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An ${ell_{1},ell_{2},ell_{infty}}$-regularization approach to high-dimensional errors-in-variables models

机译:高维变量误差模型的$ { ell_ {1}, ell_ {2}, ell _ { infty} } $正则化方法

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Several new estimation methods have been recently proposed for the linear regression model with observation errors in the design. Different assumptions on the data generating process have motivated different estimators and analysis. In particular, the literature considered (1) observation errors in the design uniformly bounded by some $ar{delta}$, and (2) zero-mean independent observation errors. Under the first assumption, the rates of convergence of the proposed estimators depend explicitly on $ar{delta}$, while the second assumption has been essentially applied when an estimator for the second moment of the observational error is available. This work proposes and studies two new estimators which, compared to other procedures for regression models with errors in the design, exploit an additional $ell_{infty}$-norm regularization. The first estimator is applicable when both (1) and (2) hold but does not require an estimator for the second moment of the observational error. The second estimator is applicable under (2) and requires an estimator for the second moment of the observation error. Importantly, we impose no assumption on the accuracy of this pilot estimator, in contrast to the previously known procedures. As the recent proposals, we allow the number of covariates to be much larger than the sample size. We establish the rates of convergence of the estimators and compare them with the bounds obtained for related estimators in the literature. These comparisons show interesting insights on the interplay of the assumptions and the achievable rates of convergence.
机译:最近,针对设计中存在观察误差的线性回归模型,提出了几种新的估计方法。关于数据生成过程的不同假设促使了不同的估算器和分析。尤其是,文献考虑了(1)设计中的观测误差均匀地由某些$ bar { delta} $界定,以及(2)零均值独立观测误差。在第一个假设下,拟议估计量的收敛速度显着取决于$ bar { delta} $,而第二个假设在观测误差第二时刻的估计量可用时已基本应用。这项工作提出并研究了两个新的估计量,与设计中存在错误的回归模型的其他程序相比,它们使用了额外的$ ell _ { infty} $范数正则化。当(1)和(2)都成立但观测误差第二时刻不需要估计器时,第一估计器适用。第二个估计器适用于(2),并且需要一个估计器来观察误差的第二个时刻。重要的是,与先前已知的过程相比,我们不对该导频估计器的准确性进行任何假设。作为最近的提议,我们允许协变量的数量远大于样本量。我们建立估计量的收敛速度,并将其与文献中相关估计量的界线进行比较。这些比较显示了有关假设和可达到的收敛速度之间相互作用的有趣见解。

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