Ruhr-Uni-Bochum

Low Weight Discrete Logarithms and Subset Sum in 2^0.65n with Polynomial Memory

2020

Konferenz / Medium

Research Hub

Research Hub A: Kryptographie der Zukunft

Research Challenges

RC 2: Quantum-Resistant Cryptography

Abstract

We propose two heuristic polynomial memory collision finding algorithms for the low Hamming weight discrete logarithm problem in any abelian group G. The first one is a direct adaptation of the BeckerCoron-Joux (BCJ) algorithm for subset sum to the discrete logarithm setting. The second one significantly improves on this adaptation for all possible weights using a more involved application of the representation technique together with some new Markov chain analysis. In contrast to other low weight discrete logarithm algorithms, our second algorithm’s time complexity interpolates to Pollard’s |G| 1 2 bound for general discrete logarithm instances. We also introduce a new heuristic subset sum algorithm with polynomial memory that improves on BCJ’s 2 0.72n time bound for random subset sum instances a1, . . . , an, t ∈ Z2n . Technically, we introduce a novel nested collision finding for subset sum – inspired by the NestedRho algorithm from Crypto ’16 – that recursively produces collisions. We first show how to instantiate our algorithm with run time 2 0.649n . Using further tricks, we are then able to improve its complexity down to 2 0.645n .