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Abstract
Two communities that rarely cite each other -- spatial statisticians fitting high-dimensional weather fields, and quantitative investors building portfolios -- have independently arrived at the same mathematical object: a Schur complement, damped by one interpretable parameter. In spatial modeling the Schur complement is the conditional covariance that makes a Gaussian (Vecchia) pseudo-likelihood estimable at scale, and recent work regularizes it by shrinking toward a base model. In allocation it is the residual risk of a bet net of its hedge, and the same parameter interpolates hierarchical risk parity and the minimum-variance portfolio. We show these are one operation -- reliability shrinkage of a conditional Gaussian -- so that the damping a weather model needs to remain estimable when stations outnumber observations is, term for term, the damping a portfolio needs to remain stable when assets outnumber returns. The optimal amount is a closed-form reliability, a James-Stein shrinkage that is simultaneously a Ledoit-Wolf intensity. The shrinkage machinery is classical, but the identity appears to be new: to our knowledge neither literature has noted that the conditional shrinkage a spatial model fits and the diversification-variance tilt a portfolio chooses are one and the same quantity. We make the correspondence precise, note that the two literatures have each supplied what the other lacks, and report a small experiment on the one genuinely open choice -- how to set the damping -- suggesting the spatial community's fitted intensity is, if anything, the better recipe.
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