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Sparse Covariance Estimation from Quadratic Measurements: A Precise Analysis

机译:二次测量的稀疏协方差估计:精确分析

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We study the problem of estimating a high-dimensional sparse covariance matrix, Σ0, from a finite number of quadratic measurements, i.e., measurements ${ext{a}}_i^T{Sigma _0}{{ext{a}}_i}$ which are quadratic forms in the measurement vectors ai resulting from the covariance matrix, Σ0. Such a problem arises in applications where we can only make energy measurements of the underlying random variables. We study a simple LASSO-like convex recovery algorithm which involves a squared 2-norm (to match the covariance estimate to the measurements), plus a regularization term (that penalizes the ℓ1−norm of the non-diagonal entries of Σ0 to enforce sparsity). When the measurement vectors are i.i.d. Gaussian, we obtain the precise error performance of the algorithm (accurately determining the estimation error in any metric, e.g., 2-norm, operator norm, etc.) as a function of the number of measurements and the underlying distribution of Σ0. In particular, in the noiseless case we determine the necessary and sufficient number of measurements required to perfectly recover Σ0 as a function of its sparsity. Our results rely on a novel comparison lemma which relates a convex optimization problem with "quadratic Gaussian" measurements to one which has i.i.d. Gaussian measurements.
机译:我们研究估计高维稀疏协方差矩阵Σ的问题 0 ,来自有限数量的二次测量,即测量向量a中的二次形式的测量$ {\ text {a}} _ i ^ T {\ Sigma _0} {{\ text {a}} _ i} $ i 由协方差矩阵Σ得出 0 。在只能对基本随机变量进行能量测量的应用中会出现这样的问题。我们研究了一种简单的类似LASSO的凸恢复算法,该算法涉及平方2范数(以将协方差估计与测量值相匹配),再加上正则化项(对ℓ进行惩罚) 1 ∑的非对角项的−范数 0 实施稀疏性)。当测量向量为i.d.高斯,我们获得了算法的精确误差性能(准确确定了任何度量(例如2范数,算子范数等)中的估计误差)作为测量次数和Σ的基础分布的函数 0 。尤其是,在无噪声的情况下,我们确定了完全恢复Σ所需的必要和足够数量的测量 0 作为其稀疏性的函数。我们的结果依赖于一种新颖的比较引理,该引理将具有“二次高斯”度量的凸优化问题与具有i.i.d的凸引理优化问题相关联。高斯测量。

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