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Sparsity-Cognizant Total Least-Squares for Perturbed Compressive Sampling

机译:稀疏感知总最小二乘扰动压缩采样

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Solving linear regression problems based on the total least-squares (TLS) criterion has well-documented merits in various applications, where perturbations appear both in the data vector as well as in the regression matrix. However, existing TLS approaches do not account for sparsity possibly present in the unknown vector of regression coefficients. On the other hand, sparsity is the key attribute exploited by modern compressive sampling and variable selection approaches to linear regression, which include noise in the data, but do not account for perturbations in the regression matrix. The present paper fills this gap by formulating and solving (regularized) TLS optimization problems under sparsity constraints. Near-optimum and reduced-complexity suboptimum sparse (S-) TLS algorithms are developed to address the perturbed compressive sampling (and the related dictionary learning) challenge, when there is a mismatch between the true and adopted bases over which the unknown vector is sparse. The novel S-TLS schemes also allow for perturbations in the regression matrix of the least-absolute selection and shrinkage selection operator (Lasso), and endow TLS approaches with ability to cope with sparse, under-determined “errors-in-variables” models. Interesting generalizations can further exploit prior knowledge on the perturbations to obtain novel weighted and structured S-TLS solvers. Analysis and simulations demonstrate the practical impact of S-TLS in calibrating the mismatch effects of contemporary grid-based approaches to cognitive radio sensing, and robust direction-of-arrival estimation using antenna arrays.
机译:基于总最小二乘(TLS)准则解决线性回归问题在各种应用中都有充分记载的优点,其中扰动既出现在数据向量中,也出现在回归矩阵中。但是,现有的TLS方法无法解决未知系数回归向量中可能存在的稀疏性。另一方面,稀疏性是现代压缩采样和变量选择方法用于线性回归的关键属性,线性回归包括数据中的噪声,但不考虑回归矩阵的扰动。本文通过在稀疏约束下制定和解决(正规化)TLS优化问题来填补这一空白。当真实向量与采用未知向量稀疏的基础之间存在不匹配时,开发了接近最佳和复杂度较低的次最佳稀疏(S-)TLS算法,以应对扰动的压缩采样(以及相关的字典学习)挑战。新颖的S-TLS方案还允许在最小绝对选择和收缩选择算子(Lasso)的回归矩阵中产生扰动,并且赋予TLS方法以应对稀疏,不确定性强的“变量错误”模型的能力。有趣的概括可以进一步利用关于扰动的先验知识来获得新颖的加权和结构化S-TLS求解器。分析和仿真证明了S-TLS在校准当代基于网格的认知无线电感测方法和使用天线阵列的稳健到达方向估计的失配效应方面的实际影响。

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