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Probabilistic characterizations of essential self-adjointness and removability of singularities (1703.06056v1)

Published 17 Mar 2017 in math.PR, math-ph, math.FA, and math.MP

Abstract: We consider the Laplacian and its fractional powers of order less than one on the complement $\mathbb{R}d\setminus\Sigma$ of a given compact set $\Sigma\subset \mathbb{R}d$ of zero Lebesgue measure. Depending on the size of $\Sigma$, the operator under consideration, equipped with the smooth compactly supported functions on $\mathbb{R}d \setminus \Sigma$, may or may not be essentially self-ajoint. We survey well known descriptions for the critical size of $\Sigma$ in terms of capacities and Hausdorff measures. In addition, we collect some known results for certain two-parameter stochastic processes. What we finally want to point out is, that, although a priori essential self-adjointness is not a notion directly related to classical probability, it admits a characterization via Kakutani type theorems for such processes.

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