Mercer's Theorem
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The stochastic analog of Mercer's theorem is the Karhunen-Loève theorem, which decomposes a random process into orthogonal eigenfunctions with random coefficients. Where Mercer guarantees that a deterministic kernel has a spectral decomposition, Karhunen-Loève guarantees that a stochastic process with continuous covariance has a similar decomposition, making it the foundation of principal component analysis in function spaces.
See also: Karhunen-Loève Theorem