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Performance bounds for parameter estimates of high-dimensional linear models with correlated errors

机译:具有相关误差的高维线性模型参数估计的性能界限

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This paper develops a systematic theory for high-dimensional linear models with dependent errors and/or dependent covariates. To study properties of estimates of the regression parameters, we adopt the framework of functional dependence measures ([43]). For the covariates two schemes are addressed: the random design and the deterministic design. For the former we apply the constrained $ell_{1}$ minimization approach, while for the latter the Lasso estimation procedure is used. We provide a detailed characterization on how the error rates of the estimates depend on the moment conditions that control the tail behaviors, the dependencies of the underlying processes that generate the errors and the covariates, the dimension and the sample size. Our theory substantially extends earlier ones by allowing dependent and/or heavy-tailed errors and the covariates. As our main tools, we derive exponential tail probability inequalities for dependent sub-Gaussian errors and Nagaev-type inequalities for dependent non-sub-Gaussian errors that arise from linear or non-linear processes.
机译:本文开发了具有相关误差和/或相关协变量的高维线性模型的系统理论。为了研究回归参数估计值的性质,我们采用功能依赖度量的框架([43])。对于协变量,解决了两种方案:随机设计和确定性设计。对于前者,我们应用约束的 ell_ {1} $最小化方法,而对于后者,则使用套索估计程序。我们提供了有关估计的错误率如何取决于控制尾部行为的矩条件,产生错误的基本过程的依赖性以及协变量,维度和样本大小的详细表征。我们的理论通过允许相依和/或重尾误差和协变量,大大扩展了早期的理论。作为我们的主要工具,我们推导了因线性或非线性过程引起的相关次高斯误差的指数尾部概率不等式和因相关非次高斯误差的Nagaev型不等式。

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