Distributed Statistical Zero-Knowledge Proofs via Sumcheck
Benjamin Jauregui, Masayuki Miyamoto

TL;DR
This paper introduces a distributed statistical zero-knowledge protocol based on Sumcheck, enabling efficient, zero-knowledge proofs for graph non-k-colorability and subgraph counting problems.
Contribution
It lifts the classical Sumcheck protocol into a distributed zero-knowledge primitive and applies it to solve key problems with improved round complexity and zero-knowledge guarantees.
Findings
Distributed Sumcheck achieves $O(N)$ rounds with negligible soundness error.
First distributed zero-knowledge proof for non-k-colorability.
Improved distributed proof complexity for subgraph counting.
Abstract
We study distributed zero-knowledge proofs, introduced by Bick, Kol, and Oshman (SODA 2022). While distributed interactive proofs have advanced rapidly, general-purpose techniques for distributed zero-knowledge remain limited and mostly problem-specific. We address this gap by introducing distributed statistical zero-knowledge, requiring that each node's view be simulatable within negligible statistical distance, and by lifting the classical Sumcheck protocol (Lund, Fortnow, Karloff, and Nisan, FOCS 1990) into a modular primitive for distributed zero-knowledge proofs. Our main contribution is a distributed zero-knowledge implementation of Sumcheck. Given oracle access to a polynomial F over a finite field with N variables, we design a protocol verifying claims of the form using rounds of -bit messages, while…
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