mlr3measures (version 0.5.0)

mape: Mean Absolute Percent Error

Description

Measure to compare true observed response with predicted response in regression tasks.

Usage

mape(truth, response, sample_weights = NULL, na_value = NaN, ...)

Value

Performance value as numeric(1).

Arguments

truth

(numeric())
True (observed) values. Must have the same length as response.

response

(numeric())
Predicted response values. Must have the same length as truth.

sample_weights

(numeric())
Vector of non-negative and finite sample weights. Must have the same length as truth. The vector gets automatically normalized to sum to one. Defaults to equal sample weights.

na_value

(numeric(1))
Value that should be returned if the measure is not defined for the input (as described in the note). Default is NaN.

...

(any)
Additional arguments. Currently ignored.

Meta Information

  • Type: "regr"

  • Range: \([0, \infty)\)

  • Minimize: TRUE

  • Required prediction: response

Details

The Mean Absolute Percent Error is defined as $$ \frac{1}{n} \sum_{i=1}^n w_i \left| \frac{ t_i - r_i}{t_i} \right|. $$

This measure is undefined if any element of \(t\) is \(0\).

References

de Myttenaere, Arnaud, Golden, Boris, Le Grand, Bénédicte, Rossi, Fabrice (2016). “Mean Absolute Percentage Error for regression models.” Neurocomputing, 192, 38-48. ISSN 0925-2312, tools:::Rd_expr_doi("10.1016/j.neucom.2015.12.114").

See Also

Other Regression Measures: ae(), ape(), bias(), ktau(), mae(), maxae(), maxse(), medae(), medse(), mse(), msle(), pbias(), rae(), rmse(), rmsle(), rrse(), rse(), rsq(), sae(), se(), sle(), smape(), srho(), sse()

Examples

Run this code
set.seed(1)
truth = 1:10
response = truth + rnorm(10)
mape(truth, response)

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