context("test_CritDifferences")
test_that("test_CritDifferences", {
lrns = list(makeLearner("classif.rpart"),
makeLearner("classif.nnet"))
tasks = list(multiclass.task, binaryclass.task)
rdesc = makeResampleDesc("Holdout")
meas = list(acc, ber)
res = benchmark(lrns, tasks, rdesc, meas)
# Case: Make sure rpart is better then nnet in regards to
# ber. Minimal p.value for only 2 learners ~.157
res$results$binary$classif.nnet$aggr[2] = 1
res$results$multiclass$classif.nnet$aggr[2] = 1
expect_warning({r1 = generateCritDifferencesData(res)})
expect_is(r1, "CritDifferencesData")
expect_warning({r2 = generateCritDifferencesData(res, ber, test = "nemenyi")})
expect_is(r2, "CritDifferencesData")
r3 = generateCritDifferencesData(res, ber, p.value = 0.5, test = "bd")
expect_is(r3, "CritDifferencesData")
# Test Issue #554 (equally performing learners)
lrns2 = list(makeLearner("classif.rpart", "rpart1"),
makeLearner("classif.rpart", "rpart2"))
res2 = benchmark(lrns2, tasks, rdesc, meas)
expect_warning({r4 = generateCritDifferencesData(res2, acc, p.value = 0.3, test = "bd")},
"Learner performances might be exactly equal.")
expect_is(r4, "CritDifferencesData")
plotCritDifferences(r1)
ggsave(tempfile(fileext = ".png"))
plotCritDifferences(r2)
ggsave(tempfile(fileext = ".png"))
plotCritDifferences(r3, baseline = "classif.rpart")
ggsave(tempfile(fileext = ".png"))
plotCritDifferences(r4)
ggsave(tempfile(fileext = ".png"))
})
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