Simulation extractable versions of Groth’s zk-SNARK revisited
Zero-knowledge succinct non-interactive arguments of knowledge (zk-SNARKs) are the most efficient proof systems in terms of proof size and verification. Currently, Groth’s scheme from EUROCRYPT 2016, Groth 16 , is the state-of-the-art and is widely deployed in practice. Groth 16 is originally proven...
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Veröffentlicht in: | International journal of information security 2024-02, Vol.23 (1), p.431-445 |
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Zusammenfassung: | Zero-knowledge succinct non-interactive arguments of knowledge (zk-SNARKs) are the most efficient proof systems in terms of proof size and verification. Currently, Groth’s scheme from EUROCRYPT 2016,
Groth
16
, is the state-of-the-art and is widely deployed in practice.
Groth
16
is originally proven to achieve knowledge soundness, which does not guarantee the non-malleability of proofs. There has been considerable progress in presenting new zk-SNARKs or modifying
Groth
16
to efficiently achieve
strong
Simulation extractability, which is shown to be a necessary requirement in some applications. In this paper, we revise the Random oracle based variant of
Groth
16
proposed by Bowe and Gabizon, BG18, the most efficient one in terms of prover efficiency and CRS size among the candidates, and present a more efficient variant that saves 2 pairings in the verification and 1 group element in the proof. This supersedes our preliminary construction, presented in CANS 2020 (Baghery et al. in CANS 20, volume 12579 of LNCS, Springer, Heidelberg. pp 453-461, 2020), which saved 1 pairing in the verification, and was proven in the generic group model. Our new construction also improves on BG18 in that our proofs are in the algebraic group model with Random Oracles and reduces security to standard computational assumptions in bilinear groups (as opposed to using the full power of the generic group model (GGM)). We implement our proposed simulation extractable zk-SNARK (SE zk-SNARK) along with BG18 in the Arkworks library, and compare the efficiency of our scheme with some related works. Our empirical experiences confirm that our SE zk-SNARK is more efficient than all previous simulation extractable (SE) schemes in most dimensions and it has very close efficiency to the original
Groth
16
. |
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ISSN: | 1615-5262 1615-5270 1615-5270 |
DOI: | 10.1007/s10207-023-00750-7 |