View source: R/machinelearning-functions-ksvm.R
ksvmClassification | R Documentation |
Classification using the support vector machine algorithm.
ksvmClassification(
object,
assessRes,
scores = c("prediction", "all", "none"),
cost,
fcol = "markers",
...
)
object |
An instance of class |
assessRes |
An instance of class
|
scores |
One of |
cost |
If |
fcol |
The feature meta-data containing marker definitions.
Default is |
... |
Additional parameters passed to |
An instance of class "MSnSet"
with
ksvm
and ksvm.scores
feature variables storing
the classification results and scores respectively.
Laurent Gatto
library(pRolocdata)
data(dunkley2006)
## reducing parameter search space and iterations
params <- ksvmOptimisation(dunkley2006, cost = 2^seq(-1,4,5), times = 3)
params
plot(params)
f1Count(params)
levelPlot(params)
getParams(params)
res <- ksvmClassification(dunkley2006, params)
getPredictions(res, fcol = "ksvm")
getPredictions(res, fcol = "ksvm", t = 0.75)
plot2D(res, fcol = "ksvm")
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