lmrda: LMR-DA models

View source: R/lmrda.R

lmrdaR Documentation

LMR-DA models

Description

Discrimination (DA) based on linear regression (LMR).

The training variable y (univariate class membership) is transformed to a dummy table containing nclas columns, where nclas is the number of classes present in y. Each column is a dummy variable (0/1). Then, a linear regression model (LMR) is run on the X-data and the dummy table, returning predictions of the dummy variables. For a given observation, the final prediction is the class corresponding to the dummy variable for which the prediction is the highest.

Usage


lmrda(X, y, weights = NULL)

## S3 method for class 'Lmrda'
predict(object, X, ...) 

Arguments

X

For the main functions: Training X-data (n, p). — For auxiliary functions: New X-data (m, p) to consider.

y

Training class membership (n). Note: If y is a factor, it is replaced by a character vector.

weights

Weights (n) to apply to the training observations for the PLS2. Internally, weights are "normalized" to sum to 1. Default to NULL (weights are set to 1 / n).

object

A fitted model, output of a call to the main functions.

...

Optional arguments. Not used.

Value

See the examples.

Examples


n <- 50 ; p <- 8
Xtrain <- matrix(rnorm(n * p), ncol = p)
ytrain <- sample(c(1, 4, 10), size = n, replace = TRUE)
#ytrain <- sample(c("a", "10", "d"), size = n, replace = TRUE)
m <- 5
Xtest <- Xtrain[1:m, ] ; ytest <- ytrain[1:m]

fm <- lmrda(Xtrain, ytrain)
names(fm)
predict(fm, Xtest)

coef(fm$fm)

pred <- predict(fm, Xtest)$pred
err(pred, ytest)


mlesnoff/rchemo documentation built on April 15, 2023, 1:25 p.m.