Title of article :
On the foundations of parameter estimation for generalized partial
linear models with B-splines and continuous optimization
Author/Authors :
Pakize Taylan a، نويسنده , , Gerhard-Wilhelm Weberb، نويسنده , , Lian Liu c، نويسنده , , Fatma Yerlikaya-?zkurt b، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2010
Abstract :
Generalized linear models are widely used in statistical techniques. As an extension,
generalized partial linear models utilize semiparametric methods and augment the usual
parametric terms with a single nonparametric component of a continuous covariate.
In this paper, after a short introduction, we present our model in the generalized
additive context with a focus on the penalized maximum likelihood and the penalized
iteratively reweighted least squares (P-IRLS) problem based on B-splines, which is
attractive for nonparametric components. Then, we approach solving the P-IRLS problem
using continuous optimization techniques. They have come to constitute an important
complementary approach, alternative to the penalty methods, with flexibility for choosing
the penalty parameter adaptively. In particular, we model and treat the constrained P-IRLS
problem by using the elegant framework of conic quadratic programming. The method is
illustrated using a small numerical example.
Keywords :
maximum likelihood , Penalty methods , Conic quadratic programming , Generalized partial linear models , CMARS
Journal title :
Computers and Mathematics with Applications
Journal title :
Computers and Mathematics with Applications