smape function

Symmetric mean absolute percentage error

Symmetric mean absolute percentage error

Calculate the symmetric mean absolute percentage error. This metric is in relative units.

smape(data, ...) ## S3 method for class 'data.frame' smape(data, truth, estimate, na_rm = TRUE, case_weights = NULL, ...) smape_vec(truth, estimate, na_rm = TRUE, case_weights = NULL, ...)

Arguments

  • data: A data.frame containing the columns specified by the truth

    and estimate arguments.

  • ...: Not currently used.

  • truth: The column identifier for the true results (that is numeric). This should be an unquoted column name although this argument is passed by expression and supports quasiquotation (you can unquote column names). For _vec() functions, a numeric vector.

  • estimate: The column identifier for the predicted results (that is also numeric). As with truth this can be specified different ways but the primary method is to use an unquoted variable name. For _vec() functions, a numeric vector.

  • na_rm: A logical value indicating whether NA

    values should be stripped before the computation proceeds.

  • case_weights: The optional column identifier for case weights. This should be an unquoted column name that evaluates to a numeric column in data. For _vec() functions, a numeric vector, hardhat::importance_weights(), or hardhat::frequency_weights().

Returns

A tibble with columns .metric, .estimator, and .estimate and 1 row of values.

For grouped data frames, the number of rows returned will be the same as the number of groups.

For smape_vec(), a single numeric value (or NA).

Details

This implementation of smape() is the "usual definition" where the denominator is divided by two.

Examples

# Supply truth and predictions as bare column names smape(solubility_test, solubility, prediction) library(dplyr) set.seed(1234) size <- 100 times <- 10 # create 10 resamples solubility_resampled <- bind_rows( replicate( n = times, expr = sample_n(solubility_test, size, replace = TRUE), simplify = FALSE ), .id = "resample" ) # Compute the metric by group metric_results <- solubility_resampled %>% group_by(resample) %>% smape(solubility, prediction) metric_results # Resampled mean estimate metric_results %>% summarise(avg_estimate = mean(.estimate))

See Also

Other numeric metrics: ccc(), huber_loss(), huber_loss_pseudo(), iic(), mae(), mape(), mase(), mpe(), msd(), poisson_log_loss(), rmse(), rpd(), rpiq(), rsq(), rsq_trad()

Other accuracy metrics: ccc(), huber_loss(), huber_loss_pseudo(), iic(), mae(), mape(), mase(), mpe(), msd(), poisson_log_loss(), rmse()

Author(s)

Max Kuhn, Riaz Hedayati