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adlift (version 1.4-5)

LinearPred: LinearPred

Description

This function performs the prediction lifting step using a linear regression curve given a configuration of neighbours.

Usage

LinearPred(pointsin, X, coeff, nbrs, remove, intercept, neighbours)

Value

Xneigh

matrix of X values corresponding to the neighbours of the removed point. The matrix consists of the column X[nbrs] augmented with a column of ones if 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.

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.

nbrs

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

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 LinearPred, since this is known already from nbrs.

Author

Matt Nunes (nunesrpackages@gmail.com), Marina Knight

Details

The procedure performs linear regression using the given neighbours using an intercept if chosen. The regression coefficients (weights) are used to predict the new function value at the removed point.

See Also

CubicPred, fwtnp, QuadPred

Examples

Run this code
#
# Generate some doppler data: 500 observations.
#
tx <- runif(500)
ty<-make.signal2("doppler",x=tx)
#
# Compute the neighbours of point 173 (2 neighbours on each side)
#
out<-getnbrs(tx,173,order(tx),2,FALSE)
#
# Perform linear regression based on the neighbours (without intercept) 
#
lp<-LinearPred(order(tx),tx,ty,out$nbrs,173,FALSE,2)
#
#
lp
#
#the regression curve details

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