资源论文RIDGE REGRESSION :S TRUCTURE ,C ROSS -VALIDATION ,AND SKETCHING

RIDGE REGRESSION :S TRUCTURE ,C ROSS -VALIDATION ,AND SKETCHING

2020-01-02 | |  59 |   39 |   0

Abstract

We study the following three fundamental problems about ridge regression: (1) what is the structure of the estimator? (2) how to correctly use cross-validation to choose the regularization parameter? and (3) how to accelerate computation without losing too much accuracy? We consider the three problems in a unified large-data linear model. We give a precise representation of ridge regression as a covariance matrix-dependent linear combination of the true parameter and the noise. We study the bias of K-fold cross-validation for choosing the regularization parameter, and propose a simple bias-correction. We analyze the accuracy of primal and dual sketching for ridge regression, showing they are surprisingly accurate. Our results are illustrated by simulations and by analyzing empirical data.

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