15.04.2026 12:15 Daniel Rademacher (Universität Heidelberg): Mercer Expansions in Sobolev Spaces and Applications to Stochastic Processes
Mercer's celebrated theorem is refined and extended by introducing a novel class of higher-order kernel operators that includes the common integral operator only as a special case.
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These operators genuinely take into account information encoded in the (weak) derivatives of a kernel, and their natural domains are Sobolev spaces of order k over some bounded d-dimensional space. domain, where k depends on the order of (weak) differentiability.
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The spectral decomposition of such higher-order kernel operators leads to Mercer-type expansions, which are optimal in terms of the Sobolev norm and, if k>d, also converge uniformly without requiring the kernel to be positive definite.
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Nuclearity of higher order kernel operators is confirmed for positive definite kernels, and a major refinement of Mercer's theorem is obtained that implies trace formulas and a simple rate for the uniform convergence (including derivatives) in terms of the eigenvalues.
A further immediate consequence is novel spectral representations of RKHS's.
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Finally, applied to the covariance kernel of a (weakly) differentiable stochastic process, these refinements also yield novel Karhunen-Loève-type expansions allowing for simultaneous approximations of the process and its (weak) derivatives in a mean-square-optimal sense.
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20.05.2026 12:15 Veronica Vinciotti (University of Trento, IT): t.b.a.
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24.06.2026 12:15 Saber Salehkaleybar (Leiden University, NL): t.b.a.
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01.07.2026 12:15 Fang Han (University of Washington, Seattle): t.b.a.
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