Learning With Errors and Extrapolated Dihedral Cosets
October 23, 2017 Β· Declared Dead Β· π International Conference on Theory and Practice of Public Key Cryptography
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Authors
Zvika Brakerski, Elena Kirshanova, Damien StehlΓ©, Weiqiang Wen
arXiv ID
1710.08223
Category
cs.CR: Cryptography & Security
Cross-listed
cs.CC
Citations
22
Venue
International Conference on Theory and Practice of Public Key Cryptography
Last Checked
3 months ago
Abstract
The hardness of the learning with errors (LWE) problem is one of the most fruitful resources of modern cryptography. In particular, it is one of the most prominent candidates for secure post-quantum cryptography. Understanding its quantum complexity is therefore an important goal. We show that under quantum polynomial time reductions, LWE is equivalent to a relaxed version of the dihedral coset problem (DCP), which we call extrapolated DCP (eDCP). The extent of extrapolation varies with the LWE noise rate. By considering different extents of extrapolation, our result generalizes Regev's famous proof that if DCP is in BQP (quantum poly-time) then so is LWE (FOCS'02). We also discuss a connection between eDCP and Childs and Van Dam's algorithm for generalized hidden shift problems (SODA'07). Our result implies that a BQP solution for LWE might not require the full power of solving DCP, but rather only a solution for its relaxed version, eDCP, which could be easier.
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