Quantum Oblivious LWE Sampling and Insecurity of Standard Model Lattice-Based SNARKs

The Learning With Errors () problem asks to find from an input of the form , for a vector that has small-magnitude entries. In this work, we do not focus on solving but on the task of sampling instances. As these are extremely sparse in their range, it may seem plausible that the only way to proceed is to first create and and then set . In particular, such an instance sampler knows the solution. This raises the question whether it is possible to obliviously sample , namely, without knowing the underlying . A variant of the assumption that oblivious sampling is hard has been used in a series of works constructing Succinct Non-interactive Arguments of Knowledge (SNARKs) in the standard model. As the assumption is related to , these SNARKs have been conjectured to be secure in the presence of quantum adversaries. Our main result is a quantum polynomial-time algorithm that samples well-distributed instances while provably not knowing the solution, under the assumption that is hard. Moreover, the approach works for a vast range of parametrizations, including those used in the above-mentioned SNARKs.
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