#' @title Relative Mean Absolute Error (RMAE)
#' @name RMAE
#' @description It estimates the RMAE for a continuous predicted-observed dataset.
#' @param data (Optional) argument to call an existing data frame containing the data.
#' @param obs Vector with observed values (numeric).
#' @param pred Vector with predicted values (numeric).
#' @param tidy Logical operator (TRUE/FALSE) to decide the type of return. TRUE
#' returns a data.frame, FALSE returns a list; Default : FALSE.
#' @param na.rm Logic argument to remove rows with missing values
#' (NA). Default is na.rm = TRUE.
#' @return an object of class `numeric` within a `list` (if tidy = FALSE) or within a
#' `data frame` (if tidy = TRUE).
#' @details The RMAE normalizes the Mean Absolute Error (MAE) by the mean of observations.
#' The closer to zero the lower the prediction error.
#' For the formula and more details, see [online-documentation](https://adriancorrendo.github.io/metrica/articles/available_metrics_regression.html)
#' @examples
#' \donttest{
#' set.seed(1)
#' X <- rnorm(n = 100, mean = 0, sd = 10)
#' Y <- X + rnorm(n=100, mean = 0, sd = 3)
#' RMAE(obs = X, pred = Y)
#' }
#' @rdname RMAE
#' @importFrom rlang eval_tidy quo
#' @export
RMAE <- function(data=NULL,
obs,
pred,
tidy = FALSE,
na.rm = TRUE){
MAE <- sum(abs({{obs}}-{{pred}}))/length({{obs}})
RMAE <- rlang::eval_tidy(
data=data,
rlang::quo(
MAE / mean({{obs}})
)
)
if (tidy==TRUE){ return(as.data.frame(RMAE)) }
if (tidy==FALSE){ return(list("RMAE" = RMAE)) }
}
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.