Property-Preserving Hash Functions from Standard Assumptions
Nils Fleischhacker, Kasper Green Larsen, and Mark Simkin

TL;DR
This paper introduces a new, efficient, and secure property-preserving hash function for the Hamming distance predicate based on standard lattice assumptions, improving upon previous methods in security, efficiency, and compressibility.
Contribution
The work presents the first lattice-based property-preserving hash for Hamming distance, with reduced computational complexity and a compressed description, surpassing prior approaches.
Findings
Constructed a lattice-based hash with standard assumptions.
Achieved lower computational effort compared to previous methods.
Proved near-optimal output size for the hash function.
Abstract
Property-preserving hash functions allow for compressing long inputs and into short hashes and in a manner that allows for computing a predicate given only the two hash values without having access to the original data. Such hash functions are said to be adversarially robust if an adversary that gets to pick and after the hash function has been sampled, cannot find inputs for which the predicate evaluated on the hash values outputs the incorrect result. In this work we construct robust property-preserving hash functions for the hamming-distance predicate which distinguishes inputs with a hamming distance at least some threshold from those with distance less than . The security of the construction is based on standard lattice hardness assumptions. Our construction has several advantages over the best known previous…
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