi:10.48550/arXiv.2603.25966.


BibTeX   Click to copy

@article{fabian2026a,
  title = {Besov-Orlicz moduli of Brownian motion and polygonal partial sum processes},
  year = {2026},
  journal = {arXiv},
  volume = {2603.25966},
  doi = {10.48550/arXiv.2603.25966},
  author = {Mies, Fabian}
}

The sample paths of Brownian motion are known to admit the exact Besov-type smoothness exponent 1/2 when measured in the sub-Gaussian Orlicz norm. We extend these regularity results by deriving the exact limit of the sub-Gaussian Orlicz modulus for Brownian motion in Banach spaces, and we provide a rate of convergence towards this limiting value. The central technique is a new chaining bound for the Orlicz modulus of a stochastic process. The latter also applies to polyogonal partial sum processes of functional random variables and allows us to strengthen Donsker's invariance principle to all function spaces on the Besov-Orlicz scale up to the exact modulus with exponent 1/2. For the critical case, we establish the thresholded weak convergence of the Besov-Orlicz seminorm of the partial sum process. The analytical results find application in a nonparametric statistical testing problem, where Besov-Orlicz statistics are shown to detect a broader range of alternatives compared to Hölderian multiscale statistics.

Keywords: functional data, Donsker's Theorem, sub-Gaussian random variables, signal discovery
Aperiodic test signal FLIP, with length scale 2^(-4)
Aperiodic test signal FLIP, with length scale 2^(-4)
Detection power for FLIP signal, with length scale 2^(-4)
Detection power for FLIP signal, with length scale 2^(-4)
Detection power for FLIP signal, with length scale 2^(-6)
Detection power for FLIP signal, with length scale 2^(-6)

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