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Compositional (version 5.0)

Ridge regression with the alpha-transformation plot: Ridge regression plot

Description

A plot of the regularised regression coefficients is shown.

Usage

alfaridge.plot(y, x, a, lambda = seq(0, 5, by = 0.1) )

Arguments

y

A numeric vector containing the values of the target variable. If the values are proportions or percentages, i.e. strictly within 0 and 1 they are mapped into R using the logit transformation. In any case, they must be continuous only.

x

A numeric matrix containing the continuous variables.

a

The value of the \(\alpha\)-transformation. It has to be between -1 and 1. If there are zero values in the data, you must use a strictly positive value.

lambda

A grid of values of the regularisation parameter \(\lambda\).

Value

A plot with the values of the coefficients as a function of \(\lambda\).

Details

For every value of \(\lambda\) the coefficients are obtained. They are plotted versus the \(\lambda\) values.

References

Hoerl A.E. and R.W. Kennard (1970). Ridge regression: Biased estimation for nonorthogonal problems. Technometrics, 12(1): 55-67.

Brown P. J. (1994). Measurement, Regression and Calibration. Oxford Science Publications.

Tsagris M.T., Preston S. and Wood A.T.A. (2011). A data-based power transformation for compositional data. In Proceedings of the 4th Compositional Data Analysis Workshop, Girona, Spain. https://arxiv.org/pdf/1106.1451.pdf

See Also

ridge.plot, alfa.ridge

Examples

Run this code
# NOT RUN {
library(MASS)
y <- as.vector(fgl[, 1])
x <- as.matrix(fgl[, 2:9])
x <- x / rowSums(x)
alfaridge.plot(y, x, a = 0.5, lambda = seq(0, 5, by = 0.1) )
# }

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