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Adaptive Estimation in Multivariate Response Regression with Hidden Variables

Abstract

This paper studies the estimation of the coefficient matrix \Ttheta\Ttheta in multivariate regression with hidden variables, Y=(\Ttheta)TX+(B)TZ+EY = (\Ttheta)^TX + (B^*)^TZ + E, where YY is a mm-dimensional response vector, XX is a pp-dimensional vector of observable features, ZZ represents a KK-dimensional vector of unobserved hidden variables, possibly correlated with XX, and EE is an independent error. The number of hidden variables KK is unknown and both mm and pp are allowed but not required to grow with the sample size nn. Since only YY and XX are observable, we provide necessary conditions for the identifiability of \Ttheta\Ttheta. The same set of conditions are shown to be sufficient when the error EE is homoscedastic. Our identifiability proof is constructive and leads to a novel and computationally efficient estimation algorithm, called HIVE. The first step of the algorithm is to estimate the best linear prediction of YY given XX in which the unknown coefficient matrix exhibits an additive decomposition of \Ttheta\Ttheta and a dense matrix originated from the correlation between XX and the hidden variable ZZ. Under the row sparsity assumption on \Ttheta\Ttheta, we propose to minimize a penalized least squares loss by regularizing \Ttheta\Ttheta via a group-lasso penalty and regularizing the dense matrix via a multivariate ridge penalty. Non-asymptotic deviation bounds of the in-sample prediction error are established. Our second step is to estimate the row space of BB^* by leveraging the covariance structure of the residual vector from the first step. In the last step, we remove the effect of hidden variable by projecting YY onto the complement of the estimated row space of BB^*. Non-asymptotic error bounds of our final estimator are established. The model identifiability, parameter estimation and statistical guarantees are further extended to the setting with heteroscedastic errors.

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