随机稀疏种植向量问题的SQ下界

Jingqiu Ding, Yiding Hua
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引用次数: 2

摘要

考虑在$R^n$的一个随机的$d$维子空间中种植一个$\rho$ -稀疏的Rademacher向量的设置。一个经典的问题是如何在这个子空间中给定一个随机基来恢复这个植入的向量。[ZSWB21]最近的结果表明,当$n\geq d+1$时,格基约简算法可以恢复植入向量。虽然我们并不期望该算法能够容忍逆多项式的噪声量,但令人惊讶的是,之前的研究表明,当$n\ll \rho^2 d^{2}$ [MW21]时,低次多项式无法实现恢复。一个自然的问题是,我们是否可以推导出与[MW21]中先前的低度下界相匹配的统计查询(SQ)下界。这将意味着SQ下界可以被基于格的算法超越;-预测当种植向量被反多项式的噪声量扰动时的计算硬度。在本文中,我们证明了这样一个SQ下界。特别是,我们表明,当$n\ll \rho^2 d^{2}$和$\rho\gg \frac{1}{\sqrt{d}}$时,需要超多项式数量的VSTAT查询来解决更容易的统计测试问题。我们用来推导SQ下界的最值得注意的技术是SQ下界与低次下界之间的几乎等价关系[BBH+20, MW21]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SQ Lower Bounds for Random Sparse Planted Vector Problem
Consider the setting where a $\rho$-sparse Rademacher vector is planted in a random $d$-dimensional subspace of $R^n$. A classical question is how to recover this planted vector given a random basis in this subspace. A recent result by [ZSWB21] showed that the Lattice basis reduction algorithm can recover the planted vector when $n\geq d+1$. Although the algorithm is not expected to tolerate inverse polynomial amount of noise, it is surprising because it was previously shown that recovery cannot be achieved by low degree polynomials when $n\ll \rho^2 d^{2}$ [MW21]. A natural question is whether we can derive an Statistical Query (SQ) lower bound matching the previous low degree lower bound in [MW21]. This will - imply that the SQ lower bound can be surpassed by lattice based algorithms; - predict the computational hardness when the planted vector is perturbed by inverse polynomial amount of noise. In this paper, we prove such an SQ lower bound. In particular, we show that super-polynomial number of VSTAT queries is needed to solve the easier statistical testing problem when $n\ll \rho^2 d^{2}$ and $\rho\gg \frac{1}{\sqrt{d}}$. The most notable technique we used to derive the SQ lower bound is the almost equivalence relationship between SQ lower bound and low degree lower bound [BBH+20, MW21].
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