Short Integer Solution
Short Integer Solution (SIS) is an average-case problem, which was introduced in 1996 by Miklós Ajtai.[1] He introduced a family of one-way functions based on SIS and showed that SIS is hard to solve on average if a version of the shortest vector problem is hard in a worst-case scenario.
Formal Definition
SISn,m,q,β
Let matrix be chosen uniformly at random. An adversary is asked to find a short non-zero vector satisfying .
SIS intuitively states that it is hard to find a short vector in the kernel of matrix .
A solution to SIS without the condition can be found using Gaussian elimination. Thus, the condition is required as otherwise is a trivial solution.
Ring-SISm,d,q,β
Let matrix be chosen uniformly at random. An adversary is asked to find a short non-zero vector satisfying .
Let denote a polynomial ring . The function is usually chosen as with special interest in being a power of 2.[2] However, the Ring SIS (R-SIS) problem has also been studied for other choices such as .[3][4][5]
Module-SISn,m,d,q,β
Let matrix be chosen uniformly at random. An adversary is asked to find a short non-zero vector satisfying .
While M-SIS is a less compact variant of SIS than R-SIS, the M-SIS problem is asymptotically at least as hard as R-SIS and therefore gives a tighter bound on the hardness assumption of SIS. This makes assuming the hardness of M-SIS a safer, but less efficient underlying assumption when compared to R-SIS.[6]
Versions of SIS
Inhomogeneous SISn,m,q,β
Let matrix and target vector be chosen uniformly at random. An adversary is asked to find a short vector satisfying .
The inhomogeneous version of SIS (ISIS) introduces a target vector , which is chosen uniformly at random. The probability of ending up in the homogeneous case with happens with probability , which allows removing the condition of being non-zero.
ISIS is as hard as SIS. A SIS instance can be reduced to ISIS using the last column of as target vector for ISIS. Any solution to the ISIS instance with challenge matrix and target vector yields a valid SIS solution of slightly larger norm. The reduction from ISIS to SIS requires index guessing a non-zero entry in the SIS solution and embedding the target vector at this position in the challenge matrix .
Normal Form SISn,m,q,β
Let matrix be chosen uniformly at random and define . An adversary is asked to find a short non-zero vector satisfying .
Normal Form SIS (NFSIS) is related to the Hermite normal form of a uniformly random matrix . The normal form version of SIS is often used to reduce public key sizes by size as the static part of the matrix, the identity matrix , can be omitted for data transmission.
A SIS instance can be reduced to a NFSIS instance if the first columns of its challenge matrix are invertible over . Assuming this is the case, denote the first columns of by and define the NFSIS challenge matrix by . Then, any solution of the NFSIS instance is a solution of the SIS instance and vice versa.
Further versions
Hardness of SIS
The initial hardness results of Ajtai[1] in 1996 were later refined by a series of works[8][9][10]. All results follow are instances of the following theorem.
Theorem[11] For any m = poly(n), any β > 0, and any sufficiently large q ≥ β · poly(n), solving SISn,m,q,β with non-negligible probability is at least as hard as solving the decisional approximate shortest vector problem GapSVPγ and the approximate shortest independent vectors problems SIVPγ (among others) on arbitrary n-dimensional lattices (i.e., in the worst case) with overwhelming probability, for some γ = β · poly(n).
Similar reductions exist for R-SIS and M-SIS but their hardness relies on the worst-case hardness of SIVP over ideal and module lattices respectively.[2][6] R-SIS as defined above is broken for cyclic lattices, i.e. , but there are refined versions for cyclic lattices with worst-case to average-case reductions.[3][4][5]
Constructions based on SIS
This is a non-exhaustive list of constructions, whose security is or can be based on SIS (or R-SIS and M-SIS).
- One-way function[1]
- Collision-resistant hash function
- Preimage Sampleable Function[9]
- Signatures[7][9][12]
- Commitments[13][14]
- Vector and Functional Commitments[15]
Related Assumptions
Further reading suggestions
- Section 4.1 in A decade of lattice cryptography[11] can help providing further intuition about SIS
- Lecture Notes by Vinod Vaikuntanathan
- Lecture 3 on Smoothing Parameter and Worst-case to Average-case Reduction for SIS
- Lecture 10 on Ideal Lattices and Ring Learning with Errors
References
- ↑ 1.0 1.1 1.2 Ajtai, Miklós. Generating hard instances of lattice problems. Proceedings of the twenty-eighth annual ACM symposium on Theory of computing. 1996.
- ↑ 2.0 2.1 Lyubashevsky, Vadim, Chris Peikert, and Oded Regev. On ideal lattices and learning with errors over rings. Annual international conference on the theory and applications of cryptographic techniques. Berlin, Heidelberg: Springer Berlin Heidelberg, 2010.
- ↑ 3.0 3.1 Micciancio, Daniele. Generalized compact knapsacks, cyclic lattices, and efficient one-way functions from worst-case complexity assumptions. The 43rd Annual IEEE Symposium on Foundations of Computer Science, 2002. Proceedings.. IEEE, 2002.
- ↑ 4.0 4.1 Peikert, Chris, and Alon Rosen. Efficient collision-resistant hashing from worst-case assumptions on cyclic lattices. Theory of Cryptography Conference. Berlin, Heidelberg: Springer Berlin Heidelberg, 2006.
- ↑ 5.0 5.1 Lyubashevsky, Vadim, and Daniele Micciancio. Generalized compact knapsacks are collision resistant. International Colloquium on Automata, Languages, and Programming. Berlin, Heidelberg: Springer Berlin Heidelberg, 2006.
- ↑ 6.0 6.1 Langlois, Adeline, and Damien Stehlé. Worst-case to average-case reductions for module lattices. Designs, Codes and Cryptography 75.3 (2015): 565-599.
- ↑ 7.0 7.1 7.2 Lyubashevsky, Vadim. Lattice signatures without trapdoors. Annual International Conference on the Theory and Applications of Cryptographic Techniques. Berlin, Heidelberg: Springer Berlin Heidelberg, 2012.
- ↑ Micciancio, Daniele, and Oded Regev. Worst-case to average-case reductions based on Gaussian measures. SIAM journal on computing 37.1 (2007): 267-302.
- ↑ 9.0 9.1 9.2 Gentry, Craig, Chris Peikert, and Vinod Vaikuntanathan. Trapdoors for hard lattices and new cryptographic constructions. Proceedings of the fortieth annual ACM symposium on Theory of computing. 2008.
- ↑ Micciancio, Daniele, and Chris Peikert. Hardness of SIS and LWE with small parameters. Annual cryptology conference. Berlin, Heidelberg: Springer Berlin Heidelberg, 2013.
- ↑ 11.0 11.1 Peikert, Chris. A decade of lattice cryptography. Foundations and trends® in theoretical computer science 10.4 (2016): 283-424.
- ↑ Boyen, Xavier. Lattice mixing and vanishing trapdoors: A framework for fully secure short signatures and more. International workshop on public key cryptography. Berlin, Heidelberg: Springer Berlin Heidelberg, 2010.
- ↑ Baum, C., Damgård, I., Lyubashevsky, V., Oechsner, S. and Peikert, C. More efficient commitments from structured lattice assumptions. International conference on security and cryptography for networks. Cham: Springer International Publishing, 2018.
- ↑ Lyubashevsky, Vadim, Ngoc Khanh Nguyen, and Maxime Plançon. Lattice-based zero-knowledge proofs and applications: shorter, simpler, and more general. Annual International Cryptology Conference. Cham: Springer Nature Switzerland, 2022.
- ↑ Peikert, Chris, Zachary Pepin, and Chad Sharp. Vector and functional commitments from lattices. Theory of Cryptography Conference. Cham: Springer International Publishing, 2021.