adlift (version 1.3-3)

AdaptPredmp: AdaptPredmp

Description

This function performs the prediction lifting step over intercept and regression order, for multiple point data.

Usage

AdaptPredmp(pointsin, X, coefflist, coeff, nbrs, newnbrs, remove, 
intercept, neighbours, mpdet, g)

Arguments

pointsin

The indices of gridpoints still to be removed.

X

the vector of grid values.

coeff

the vector of detail and scaling coefficients at that step of the transform.

coefflist

the list of detail and multiple scaling coefficients at that step of the transform.

nbrs

the indices (into X) of the neighbours to be used in the prediction step.

newnbrs

as nbrs, but repeated according to the multiple point structure of the grid.

remove

the index (into X) of the point to be removed.

intercept

Boolean value for whether or not an intercept is used in the prediction step of the transform.

neighbours

the number of neighbours in the computation of the predicted value. This is not actually used specifically in AdaptPredmp, since this is known already from nbrs.

mpdet

how the mutiple point detail coefficients are computed. Possible values are "ave", in which the multiple detail coefficients produced when performing the multiple predictions are averaged, or "min", where the overall minimum detail coefficient is taken.

g

the group structure of the multiple point data.

Value

results.This is a ten item list giving the regression information chosen from the detail coefficient minimisation:

Xneigh

matrix of X values corresponding to the neighbours of the removed point. The matrix consists of columns \(1,X[newnbrs],X[newnbrs]^2,...\) depending on the order of the prediction used and whether or not an intercept is used. Refer to any reference on linear regression for more details.

mm

the matrix from which the prediction is made. In terms of Xneigh, it is \((Xneigh^T Xneigh)^{-1} Xneigh^T\) .

bhat

The regression coefficients used in prediction.

weights

the prediction weights for the neighbours.

pred

the predicted function value obtained from the regression.

coeff

vector of (modified) detail and scaling coefficients to be used in the update step of the transform.

int

if TRUE, an intercept was used in the regression.

scheme

a character vector denoting the type of regression used in the prediction ("Linear", "Quad" or "Cubic").

details

a vector of the detail coefficients from which AdaptPredmp selects the minimum value. There are six entries. The first three entries represent the detail coefficients from regression with no intercept in increasing order of prediction. The second three details are values for regression with intercept.

minindex

the index into details (results[[9]]) which produces the minimum value.

Details

The procedure performs adaptive regression (through AdaptPred) over the three types of regression and also over intercept. The combination (type of regression, intercept) is chosen which gives the smallest detail coefficient (in absolute value).

See Also

AdaptNeighmp, CubicPredmp, fwtnpmp, LinearPredmp, QuadPredmp

Examples

Run this code
# NOT RUN {
#read in data with multiple values...

data(motorcycledata)
times<-motorcycledata$time
accel<-motorcycledata$accel
short<-adjustx(times,accel,"mean")
X<-short$sepx
coeff<-short$sepx
g<-short$g

coefflist<-list()
for (i in 1:length(g)){
coefflist[[i]]<-accel[g[[i]]]
}

#work out neighbours of point to be removed (31)

out<-getnbrs(X,31,order(X),2,TRUE)
nbrs<-out$n

nbrs

newnbrs<-NULL
for (i in 1:length(nbrs)){
newnbrs<-c(newnbrs,rep(nbrs[i],times=length(g[[nbrs[i]]])))
}

#work out repeated neighbours using g...
newnbrs

AdaptPredmp(order(X),X,coefflist,coeff,nbrs,newnbrs,31,TRUE,2,"ave",g)

# }

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