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Detecting Correlated Gaussian Databases

23 June 2022
Zeynep K
B. Nazer
    FedML
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Abstract

This paper considers the problem of detecting whether two databases, each consisting of nnn users with ddd Gaussian features, are correlated. Under the null hypothesis, the databases are independent. Under the alternate hypothesis, the features are correlated across databases, under an unknown row permutation. A simple test is developed to show that detection is achievable above ρ2≈1d\rho^2 \approx \frac{1}{d}ρ2≈d1​. For the converse, the truncated second moment method is used to establish that detection is impossible below roughly ρ2≈1dn\rho^2 \approx \frac{1}{d\sqrt{n}}ρ2≈dn​1​. These results are compared to the corresponding recovery problem, where the goal is to decode the row permutation, and a converse bound of roughly ρ2≈1−n−4/d\rho^2 \approx 1 - n^{-4/d}ρ2≈1−n−4/d has been previously shown. For certain choices of parameters, the detection achievability bound outperforms this recovery converse bound, demonstrating that detection can be easier than recovery in this scenario.

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