df_mae: Mean Absolute Error (MAE) (computation function, any size)

Description Usage Arguments Value Examples

Description

This function computes the Mean Absolute Error loss (MAE) provided preds and labels, while handling multiclass problems.

Usage

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df_mae(preds, labels)

Arguments

preds

The predictions.

labels

The labels.

Value

The Mean Absolute Error.

Examples

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library(data.table)

# Regression problem
my_preds <- dnorm(rnorm(n = 9*6*10))
my_labels <- runif(n = 9*6*10)
df_mae(my_preds, my_labels)

# Binary classification problem
my_preds <- dnorm(rnorm(n = 9*6*10))
my_labels <- as.numeric(runif(n = 9*6*10) >= 0.5)
df_mae(my_preds, my_labels)

# Multiclass classification problem
my_preds <- data.table(matrix(dnorm(rnorm(n = 9*6*10)), nrow = 9*10))
my_labels <- rep(c(1, 2, 3, 4, 5, 1, 0, 2, 3), 10)
df_mae(my_preds, my_labels)

Laurae2/Laurae documentation built on May 8, 2019, 7:59 p.m.