% Generated by roxygen2: do not edit by hand % Please edit documentation in R/agghoo.R \name{agghoo} \alias{agghoo} \title{agghoo} \usage{ agghoo(data, target, task = NULL, gmodel = NULL, params = NULL, loss = NULL) } \arguments{ \item{data}{Data frame or matrix containing the data in lines.} \item{target}{The target values to predict. Generally a vector, but possibly a matrix in the case of "soft classification".} \item{task}{"classification" or "regression". Default: regression if target is numerical, classification otherwise.} \item{gmodel}{A "generic model", which is a function returning a predict function (taking X as only argument) from the tuple (dataHO, targetHO, param), where 'HO' stands for 'Hold-Out', referring to cross-validation. Cross-validation is run on an array of 'param's. See params argument. Default: see R6::Model.} \item{params}{A list of parameters. Often, one list cell is just a numerical value, but in general it could be of any type. Default: see R6::Model.} \item{loss}{A function assessing the error of a prediction. Arguments are y1 and y2 (comparing a prediction to known values). loss(y1, y2) --> real number (error). Default: see R6::AgghooCV.} } \value{ An R6::AgghooCV object o. Then, call o$fit() and finally o$predict(newData) } \description{ Run the (core) agghoo procedure. Arguments specify the list of models, their parameters and the cross-validation settings, among others. } \examples{ # Regression: a_reg <- agghoo(iris[,-c(2,5)], iris[,2]) a_reg$fit() pr <- a_reg$predict(iris[,-c(2,5)] + rnorm(450, sd=0.1)) # Classification a_cla <- agghoo(iris[,-5], iris[,5]) a_cla$fit() pc <- a_cla$predict(iris[,-5] + rnorm(600, sd=0.1)) } \references{ Guillaume Maillard, Sylvain Arlot, Matthieu Lerasle. "Aggregated hold-out". Journal of Machine Learning Research 22(20):1--55, 2021. } \seealso{ Function \code{\link{compareTo}} }