Literature DB >> 34294943

An asymptotic and empirical smoothing parameters selection method for smoothing spline ANOVA models in large samples.

Xiaoxiao Sun1, Wenxuan Zhong2, Ping Ma2.   

Abstract

Large samples are generated routinely from various sources. Classic statistical models, such as smoothing spline ANOVA models, are not well equipped to analyse such large samples because of high computational costs. In particular, the daunting computational cost of selecting smoothing parameters renders smoothing spline ANOVA models impractical. In this article, we develop an asympirical, i.e., asymptotic and empirical, smoothing parameters selection method for smoothing spline ANOVA models in large samples. The idea of our approach is to use asymptotic analysis to show that the optimal smoothing parameter is a polynomial function of the sample size and an unknown constant. The unknown constant is then estimated through empirical subsample extrapolation. The proposed method significantly reduces the computational burden of selecting smoothing parameters in high-dimensional and large samples. We show that smoothing parameters chosen by the proposed method tend to the optimal smoothing parameters that minimize a specific risk function. In addition, the estimator based on the proposed smoothing parameters achieves the optimal convergence rate. Extensive simulation studies demonstrate the numerical advantage of the proposed method over competing methods in terms of relative efficacy and running time. In an application to molecular dynamics data containing nearly one million observations, the proposed method has the best prediction performance.

Keywords:  Asymptotic analysis; Generalized cross-validation; Smoothing parameters selection; Smoothing spline ANOVA model; Subsample

Year:  2020        PMID: 34294943      PMCID: PMC8294473          DOI: 10.1093/biomet/asaa047

Source DB:  PubMed          Journal:  Biometrika        ISSN: 0006-3444            Impact factor:   2.445


  5 in total

1.  Low-rank scale-invariant tensor product smooths for generalized additive mixed models.

Authors:  Simon N Wood
Journal:  Biometrics       Date:  2006-12       Impact factor: 2.571

2.  A generalized Fellner-Schall method for smoothing parameter optimization with application to Tweedie location, scale and shape models.

Authors:  Simon N Wood; Matteo Fasiolo
Journal:  Biometrics       Date:  2017-02-13       Impact factor: 2.571

3.  Quantum-chemical insights from deep tensor neural networks.

Authors:  Kristof T Schütt; Farhad Arbabzadah; Stefan Chmiela; Klaus R Müller; Alexandre Tkatchenko
Journal:  Nat Commun       Date:  2017-01-09       Impact factor: 14.919

4.  Machine learning of accurate energy-conserving molecular force fields.

Authors:  Stefan Chmiela; Alexandre Tkatchenko; Huziel E Sauceda; Igor Poltavsky; Kristof T Schütt; Klaus-Robert Müller
Journal:  Sci Adv       Date:  2017-05-05       Impact factor: 14.136

  5 in total

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