R\'enyi Rate-Distortion-Perception-Privacy Tradeoff under Indirect Observation

Abstract

We introduce a R\'enyi Rate-Distortion-Perception-Privacy (R-RDPP) framework for indirect source coding. A latent source~S is correlated with a private attribute~U, and the encoder observes only a noisy view~X such that (S,U) - X - Y holds at the decoder output~Y. The communication cost is measured by Sibson's α-mutual information , the privacy leakage by , the semantic distortion between S and Y, and the realism constraint at the semantic marginal PS. We characterize the scalar Gaussian RDPP tradeoff, revealing that standard privacy metrics inherently penalize legitimate semantic recovery. To resolve this, we introduce a conditional privacy measure that quantifies only the residual leakage. In addition, we refine the achievability bounds for α > 1 via the Poisson functional representation. By deriving the exact geometric-mixture distribution of the Poisson index, we obtain exact closed-form expressions for integer-order R\'enyi entropies and sharper computable bounds in regimes where the resulting expression improves the logarithmic-moment approach.

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