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Restricted Eigenvalue from Stable Rank with Applications to Sparse Linear Regression

机译:稳定秩上的受限特征值及其在稀疏线性回归中的应用

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High-dimensional settings, where the data dimension ($d$) far exceeds the number of observations ($n$), are common in many statistical and machine learning applications. Methods based on $ell_1$-relaxation, such as Lasso, are very popular for sparse recovery in these settings. Restricted Eigenvalue (RE) condition is among the weakest, and hence the most general, condition in literature imposed on the Gram matrix that guarantees nice statistical properties for the Lasso estimator. It is hence natural to ask: what families of matrices satisfy the RE condition? Following a line of work in this area, we construct a new broad ensemble of dependent random design matrices that have an explicit RE bound. Our construction starts with a fixed (deterministic) matrix $X in mathbb{R}^{n imes d}$ satisfying a simple stable rank condition, and we show that a matrix drawn from the distribution $X Phi^op Phi$, where $Phi in mathbb{R}^{m imes d}$ is a subgaussian random matrix, with high probability, satisfies the RE condition. This construction allows incorporating a fixed matrix that has an easily {em verifiable} condition into the design process, and allows for generation of {em compressed} design matrices that have a lower storage requirement than a standard design matrix. We give two applications of this construction to sparse linear regression problems, including one to a compressed sparse regression setting where the regression algorithm only has access to a compressed representation of a fixed design matrix $X$.
机译:在许多统计和机器学习应用程序中,数据维度($ d $)远远超过观察数($ n $)的高维设置很常见。在这些设置中,基于$ ell_1 $松弛的方法(例如Lasso)在稀疏恢复中非常流行。严格的特征值(RE)条件是文献中施加在Gram矩阵上的最弱条件,因此也是最普遍的条件,可以保证Lasso估计器具有良好的统计特性。因此自然会问:哪些矩阵族满足RE条件?遵循该领域的工作思路,我们构建了具有显式RE约束的依存随机设计矩阵的新的广义集合。我们的构建从满足简单稳定秩条件的固定(确定性)矩阵$ X in mathbb {R} ^ {n timesd} $开始,我们展示了从分布$ X Phi ^ 提取的矩阵top Phi $,其中 mathbb {R} ^ {m times d} $中的$ Phi是次高斯随机矩阵,极有可能满足RE条件。这种构造允许将具有容易{ em可验证}条件的固定矩阵合并到设计过程中,并允许生成{ em压缩}设计矩阵,这些矩阵的存储需求比标准设计矩阵低。我们将此构造的两个应用程序用于稀疏线性回归问题,其中之一是压缩稀疏回归设置,其中回归算法只能访问固定设计矩阵$ X $的压缩表示形式。

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