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Longjiang Qu, College of Science, National University of Defense Technology
At ASIACRYPT 2023, Devevey, Passelègue and Stehlé proposed the G+G signature, which is designed based on the Fiat-Shamir transform without rejection sampling technique. However, the optimization of the G+G signature have not been studied as extensively as those of Lyubashevsky-type signatures. The contribution of this work is the integration of the Asymmetric Learning with Errors (ALWE) problem into the key generation phase of the G+G signature. We present a more precise estimation method for the largest singular value of the secret key and introduce a new non-spherical Gaussian distribution to characterize the signature distribution. Experimental results demonstrate that, under parameters ensuring the same security level, our optimized G+G variant reduces the signature size by approximately 25%.
BibTeX
@misc{cryptoeprint:2026/943,
author = {Renjie Jin and Shuoqu Jian and Longjiang Qu},
title = {Optimized G+G Signature},
howpublished = {Cryptology {ePrint} Archive, Paper 2026/943},
year = {2026},
url = {https://eprint.iacr.org/2026/943}
}
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