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Privacy-Aware MMSE Estimation

Abstract

We investigate the problem of the predictability of random variable YY under a privacy constraint dictated by random variable XX, correlated with YY, where both predictability and privacy are assessed in terms of the minimum mean-squared error (MMSE). Given that XX and YY are connected via a binary-input symmetric-output (BISO) channel, we derive the \emph{optimal} random mapping PZYP_{Z|Y} such that the MMSE of YY given ZZ is minimized while the MMSE of XX given ZZ is greater than (1ϵ)var(X)(1-\epsilon)\mathsf{var}(X) for a given ϵ0\epsilon\geq 0. We also consider the case where (X,Y)(X,Y) are continuous and PZYP_{Z|Y} is restricted to be an additive noise channel.

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