Generalized log-gamma additive partial linear models with P-spline smoothing

Carlos A. Cardozo, Gilberto A. Paula, Luiz H. Vanegas

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

In this paper additive partial linear models with generalized log-gamma errors and P-spline smoothing are proposed for uncensored data. This class derived from the generalized gamma distribution contains various continuous asymmetric distributions to the right and to the left with domain on the real line and has the normal distribution as a particular case. The location parameter is modeled in a semiparametric way so that one has a generalized gamma accelerated failure time additive partial linear model. A joint iterative process is derived, that combines the penalized Fisher scoring algorithm for estimating the parametric and nonparametric regression coefficients and a quasi-Newton procedure for obtaining the scale and shape estimates. Discussions on the inferential aspects of the former estimators as well as on the derivation of the effective degrees of freedom are given. Diagnostic procedures are also proposed, such as residual analysis and sensitivity studies based on the local influence approach. Simulation studies are performed to assess the empirical distributions of the parametric and nonparametric estimators and a real data set on personal injury insurance claims made in Australia from January 1998 to June 1999 is analyzed by the methodology developed through the paper. Technical results, tables, graphs, R codes and the data set used in the application are presented as Supplementary Materials.

Original languageEnglish
Pages (from-to)1953-1978
Number of pages26
JournalStatistical Papers
Volume63
Issue number6
DOIs
StatePublished - Dec 2022
Externally publishedYes

Keywords

  • AFT models
  • Asymmetric data
  • B-splines
  • Diagnostic procedures
  • Insurance data
  • P-GAM
  • Semiparametric models

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