Randomized Distributed Function Computation (RDFC): Ultra-Efficient Semantic Communication Applications to Privacy
This work provides an energy-efficient semantic communication strategy for privacy-aware distributed computation systems, addressing a domain-specific problem with incremental advancements.
The paper tackles the problem of efficiently computing randomized functions of data in distributed systems while ensuring privacy, showing that sufficient common randomness can reduce communication rates by up to two orders of magnitude compared to no shared randomness, and RDFC without shared randomness still outperforms lossless transmission significantly.
We establish the randomized distributed function computation (RDFC) framework, in which a sender transmits just enough information for a receiver to generate a randomized function of the input data. Describing RDFC as a form of semantic communication, which can be essentially seen as a generalized remote-source-coding problem, we show that security and privacy constraints naturally fit this model, as they generally require a randomization step. Using strong coordination metrics, we ensure (local differential) privacy for every input sequence and prove that such guarantees can be met even when no common randomness is shared between the transmitter and receiver. This work provides lower bounds on Wyner's common information (WCI), which is the communication cost when common randomness is absent, and proposes numerical techniques to evaluate the other corner point of the RDFC rate region for continuous-alphabet random variables with unlimited shared randomness. Experiments illustrate that a sufficient amount of common randomness can reduce the semantic communication rate by up to two orders of magnitude compared to the WCI point, while RDFC without any shared randomness still outperforms lossless transmission by a large margin. A finite blocklength analysis further confirms that the privacy parameter gap between the asymptotic and non-asymptotic RDFC methods closes exponentially fast with input length. Our results position RDFC as an energy-efficient semantic communication strategy for privacy-aware distributed computation systems.