Kernel Smoothing

Regular price €223.20
A01=M.C. Jones
A01=M.P. Wand
advanced regression methods
asymptot
Author_M.C. Jones
Author_M.P. Wand
bandwidth
Bandwidth selection
Bandwidth Selectors
Boundary Kernel
Category=PBT
Da Ta
Data
data analysis techniques
density
density estimation for scientific research
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
estimation
estimator
Fixed Design Case
Fourth Order Kernel
Higher Order Kernels
ion
ivariate
Kernel Density Estimation
Kernel Density Estimator
Kernel Estimator
Kernel regression
Kernel Smoothing
Leading Bias Term
Length Biased Data
Local Linear
Local Linear Kernel Estimate
Local Linear Kernel Estimator
matr
mult
Multivariate Adaptive Regression Splines
Multivariate kernel density estimation
Multivariate Kernel Density Estimator
Nadaraya Watson Estimator
nonparametric statistics
notat
Pilot Bandwidth
probability distributions
Selected extra topics
Sliced Inverse Regression
smoothing algorithms
Spectral Density Est Imation
Standard Normal Kernel
statistical modeling
Univariate kernel density estimation

Product details

  • ISBN 9780412552700
  • Weight: 460g
  • Dimensions: 156 x 234mm
  • Publication Date: 01 Dec 1994
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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Kernel smoothing refers to a general methodology for recovery of underlying structure in data sets.The basic principle is that local averaging or smoothing is performed with respect to a kernel function.

This book provides uninitiated readers with a feeling for the principles, applications, and analysis of kernel smoothers. This is facilitated by the authors' focus on the simplest settings, namely density estimation and nonparametric regression. They pay particular attention to the problem of choosing the smoothing parameter of a kernel smoother, and also treat the multivariate case in detail.

Kernel Smoothing is self-contained and assumes only a basic knowledge of statistics, calculus, and matrix algebra. It is an invaluable introduction to the main ideas of kernel estimation for students and researchers from other discipline and provides a comprehensive reference for those familiar with the topic.

More information on the book, and the accompanying R package can be found here.