Description Usage Arguments Value Author(s) See Also Examples
Computes the value of a multivariate kernel estimator of a partial derivative of a regression function at a one point.
1 | kernesti.der(arg, x, y, h=1, direc=1, kernel="gauss", vect=FALSE)
|
arg |
d-vector; the point where the estimate is evaluated |
x |
n*d data matrix; the matrix of the values of the explanatory variables |
y |
n vector; the values of the response variable |
h |
a positive real number; the smoothing parameter of the kernel estimate |
direc |
integer 1,...,d; indicates which partial derivative is estimated |
kernel |
a character; determines the kernel function; can only be "gauss" |
vect |
TRUE or FALSE; an internal parameter related to the method of calculation |
a real number
Jussi Klemela
1 2 3 4 5 6 7 8 9 10 11 12 13 | set.seed(1)
n<-100
d<-2
x<-8*matrix(runif(n*d),n,d)-3
C<-(2*pi)^(-d/2)
phi<-function(x){ return( C*exp(-sum(x^2)/2) ) }
D<-3; c1<-c(0,0); c2<-D*c(1,0); c3<-D*c(1/2,sqrt(3)/2)
func<-function(x){phi(x-c1)+phi(x-c2)+phi(x-c3)}
y<-matrix(0,n,1)
for (i in 1:n) y[i]<-func(x[i,])+0.01*rnorm(1)
arg<-c(0,0)
kernesti.der(arg,x,y,h=0.5)
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Loading required package: denpro
[,1]
[1,] -0.000186227
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