MBE: Mean Bias Error (MBE)

View source: R/reg_MBE.R

MBER Documentation

Mean Bias Error (MBE)

Description

It estimates the MBE for a continuous predicted-observed dataset.

Usage

MBE(data = NULL, obs, pred, tidy = FALSE, na.rm = TRUE)

Arguments

data

(Optional) argument to call an existing data frame containing the data.

obs

Vector with observed values (numeric).

pred

Vector with predicted values (numeric).

tidy

Logical operator (TRUE/FALSE) to decide the type of return. TRUE returns a data.frame, FALSE returns a list; Default : FALSE.

na.rm

Logic argument to remove rows with missing values (NA). Default is na.rm = TRUE.

Details

The MBE is one of the most widely used error metrics. It presents the same units than the response variable, and it is unbounded. It can be simply estimated as the difference between the means of predictions and observations. The closer to zero the better. Negative values indicate overestimation. Positive values indicate general underestimation. The disadvantages are that is only sensitive to additional bias, so the MBE may mask a poor performance if overestimation and underestimation co-exist (a type of proportional bias). For the formula and more details, see online-documentation

Value

an object of class numeric within a list (if tidy = FALSE) or within a ⁠data frame⁠ (if tidy = TRUE).

Examples


set.seed(1)
X <- rnorm(n = 100, mean = 0, sd = 10)
Y <- X + rnorm(n=100, mean = 0, sd = 3)
MBE(obs = X, pred = Y)


metrica documentation built on June 30, 2024, 5:07 p.m.