Variational Bayesian Lasso for spline regression

被引:0
作者
Larissa C. Alves
Ronaldo Dias
Helio S. Migon
机构
[1] State University of Campinas: Universidade Estadual de Campinas,
来源
Computational Statistics | 2024年 / 39卷
关键词
Variational inference; Knots selection; Evidence lower bound; Mean field posterior approximation;
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摘要
This work presents a new scalable automatic Bayesian Lasso methodology with variational inference for non-parametric splines regression that can capture the non-linear relationship between a response variable and predictor variables. Note that under non-parametric point of view the regression curve is assumed to lie in a infinite dimension space. Regression splines use a finite approximation of this infinite space, representing the regression function by a linear combination of basis functions. The crucial point of the approach is determining the appropriate number of bases or equivalently number of knots, avoiding over-fitting/under-fitting. A decision-theoretic approach was devised for knot selection. Comprehensive simulation studies were conducted in challenging scenarios to compare alternative criteria for knot selection, thereby ensuring the efficacy of the proposed algorithms. Additionally, the performance of the proposed method was assessed using real-world datasets. The novel procedure demonstrated good performance in capturing the underlying data structure by selecting the appropriate number of knots/basis.
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页码:2039 / 2064
页数:25
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  • [1] Andrews DF(1974)A robust method for multiple linear regression Technometrics 16 523-531
  • [2] Berry SM(2002)Bayesian smoothing and regression splines for measurement error problems J Am Stat Assoc 97 160-169
  • [3] Carroll RJ(2017)Variational inference: a review for statisticians J. Am. Stat. Assoc. 112 859-877
  • [4] Ruppert D(1992)Explaining the Gibbs sampler Am Stat 46 167-174
  • [5] Blei DM(1998)Automatic Bayesian curve fitting J R Stat Soc B 60 363-377
  • [6] Kucukelbir A(1998)Density estimation via hybrid splines J. Stat. Comput. Simul. 60 277-294
  • [7] McAuliffe JD(1999)Sequential adaptive non parametric regression via H-splines Commun Stat Comput Simul 28 501-515
  • [8] Casella G(2002)A Bayesian approach to hybrid splines nonparametric regression J Stat Comput Simul 72 285-297
  • [9] George EI(2007)Consistent estimator for basis selection based on a proxy of the Kullback–Leibler distance J Econom 141 167-178
  • [10] Denison DGT(2019)Vblinlogit: variational Bayesian linear and logistic regression J Open Source Softw 4 1359-121