The Gaussian Correlation Inequality (GCI), proved by Royen for centered Gaussian measures, asserts that Pr(X ∈ A ∩ B) ≥ Pr(X ∈ A) Pr(X ∈ B) for symmetric convex sets A, B. We show this inequality fails for non-centered Gaussian vectors. We exhibit an explicit counterexample in dimension two with GCI ratio R ≈ 7.24 × 10−18, verified to 60 decimal digits, and establish a local sign theorem: at the identity covariance, the sign of ∂R/∂ρij equals sign(mi · mj ), where m is the mean vector. When the means have opposite signs, the GCI ratio R is locally decreasing in ρ, producing violations at positive correlation. We further prove that this sign structure is universal: it holds for all symmetric unimodal densities, including Laplace, logistic, and Student-t, with heavier tails producing larger GCI ratios. The counterexample and sign theorem have implications for the composition analysis of differential privacy mechanisms that assume or exploit positive Gaussian correlation.
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Sefirot
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Sefirot (Sun,) studied this question.
synapsesocial.com/papers/69e7143fcb99343efc98db12 — DOI: https://doi.org/10.5281/zenodo.19650208