Limit theorems for von Mises statistics of a measure preserving transformation
Manfred Denker, Mikhail Gordin

TL;DR
This paper establishes limit theorems for von Mises statistics of measure-preserving transformations, including almost sure convergence, a central limit theorem, and distributional convergence to quadratic forms, under specific kernel conditions.
Contribution
It introduces new limit theorems for von Mises statistics in the context of measure-preserving transformations, including ergodic, CLT, and distributional results with martingale techniques.
Findings
Established an ergodic theorem for von Mises statistics sequences.
Derived a central limit theorem for non-degenerate kernels.
Proved distributional convergence to quadratic forms for certain kernels.
Abstract
For a measure preserving transformation of a probability space we investigate almost sure and distributional convergence of random variables of the form where (called the \emph{kernel}) is a function from to and are appropriate normalizing constants. We observe that the above random variables are well defined and belong to provided that the kernel is chosen from the projective tensor product with We establish a form of the individual ergodic theorem for such sequences. Next, we give a martingale approximation argument to derive a central limit theorem in the non-degenerate case (in the sense of…
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