On Ideal Lattices and Learning with Errors over Rings

Author:

Lyubashevsky Vadim1,Peikert Chris2,Regev Oded3

Affiliation:

1. INRIA and École Normale Supérieure, Paris

2. Georgia Institute of Technology

3. Courant Institute, New York University

Abstract

The “learning with errors” (LWE) problem is to distinguish random linear equations, which have been perturbed by a small amount of noise, from truly uniform ones. The problem has been shown to be as hard as worst-case lattice problems, and in recent years it has served as the foundation for a plethora of cryptographic applications. Unfortunately, these applications are rather inefficient due to an inherent quadratic overhead in the use of LWE. A main open question was whether LWE and its applications could be made truly efficient by exploiting extra algebraic structure, as was done for lattice-based hash functions (and related primitives). We resolve this question in the affirmative by introducing an algebraic variant of LWE called ring-LWE , and proving that it too enjoys very strong hardness guarantees. Specifically, we show that the ring-LWE distribution is pseudorandom, assuming that worst-case problems on ideal lattices are hard for polynomial-time quantum algorithms. Applications include the first truly practical lattice-based public-key cryptosystem with an efficient security reduction; moreover, many of the other applications of LWE can be made much more efficient through the use of ring-LWE.

Funder

Alfred P. Sloan Foundation

Integrated Project QAP

Sixth Framework Programme

IST directorate

Division of Computing and Communication Foundations

Division of Computer and Network Systems

Wolfson Foundation

European Research Council

United States - Israel Binational Science Foundation

Israel Science Foundation

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Hardware and Architecture,Information Systems,Control and Systems Engineering,Software

Reference52 articles.

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