dcEvaluate {dcanr} | R Documentation |
Quantify the performance of a differential co-expression pipeline on simulated data.
dcEvaluate(simulation, dclist, truth.type = c("association", "influence", "direct"), perf.method = "f.measure", combine = TRUE, ...)
simulation |
a list, storing data and results generated from simulations |
dclist |
a list of igraphs, produced using |
truth.type |
a character, specifying which level of the true network to retrieve: 'association' (default), 'influence' or 'direct' |
perf.method |
a character, specifying the method to use. Available
methods can be accessed using |
combine |
a logical, indicating whether differential networks from
independent knock-outs should be treated as a single inference or
independent inferences (defaults to |
... |
additional parameters to be passed on to the performance metric
method (see |
a numeric, representing the performance metric. A single value if
combine = TRUE
and a named vector otherwise.
dcPipeline
, performanceMeasure
,
perfMethods
data(sim102) #run a standard pipeline resStd <- dcPipeline(sim102, dc.func = 'zscore') dcEvaluate(sim102, resStd) dcEvaluate(sim102, resStd, combine = FALSE)