The following formula is used for imputation:
base +- range.scalar * range.span + N(0, sd = jitter * range.span)
With range.span = max - min.
Returns an object like algo.runs of asscenario, but drops
the runstatus and all other measures.
imputeAlgoPerf(
asscenario,
measure,
base = NULL,
range.scalar = 0.3,
jitter = 0,
impute.zero.vals = FALSE
)[data.frame].
[ASScenario]
Algorithm selection scenario.
[character(1)]
Measure to impute.
Default is first measure in scenario.
[numeric(1)]
See formula.
Default is NULL, which means maximum of performance values if measure should be minimized,
or minimum for maximization case.
[numeric(1)]
See formula.
Default is 0.3.
[numeric(1)]
See formula.
Default is 0.
[logical(1)]
Should values which are exactly 0 be imputed to 1e-6?
This allows to take the logarithm later on, handy for subsequent visualizations.
Note that this really only makes sense for non-negative measures!
Default is FALSE.