Nadaraya and Watson, both in 1964, proposed to estimate as a locally weighted average, using a kernel as a weighting function.[1][2][3] The Nadaraya–Watson estimator is:
where is a kernel with a bandwidth such that is of order at least 1, that is .
This example is based upon Canadian cross-section wage data consisting of a random sample taken from the 1971 Canadian Census Public Use Tapes for male individuals having common education (grade 13). There are 205 observations in total.[citation needed]
The figure to the right shows the estimated regression function using a second order Gaussian kernel along with asymptotic variability bounds.
Script for example
The following commands of the R programming language use the npreg() function to deliver optimal smoothing and to create the figure given above. These commands can be entered at the command prompt via cut and paste.
install.packages("np")library(np)# non parametric librarydata(cps71)attach(cps71)m<-npreg(logwage~age)plot(m,plot.errors.method="asymptotic",plot.errors.style="band",ylim=c(11,15.2))points(age,logwage,cex=.25)detach(cps71)
Related
According to David Salsburg, the algorithms used in kernel regression were independently developed and used in fuzzy systems: "Coming up with almost exactly the same computer algorithm, fuzzy systems and kernel density-based regressions appear to have been developed completely independently of one another."[5]
MATLAB: A free MATLAB toolbox with implementation of kernel regression, kernel density estimation, kernel estimation of hazard function and many others is available on these pages (this toolbox is a part of the book [6]).
^Horová, I.; Koláček, J.; Zelinka, J. (2012). Kernel Smoothing in MATLAB: Theory and Practice of Kernel Smoothing. Singapore: World Scientific Publishing. ISBN978-981-4405-48-5.