This function provides a modular and extensible way to compute performance measures (PM) for Data-Generating Mechanisms (DGMs). It handles different types of measures and automatically determines the required arguments for each measure function.
Usage
compute_single_measure(
dgm_name,
measure_name,
method,
method_setting,
conditions,
measure_fun,
measure_mcse_fun,
power_test_type = "p_value",
estimate_col = "estimate",
true_effect_col = "mean_effect",
ci_lower_col = "ci_lower",
ci_upper_col = "ci_upper",
p_value_col = "p_value",
bf_col = "BF",
convergence_col = "convergence",
power_threshold_p_value = 0.05,
power_threshold_bayes_factor = 10,
method_replacements = NULL,
n_repetitions = 1000,
overwrite = FALSE,
path = NULL,
...
)Arguments
- dgm_name
Character string specifying the DGM name
- measure_name
Name of the measure to compute (e.g., "bias", "mse")
- method
Character vector of method names
- method_setting
Character vector of method settings, must be same length as method
- conditions
Data frame of conditions from dgm_conditions()
- measure_fun
Function to compute the measure
- measure_mcse_fun
Function to compute the MCSE for the measure
- power_test_type
Character vector specifying the test type for power computation: "p_value" (default) or "bayes_factor" for each method. If a single value is provided, it is repeated for all methods.
- estimate_col
Character string specifying the column name containing parameter estimates. Default is "estimate"
- true_effect_col
Character string specifying the column name in conditions data frame containing true effect sizes. Default is "mean_effect"
- ci_lower_col
Character string specifying the column name containing lower confidence interval bounds. Default is "ci_lower"
- ci_upper_col
Character string specifying the column name containing upper confidence interval bounds. Default is "ci_upper"
- p_value_col
Character string specifying the column name containing p-values. Default is "p_value"
- bf_col
Character string specifying the column name containing Bayes factors. Default is "BF"
- convergence_col
Character string specifying the column name containing convergence indicators. Default is "convergence"
- power_threshold_p_value
Numeric threshold for power computation with p-values. Default is 0.05 (reject H0 if p < 0.05).
- power_threshold_bayes_factor
Numeric threshold for power computation with Bayes factors. Default is 10 (reject H0 if BF > 10)
- method_replacements
Named list of replacement method specifications. Each element should be named with the "method-method_setting" combination (e.g., "RMA-default") and contain a named list with:
method: Character vector of replacement method namesmethod_setting: Character vector of replacement method settings (same length as methods)power_test_type: Optional character vector of power test types for each replacement method (same length as methods). If not specified, uses the main power_test_type parameter
If multiple elements are specified within the vectors, these replacements are applied consecutively in case the previous replacements also failed to converge. Defaults to
NULL, i.e., omitting repetitions without converged results on method-by-method basis.- n_repetitions
Number of repetitions in each condition. Necessary method replacement. Defaults to
1000.- overwrite
Logical indicating whether to overwrite existing results. If FALSE (default), will skip computation for method-measure combinations that already exist
- path
Character string specifying the directory path where the datasets/results/measures should be saved. Defaults to the location specified via
PublicationBiasBenchmark.get_option("simulation_directory"). The objects are stored in dgm_name/datasets, dgm_name/results, dgm_name/measures subfolders.- ...
Additional arguments passed to measure functions