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Return task ids used in benchmark.

Source: R/BenchmarkResult_operators.R

Gets the task IDs used in a benchmark experiment.

getBMRTaskIds(bmr)

Arguments

bmr

(BenchmarkResult)
Benchmark result.

Value

(character).

See also

Other benchmark: BenchmarkResult, batchmark, benchmark, convertBMRToRankMatrix, friedmanPostHocTestBMR, friedmanTestBMR, generateCritDifferencesData, getBMRAggrPerformances, getBMRFeatSelResults, getBMRFilteredFeatures, getBMRLearnerIds, getBMRLearnerShortNames, getBMRLearners, getBMRMeasureIds, getBMRMeasures, getBMRModels, getBMRPerformances, getBMRPredictions, getBMRTaskDescs, getBMRTuneResults, plotBMRBoxplots, plotBMRRanksAsBarChart, plotBMRSummary, plotCritDifferences, reduceBatchmarkResults

Contents

  • Arguments
  • Value
  • See also