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research article

Succinct Non-Interactive Arguments via Linear Interactive Proofs

Bitansky, Nir
•
Chiesa, Alessandro  
•
Ishai, Yuval
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July 1, 2022
Journal Of Cryptology

Succinct non-interactive arguments (SNARGs) enable verifying NP statements with lower complexity than required for classical NP verification. Traditionally, the focus has been on minimizing the length of such arguments; nowadays, researchers have focused also on minimizing verification time, by drawing motivation from the problem of delegating computation. A common relaxation is a preprocessing SNARG, which allows the verifier to conduct an expensive offline phase that is independent of the statement to be proven later. Recent constructions of preprocessing SNARGs have achieved attractive features: they are publicly-verifiable, proofs consist of only 0(1) encrypted (or encoded) field elements, and verification is via arithmetic circuits of size linear in the NP statement. Additionally, these constructions seem to have "escaped the hegemony" of probabilistically-checkable proofs (PCPs) as a basic building block of succinct arguments. We present a general methodology for the construction of preprocessing SNARGs, as well as resulting new efficiency features. Our contribution is threefold:

(1) We introduce and study a natural extension of the interactive proof model that considers algebraically-bounded provers; this new setting is analogous to the common study of algebraically-bounded "adversaries" in other fields, such as pseudorandomness and randomness extraction. More concretely, in this work we focus on linear (or affine) provers, and provide several constructions of (succinct two-message) linear interactive proofs (LIPs) for NP. Our constructions are based on general transformations applied to both linear PCPs (LPCPs) and traditional "unstructured" PCPs.

(2) We give conceptually simple cryptographic transformations from LIPs to preprocessing SNARGs, whose security can be based on different forms of linear targeted malleability (implied by previous knowledge assumptions). Our transformations convert arbitrary (two-message) LIPs into designated-verifier SNARGs, and LIPs with degree-bounded verifiers into publicly-verifiable SNARGs. We also extend our methodology to obtain zeroknowledge LIPs and SNARGs. Our techniques yield SNARGs of knowledge and thus can benefit from known recursive composition and bootstrapping techniques.

(3) Following this methodology, we exhibit several constructions achieving new efficiency features, such as "single-ciphertext preprocessing SNARGs." We also offer a new perspective on existing constructions of preprocessing SNARGs, revealing a direct connection of these to LPCPs and LIPs.

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Type
research article
DOI
10.1007/s00145-022-09424-4
Web of Science ID

WOS:000789849100001

Author(s)
Bitansky, Nir
Chiesa, Alessandro  
Ishai, Yuval
Ostrovsky, Rafail
Paneth, Omer
Date Issued

2022-07-01

Publisher

SPRINGER

Published in
Journal Of Cryptology
Volume

35

Issue

3

Start page

15

Subjects

Computer Science, Theory & Methods

•

Engineering, Electrical & Electronic

•

Mathematics, Applied

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Computer Science

•

Engineering

•

Mathematics

•

interactive proofs

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probabilistically-checkable proofs

•

succinct arguments

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homomorphic encryption

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zero-knowledge

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factoring polynomials

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short pcps

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verification

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computation

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assumptions

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complexity

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delegation

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hardness

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np

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
COMPSEC  
Available on Infoscience
May 23, 2022
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/188066
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