Revision f44fcd7700739f188da1f66e07b6b371d5de0131 authored by Alex Boulangé on 08 November 2018, 07:50:04 UTC, committed by cran-robot on 08 November 2018, 07:50:04 UTC
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automl_train.Rd
\name{automl_train}
\alias{automl_train}
\title{automl_train}
\description{
The multi deep neural network automatic train function (several deep neural networks are trained with automatic hyperparameters tuning, best model is kept)\cr
This function launches the \link{automl_train_manual} function for each particle at each converging step
}
\usage{
automl_train(Xref, Yref, autopar = list(), hpar = list())
}
\arguments{
\item{Xref}{ inputs matrix or data.frame (containing numerical values only)
}

\item{Yref}{ target matrix or data.frame (containing numerical values only)
}

\item{autopar}{ list of parameters for hyperparameters optimization, see \link{autopar} section\cr
Not mandatory (the list is preset and all arguments are initialized with default value) but it is advisable to adjust some important arguments for performance reasons (including processing time)
}

\item{hpar}{ list of parameters and hyperparameters for Deep Neural Network, see \link{hpar} section\cr
Not mandatory (the list is preset and all arguments are initialized with default value) but it is advisable to adjust some important arguments for performance reasons (including processing time)
}
}

\examples{
\dontrun{
##REGRESSION (predict Sepal.Length given other Iris parameters)
data(iris)
xmat <- cbind(iris[,2:4], as.numeric(iris$Species))
ymat <- iris[,1]
amlmodel <- automl_train(Xref = xmat, Yref = ymat)
}
##CLASSIFICATION (predict Species given other Iris parameters)
data(iris)
xmat = iris[,1:4]
lab2pred <- levels(iris$Species)
lghlab <- length(lab2pred)
iris$Species <- as.numeric(iris$Species)
ymat <- matrix(seq(from = 1, to = lghlab, by = 1), nrow(xmat), lghlab, byrow = TRUE)
ymat <- (ymat == as.numeric(iris$Species)) + 0
#with gradient descent and random hyperparameters sets
amlmodel <- automl_train(Xref = xmat, Yref = ymat,
                          autopar = list(numiterations = 1, psopartpopsize = 1, seed = 11),
                          hpar = list(numiterations = 10))
}
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