\name{automl_predict} \alias{automl_predict} \title{automl_predict} \description{ Predictions function, to apply a trained model on datas } \usage{ automl_predict(model, X, layoutputnum) } \arguments{ \item{model}{ model trained previously with \link{automl_train} or \link{automl_train_manual}} \item{X}{ inputs matrix or data.frame (containing numerical values only)} \item{layoutputnum}{ which layer number to output especially for auto encoding (default 0: no particular layer, the last one)} } \examples{ ##REGRESSION (predict Sepal.Length given other parameters) data(iris) xmat <- as.matrix(cbind(iris[,2:4], as.numeric(iris$Species))) ymat <- iris[,1] amlmodel <- automl_train_manual(Xref = xmat, Yref = ymat, hpar = list(modexec = 'trainwpso', verbose = FALSE)) res <- cbind(ymat, automl_predict(model = amlmodel, X = xmat)) colnames(res) <- c('actual', 'predict') head(res) # \dontrun{ ##CLASSIFICATION (predict Species given other Iris parameters) data(iris) xmat = iris[,1:4] lab2pred <- levels(iris$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 amlmodel <- automl_train_manual(Xref = xmat, Yref = ymat, hpar = list(modexec = 'trainwpso', verbose = FALSE)) res <- cbind(ymat, round(automl_predict(model = amlmodel, X = xmat))) colnames(res) <- c(paste('act',lab2pred, sep = '_'), paste('pred',lab2pred, sep = '_')) head(res) } }