论文标题
通过擦除射击设计的分配硬度针对预处理拉索
Distributional Hardness Against Preconditioned Lasso via Erasure-Robust Designs
论文作者
论文摘要
稀疏的线性回归具有不良条件的高斯随机设计被普遍认为具有统计/计算差距,但令人惊讶的是,这种信念的正式证据很少,即使是以限制性类别的算法类别的示例形式。最近的工作表明,对于某些协方差矩阵,广泛的预处理套索程序证明无法成功获得具有均匀数量样品的稀疏信号。但是,该下限仅表明,对于每个预处理,至少存在一个信号,表明它无法成功恢复。这留下了这样的可能性,例如,尝试多个不同的预处理解决了每个稀疏线性回归问题。 在这项工作中,我们证明了一个更强大的下限,可以克服这个问题。对于适当的协方差矩阵,我们构建了一个单个信号分布,在该信号分布上,任何不可倒变的套索程序都以高概率失败,除非它收到线性数字的样本。 令人惊讶的是,我们下界的核心是压缩感应的新积极结果。我们表明,标准的稀疏随机设计具有很高的概率强度对对抗测量的擦除,从某种意义上说,如果删除了$ b $的测量,那么信号的坐标除$ o(b)$外,所有除$ o(b)$外,仍然可以在理论上可识别。据我们所知,这是第一次在压缩感应中研究了擦除下任意稀疏信号的部分可恢复性。
Sparse linear regression with ill-conditioned Gaussian random designs is widely believed to exhibit a statistical/computational gap, but there is surprisingly little formal evidence for this belief, even in the form of examples that are hard for restricted classes of algorithms. Recent work has shown that, for certain covariance matrices, the broad class of Preconditioned Lasso programs provably cannot succeed on polylogarithmically sparse signals with a sublinear number of samples. However, this lower bound only shows that for every preconditioner, there exists at least one signal that it fails to recover successfully. This leaves open the possibility that, for example, trying multiple different preconditioners solves every sparse linear regression problem. In this work, we prove a stronger lower bound that overcomes this issue. For an appropriate covariance matrix, we construct a single signal distribution on which any invertibly-preconditioned Lasso program fails with high probability, unless it receives a linear number of samples. Surprisingly, at the heart of our lower bound is a new positive result in compressed sensing. We show that standard sparse random designs are with high probability robust to adversarial measurement erasures, in the sense that if $b$ measurements are erased, then all but $O(b)$ of the coordinates of the signal are still information-theoretically identifiable. To our knowledge, this is the first time that partial recoverability of arbitrary sparse signals under erasures has been studied in compressed sensing.