Learn R Programming

delt (version 0.8.2)

densplit: Calculation of an overfitting histogram

Description

The function returns an overfitting histogram when a data matrix is given as an input. The output is an evaluation tree which is grown with greedy growing. The evaluation tree defines a partition of the sample space. The evaluation tree may be pruned to get a density estimate.

Usage

densplit(dendat, minobs=NULL, leaf=0, method="loglik", splitscan=0, seedf=1, suppo=NULL)

Arguments

dendat
n*d data matrix
minobs
non-negative integer; splitting of a bin will be continued if the bin containes "minobs" or more observations
leaf
internal (maximal number of leafs in the evaluation tree)
method
"loglik" or "projec"; the contrast function
splitscan
internal (random selection of splits)
seedf
internal
suppo
2*d vector of real numbers; the rectangle to be splitted; the rectangle has to contain the data

Value

Returns an evaluation tree as a list of vectors.
direc
integer in 1,...,d; variable which is splitted
split
real number; splitting point
mean
nonnegative number; value of the histogram on the rectangle corresponding to the node
nelem
nonnegative integer; number of observations in the rectangle corresponding to the node
ssr
real number; value of the likelihood criterion
volume
non-negative number; volume of the rectangle corresponding to the node
left
non-negative integer; link to the left child, 0 if terminal node
right
non-negative integer; link to the right child, 0 if terminal node
low
the lower vertice of the rectangles
upp
the upper vertice of the rectangles
N
the number of grid points at each direction
support
the support of the histogram

See Also

prune, eval.pick

Examples

Run this code
library(denpro)

dendat<-sim.data(n=200,seed=5,type="mulmodII")
et<-densplit(dendat)

treeseq<-prune(et)
treeseq$leafs
len<-length(treeseq$leafs)

leaf<-treeseq$leafs[len-10]
leaf
etsub<-eval.pick(treeseq,leaf=leaf)

dp<-draw.pcf(etsub)
persp(dp$x,dp$y,dp$z,phi=25,theta=-120)

Run the code above in your browser using DataLab