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Errors-in-variables models with dependent measurements

15 November 2016
M. Rudelson
Shuheng Zhou
ArXiv (abs)PDFHTML
Abstract

Suppose that we observe y∈Rny \in \mathbb{R}^ny∈Rn and X∈Rn×mX \in \mathbb{R}^{n \times m}X∈Rn×m in the following errors-in-variables model: \begin{eqnarray*} y & = & X_0 \beta^* + \epsilon X & = & X_0 + W \end{eqnarray*} where X0X_0X0​ is a n×mn \times mn×m design matrix with independent subgaussian row vectors, ϵ∈Rn\epsilon \in \R^nϵ∈Rn is a noise vector and WWW is a mean zero n×mn \times mn×m random noise matrix with independent subgaussian column vectors, independent of X0X_0X0​ and ϵ\epsilonϵ. This model is significantly different from those analyzed in the literature in the sense that we allow the measurement error for each covariate to be a dependent vector across its nnn observations. Such error structures appear in the science literature when modeling the trial-to-trial fluctuations in response strength shared across a set of neurons. We establish consistency in estimating β∗\beta^*β∗ and obtain the rates of convergence in the ℓq\ell_qℓq​ norm, where q=1,2q = 1, 2q=1,2 for the Lasso-type estimator, and for q∈[1,2]q \in [1, 2]q∈[1,2] for a Dantzig-type conic programming estimator. We show error bounds which approach that of the regular Lasso and the Dantzig selector in case the errors in WWW are tending to 0. We analyze the convergence rates of the gradient descent methods for solving the nonconvex programs and show that the composite gradient descent algorithm is guaranteed to converge at a geometric rate to a neighborhood of the global minimizers: the size of the neighborhood is bounded by the statistical error in the ℓ2\ell_2ℓ2​ norm. Our analysis reveals interesting connections between compuational and statistical efficiency and the concentration of measure phenomenon in random matrix theory. We provide simulation evidence illuminating the theoretical predictions.

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