Smoothing Splines


Download Smoothing Splines PDF/ePub or read online books in Mobi eBooks. Click Download or Read Online button to get Smoothing Splines book now. This website allows unlimited access to, at the time of writing, more than 1.5 million titles, including hundreds of thousands of titles in various foreign languages.

Download

Smoothing Splines


Smoothing Splines

Author: Yuedong Wang

language: en

Publisher: CRC Press

Release Date: 2011-06-22


DOWNLOAD





A general class of powerful and flexible modeling techniques, spline smoothing has attracted a great deal of research attention in recent years and has been widely used in many application areas, from medicine to economics. Smoothing Splines: Methods and Applications covers basic smoothing spline models, including polynomial, periodic, spherical, t

Curve and Surface Fitting with Splines


Curve and Surface Fitting with Splines

Author: Paul Dierckx

language: en

Publisher: Oxford University Press

Release Date: 1995


DOWNLOAD





Describes the algorithms and mathematical fundamentals of a widely-used FORTRAN package for curve and surface fitting with splines.

Smoothing Spline ANOVA Models


Smoothing Spline ANOVA Models

Author: Chong Gu

language: en

Publisher: Springer Science & Business Media

Release Date: 2013-03-09


DOWNLOAD





Nonparametric function estimation with stochastic data, otherwise known as smoothing, has been studied by several generations of statisticians. Assisted by the recent availability of ample desktop and laptop computing power, smoothing methods are now finding their ways into everyday data analysis by practitioners. While scores of methods have proved successful for univariate smoothing, ones practical in multivariate settings number far less. Smoothing spline ANOVA models are a versatile family of smoothing methods derived through roughness penalties that are suitable for both univariate and multivariate problems. In this book, the author presents a comprehensive treatment of penalty smoothing under a unified framework. Methods are developed for (i) regression with Gaussian and non-Gaussian responses as well as with censored life time data; (ii) density and conditional density estimation under a variety of sampling schemes; and (iii) hazard rate estimation with censored life time data and covariates. The unifying themes are the general penalized likelihood method and the construction of multivariate models with built-in ANOVA decompositions. Extensive discussions are devoted to model construction, smoothing parameter selection, computation, and asymptotic convergence. Most of the computational and data analytical tools discussed in the book are implemented in R, an open-source clone of the popular S/S- PLUS language. Code for regression has been distributed in the R package gss freely available through the Internet on CRAN, the Comprehensive R Archive Network. The use of gss facilities is illustrated in the book through simulated and real data examples.