mlr (version 2.19.1)

friedmanTestBMR: Perform overall Friedman test for a BenchmarkResult.

Description

Performs a stats::friedman.test for a selected measure. The null hypothesis is that apart from an effect of the different (Task), the location parameter (aggregated performance measure) is the same for each Learner. Note that benchmark results for at least two learners on at least two tasks are required.

Usage

friedmanTestBMR(bmr, measure = NULL, aggregation = "default")

Value

(htest): See stats::friedman.test for details.

Arguments

bmr

(BenchmarkResult)
Benchmark result.

measure

(Measure)
Performance measure. Default is the first measure used in the benchmark experiment.

aggregation

(character(1))
“mean” or “default”. See getBMRAggrPerformances for details on “default”.

See Also

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

Examples

Run this code
# see benchmark

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