International Association for Cryptologic Research

International Association
for Cryptologic Research

ASIACRYPT 2024

Actively Secure Polynomial Evaluation from Shared Polynomial Encodings


Pascal Reisert
University of Stuttgart

Marc Rivinius
University of Stuttgart

Toomas Krips
University of Tartu

Sebastian Hasler
University of Stuttgart

Ralf Küsters
University of Stuttgart


Keywords: Multi-party computation, randomized encodings, and SPDZ.


Abstract

Many of the currently best actively secure Multi-Party Computation (MPC) protocols like SPDZ (Damgård et al., CRYPTO 2012) and improvements thereof use correlated randomness to speed up the time-critical online phase. Although many of these protocols still rely on classical Beaver triples, recent results show that more complex correlations like matrix or convolution triples lead to more efficient evaluations of the corresponding operations, i.e. matrix multiplications or tensor convolutions. In this paper, we address the evaluation of multivariate polynomials with a new form of randomness: polytuples. We use the polytuples to construct a new family of randomized encodings which then allow us to evaluate the given multivariate polynomial. Our approach can be fine-tuned in various ways to the constraints of applications at hand, in terms of round complexity, bandwidth, and tuple size. We show that for many real-world setups, a polytuples-based online phase outperforms state-of-the-art protocols based on Beaver triples.

Publication

ASIACRYPT 2024

Paper

Artifact

Artifact number
asiacrypt/2024/a4

Artifact published
February 7, 2025

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IACR Results Reproduced

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License
This work is licensed under the CSIRO Open Source Software Licence (Based on MIT/BSD Open Source Licence).


BibTeX How to cite

Reisert, P., Rivinius, M., Krips, T., Hasler, S., & Küsters, R. (2024). Actively Secure Polynomial Evaluation from Shared Polynomial Encodings. In: Chung, KM., Sasaki, Y. (eds) Advances in Cryptology — ASIACRYPT 2024. pp. 3—35. Lecture Notes in Computer Science, Vol. 15489. Springer, Singapore. https://doi.org/10.1007/978-981-96-0938-3_1. Artifact available at https://artifacts.iacr.org/asiacrypt/2024/a4.