4.2 Article

Sparse calibration based on adaptive lasso penalty for computer models

出版社

TAYLOR & FRANCIS INC
DOI: 10.1080/03610918.2022.2155311

关键词

Computer experiments; Heavy-tailed error; Outliers; Robustness; Sparse estimator

资金

  1. Science Challenge Project
  2. [TZ2018001]

向作者/读者索取更多资源

This article proposes a sparse estimator of the calibration parameters and its robust version based on adaptive lasso penalty, which adapts to the sample size of the physical experiments and the dimension of the calibration parameters. The proposed robust estimator efficiently handles heavy-tailed error and outliers, and the nonasymptotic properties of the estimators are investigated using concentration inequalities.
Computer model calibration is a method to identify the unknown parameters of computer models, which is attaining more and more attention now. Most of the existing articles develop the calibration procedure under the assumption that the sample size of the physical experiments is larger than the dimension of the calibration parameters, which would not be satisfied in practice. In this article, we propose a sparse estimator of the calibration parameters and its robust version based on adaptive lasso penalty with adapting to the sample size of the physical experiments and the dimension of the calibration parameters, and the proposed robust estimator can deal with the heavy-tailed error and outliers efficiently. Subsequently, we investigate the nonasymptotic properties of the proposed estimators and obtain an upper bound of l(2) error of the proposed estimators by the concentration inequalities. We conduct some numerical simulations and an application to composite fuselage simulation, which verify that the proposed estimators enjoy nice performance.

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