Nothing
#devtools::test("asremlPlus")
context("prediction_presentation")
cat("#### Test for Intercept prediction on Oats with asreml42\n")
test_that("predict_Intercept_asreml42", {
skip_if_not_installed("asreml")
skip_on_cran()
library(asreml)
library(asremlPlus)
library(dae)
data(Oats.dat)
m1.asr <- asreml(Yield ~ Nitrogen*Variety,
random=~Blocks/Wplots,
data=Oats.dat)
testthat::expect_equal(length(m1.asr$vparameters),3)
current.asrt <- as.asrtests(m1.asr)
#Test for Intercept predict
Int.pred <- predict(m1.asr, classify="(Intercept)")$pvals
testthat::expect_equal(nrow(Int.pred), 1)
testthat::expect_true(abs( Int.pred$predicted.value - 103.9722) < 1e-04)
Int.diffs <- predictPlus(m1.asr, classify="(Intercept)")
testthat::expect_equal(length(Int.diffs),7)
testthat::expect_equal(nrow(Int.diffs$predictions), 1)
testthat::expect_true(abs( Int.diffs$predictions$predicted.value - 103.9722) < 1e-04)
xtitl <- "Overall mean"
names(xtitl) <- "Intercept"
testthat::expect_silent(plotPredictions(classify="(Intercept)", y = "predicted.value",
data = Int.diffs$predictions,
y.title = "Yield", titles = xtitl,
error.intervals = "Conf"))
})
cat("#### Test for predictPlus.asreml42\n")
test_that("predictPlus.asreml42", {
skip_if_not_installed("asreml")
skip_on_cran()
library(asreml)
library(asremlPlus)
library(dae)
data(WaterRunoff.dat)
asreml.options(keep.order = TRUE) #required for asreml4 only
current.asr <- asreml(fixed = pH ~ Benches + (Sources * (Type + Species)),
random = ~ Benches:MainPlots,
data= WaterRunoff.dat)
current.asrt <- as.asrtests(current.asr, NULL, NULL)
diffs <- predictPlus(classify = "Sources:Type",
asreml.obj = current.asr, tables = "none",
wald.tab = current.asrt$wald.tab,
present = c("Type","Species","Sources"))
testthat::expect_is(diffs, "alldiffs")
#### Get the observed combinations of the factors and variables in classify
class.facs <- c("Species","Date","xDay")
levs <- as.data.frame(table(WaterRunoff.dat[class.facs]))
levs <- levs[do.call(order, levs), ]
levs <- as.list(levs[levs$Freq != 0, class.facs])
levs$xDay <- as.numfac(levs$xDay)
current.asr <- asreml(fixed = log.Turbidity ~ Benches + Sources + Type + Species +
Sources:Type + Sources:Species +
Sources:xDay + Species:xDay + Species:Date,
data = WaterRunoff.dat)
current.asrt <- as.asrtests(current.asr, NULL, NULL)
diffs.p <- predictPlus(asreml.obj = current.asr,
classify="Species:Date:xDay",
term = "Species:Date",
parallel = TRUE, levels=levs,
present=c("Type","Species","Sources"),
x.num = "xDay", x.fac = "Date",
x.plot.values=c(0,28,56,84), tables = "none",
wald.tab = current.asrt$wald.tab)
testthat::expect_is(diffs.p, "alldiffs")
})
cat("#### Test for plotPredictions.asreml42\n")
test_that("plotPredictions.asreml42", {
skip_if_not_installed("asreml")
skip_on_cran()
library(asreml)
library(asremlPlus)
library(ggplot2)
library(dae)
data(WaterRunoff.dat)
#### Get the observed combinations of the factors and variables in classify
class.facs <- c("Species","Date","xDay")
levs <- as.data.frame(table(WaterRunoff.dat[class.facs]))
levs <- levs[do.call(order, levs), ]
levs <- as.list(levs[levs$Freq != 0, class.facs])
levs$xDay <- as.numfac(levs$xDay)
asreml.options(keep.order = TRUE) #required for asreml4 only
current.asr <- asreml(fixed = log.Turbidity ~ Benches + Sources + Type + Species +
Sources:Type + Sources:Species +
Sources:xDay + Species:xDay + Species:Date,
data = WaterRunoff.dat)
current.asrt <- as.asrtests(current.asr, NULL, NULL)
predictions <- predict(current.asr, class="Species:Date:xDay",
parallel = TRUE, levels = levs,
present = c("Type","Species","Sources"))$pvals
predictions <- predictions[predictions$status == "Estimable",]
x.title <- "Days since first observation"
names(x.title) <- "xDay"
#Get predictions without specifying levels
plotPredictions(classify="Species:Date:xDay", y = "predicted.value",
data = predictions, wald.tab = current.asrt$wald.tab,
x.num = "xDay", x.fac = "Date",
titles = x.title,
y.title = "Predicted log(Turbidity)",
present = c("Type","Species","Sources"),
error.intervals = "none",
ggplotFuncs = list(ggtitle("Transformed turbidity over time")))
#Specify the levs and parallel = TRUE
diffs <- predictPlus(asreml.obj = current.asr,
classify="Species:Date:xDay",
term = "Species:Date",
present=c("Type","Species","Sources"),
x.num = "xDay", x.fac = "Date",
parallel = TRUE, levels = levs,
x.plot.values=c(0,28,56,84),
wald.tab = current.asrt$wald.tab)
plotPredictions(classify="Species:Date:xDay", y = "predicted.value",
data = diffs$predictions, wald.tab = current.asrt$wald.tab,
x.num = "xDay", x.fac = "Date",
titles = x.title,
y.title = "Predicted log(Turbidity)")
testthat::expect_silent("dummy")
})
cat("#### Test for predictPresent.asreml42\n")
test_that("predictPresent.asreml42", {
skip_if_not_installed("asreml")
skip_on_cran()
library(dae)
library(asreml)
library(asremlPlus)
data(WaterRunoff.dat)
#### Get the observed combinations of the factors and variables in classify
class.facs <- c("Species","Date","xDay")
levs <- as.data.frame(table(WaterRunoff.dat[class.facs]))
levs <- levs[do.call(order, levs), ]
levs <- as.list(levs[levs$Freq != 0, class.facs])
levs$xDay <- as.numfac(levs$xDay)
titles <- list("Days since first observation", "Days since first observation", "pH", "Turbidity (NTU)")
names(titles) <- names(WaterRunoff.dat)[c(5,7,11:12)]
asreml.options(keep.order = TRUE) #required for asreml4 only
current.asr <- asreml(fixed = log.Turbidity ~ Benches + Sources + Type + Species +
Sources:Type + Sources:Species + Sources:Species:xDay +
Sources:Species:Date,
data = WaterRunoff.dat)
current.asrt <- as.asrtests(current.asr, NULL, NULL)
#Example that fails because Date has levels that are not numeric in nature
testthat::expect_error(diff.list <- predictPresent(terms = "Date:Sources:Species",
asreml.obj = current.asrt$asreml.obj,
wald.tab = current.asrt$wald.tab,
x.fac = "Date",
plots = "predictions",
error.intervals = "StandardError",
titles = titles,
transform.power = 0,
present = c("Type","Species","Sources"),
tables = "differences",
level.length = 6))
#Example that does not produce predictions because has Date but not xDay
testthat::expect_error(diff.list <- predictPresent(terms = "Date:Sources:Species",
asreml.obj = current.asrt$asreml.obj,
wald.tab = current.asrt$wald.tab,
plots = "predictions",
error.intervals = "StandardError",
titles = titles,
transform.power = 0,
present = c("Type","Species","Sources","Date"),
tables = "differences",
level.length = 6))
#### Get the observed combinations of the factors and variables in classify
class.facs <- c("Sources","Species","Date","xDay")
levs <- as.data.frame(table(WaterRunoff.dat[class.facs]))
levs <- levs[do.call(order, levs), ]
levs <- as.list(levs[levs$Freq != 0, class.facs])
levs$xDay <- as.numfac(levs$xDay)
# parallel and levels are arguments from predict.asreml
diff.list <- predictPresent.asreml(asreml.obj = current.asrt$asreml.obj,
terms = "Date:Sources:Species:xDay",
x.num = "xDay", x.fac = "Date",
parallel = TRUE, levels = levs,
wald.tab = current.asrt$wald.tab,
plots = "predictions",
error.intervals = "StandardError",
titles = titles,
transform.power = 0,
present = c("Type","Species","Sources"),
tables = "none",
level.length = 6)
testthat::expect_equal(length(diff.list), 1)
testthat::expect_match(names(diff.list), "Date.Sources.Species.xDay")
# test that backtransforms have halfLSD intervals
diff.list <- predictPresent.asreml(asreml.obj = current.asrt$asreml.obj,
terms = "Date:Sources:Species:xDay",
x.num = "xDay", x.fac = "Date",
parallel = TRUE, levels = levs,
wald.tab = current.asrt$wald.tab,
plots = "backtransforms",
error.intervals = "halfLeast",
avsed.tolerance = 1,
titles = titles,
transform.power = 0,
present = c("Type","Species","Sources"),
tables = "none",
level.length = 6)
testthat::expect_equal(length(diff.list), 1)
testthat::expect_match(names(diff.list), "Date.Sources.Species.xDay")
testthat::expect_true(all(c("upper.halfLeastSignificant.limit",
"lower.halfLeastSignificant.limit") %in%
names(diff.list$Date.Sources.Species.xDay$backtransforms)))
})
#### This test is not relevant to asreml3 because its saving of sed and vcov are different
cat("#### Test for error when no predictions.asreml42\n")
test_that("noPredictions.asreml42", {
skip_if_not_installed("asreml")
skip_on_cran()
library(asreml)
library(asremlPlus)
data(gw.dat)
current.asr <- do.call(asreml,
args=list(fixed = y ~ Species*Substrate*Irrigation,
random = ~ Row + Column,
keep.order=TRUE, data = gw.dat,
maxit=50, workspace = 1e08, stepsize = 0.0001))
current.asrt <- as.asrtests(current.asr, NULL, NULL)
current.asrt <- rmboundary(current.asrt)
testthat::expect_error(diffs <- predictPresent(current.asrt$asreml.obj,
terms = "Irrigation",
error.intervals = "Conf",
wald.tab = current.asrt$wald.tab,
tables = "none")[[1]],
regexp = "predict.asreml has not returned the sed component for the predictions as requested",
fixed = TRUE)
testthat::expect_error(diffs <- predictPresent(current.asrt$asreml.obj,
terms = "Irrigation",
linear.transformation = ~ Irrigation,
error.intervals = "Conf",
wald.tab = current.asrt$wald.tab,
tables = "none")[[1]],
regexp = "predict.asreml has not returned the variance matrix of the predictions as requested",
fixed = TRUE)
})
cat("#### Test for plotPvalues.asreml42\n")
test_that("plotPvalues.asreml42", {
skip_if_not_installed("asreml")
skip_on_cran()
library(asreml)
library(asremlPlus)
library(dae)
library(reshape2)
data(WaterRunoff.dat)
asreml.options(keep.order = TRUE) #required for asreml4 only
testthat::expect_silent(current.asr <- asreml(fixed = pH ~ Benches + (Sources * (Type + Species)),
random = ~ Benches:MainPlots,
data= WaterRunoff.dat))
current.asrt <- as.asrtests(current.asr, NULL, NULL)
diffs <- predictPlus.asreml(classify = "Sources:Type",
asreml.obj = current.asr, tables = "none",
wald.tab = current.asrt$wald.tab,
present = c("Type","Species","Sources"))
testthat::expect_is(diffs, "alldiffs")
p <- diffs$p.differences
p <- within(reshape2::melt(p),
{
Var1 <- factor(Var1, levels=dimnames(diffs$p.differences)[[1]])
Var2 <- factor(Var2, levels=levels(Var1))
})
names(p) <- c("Rows","Columns","p")
testthat::expect_silent(plotPvalues(p, x = "Rows", y = "Columns",
gridspacing = rep(c(3,4), c(4,2)),
show.sig = TRUE))
#Test different size, face and colour
testthat::expect_silent(plotPvalues(p, x = "Rows", y = "Columns",
gridspacing = rep(c(3,4), c(4,2)),
show.sig = TRUE, sig.size = 5, sig.colour = "blue"))
testthat::expect_silent(plotPvalues(p, x = "Rows", y = "Columns",
gridspacing = rep(c(3,4), c(4,2)),
show.sig = TRUE, sig.size = 5, sig.face = "bold",
sig.family = "serif"))
#Plot with sections
pdata <- plotPvalues(diffs, sections = "Sources", show.sig = TRUE)
testthat::expect_equal(nrow(pdata$pvalues), 400)
testthat::expect_equal(ncol(pdata$pvalues), 5)
testthat::expect_true(all(c("Rows","Columns","p","sections1","sections2") %in% names(pdata$pvalues)))
testthat::expect_equal(length(pdata$plots), 6)
testthat::expect_equal(names(pdata$plots), c("Rainwater","Recycled water","Tap water",
"Rain+Basalt","Rain+Dolomite","Rain+Quartzite"))
#Plot without sections, but automatic gridspacing
pupdata <- plotPvalues(diffs, show.sig = TRUE, factors.per.grid = 1)
testthat::expect_equal(nrow(pupdata$pvalues), 400)
testthat::expect_equal(ncol(pupdata$pvalues), 3)
testthat::expect_true(all(c("Rows","Columns","p") %in% names(pupdata$pvalues)))
testthat::expect_equal(sum(!is.na(pupdata$pvalues$p)), 380)
testthat::expect_equal(length(pupdata$plots), 1)
#Plot without sections, but automatic gridspacing and upper triangle
pupdata <- plotPvalues(diffs, show.sig = TRUE, factors.per.grid = 1,
triangles = "upper")
testthat::expect_equal(nrow(pupdata$pvalues), 400)
testthat::expect_equal(ncol(pupdata$pvalues), 3)
testthat::expect_true(all(c("Rows","Columns","p") %in% names(pupdata$pvalues)))
testthat::expect_equal(sum(!is.na(pupdata$pvalues$p)), 190)
#Plot without sections, but manual gridspacing and upper triangle
pupdata <- plotPvalues(diffs, show.sig = TRUE, gridspacing = rep(c(3,4), c(4,2)),
triangles = "upper")
testthat::expect_equal(nrow(pupdata$pvalues), 400)
testthat::expect_equal(ncol(pupdata$pvalues), 3)
testthat::expect_true(all(c("Rows","Columns","p") %in% names(pupdata$pvalues)))
testthat::expect_equal(sum(!is.na(pupdata$pvalues$p)), 190)
#Plot without sections, but manual gridspacing and lower triangle
pupdata <- plotPvalues(diffs, sections = "Sources", show.sig = TRUE, triangles = "upper")
pupdata$pvalues <- na.omit(pupdata$pvalues)
testthat::expect_equal(nrow(pupdata$pvalues), 190)
testthat::expect_equal(ncol(pupdata$pvalues), 5)
testthat::expect_true(all(c("Rows","Columns","p","sections1","sections2") %in%
names(pupdata$pvalues)))
})
cat("#### Test for plotPvalues.asreml42\n")
test_that("plotPvalues.asreml42", {
skip_if_not_installed("asreml")
skip_on_cran()
library(asreml)
library(asremlPlus)
library(dae)
LeafSucculence.diff <- readRDS("./data/LeafSucculence.diff")
LeafSucculence.diff <- LeafSucculence.diff[[1]]
pdata <- plotPvalues(LeafSucculence.diff, gridspacing = 3, show.sig = TRUE,
axis.labels = TRUE)
testthat::expect_equal(nrow(pdata$pvalue), 144)
testthat::expect_equal(ncol(pdata$pvalues), 3)
testthat::expect_true(all(c("Rows","Columns","p") %in% names(pdata$pvalues)))
pdata <- plotPvalues(LeafSucculence.diff, factors.per.grid = 2, show.sig = TRUE,
axis.labels = TRUE)
testthat::expect_equal(nrow(pdata$pvalues), 144)
testthat::expect_equal(ncol(pdata$pvalues), 3)
testthat::expect_true(all(c("Rows","Columns","p") %in% names(pdata$pvalues)))
pdata <- plotPvalues(LeafSucculence.diff, sections = c("Depths","Slope"),
show.sig = TRUE, axis.labels = TRUE)
testthat::expect_equal(nrow(pdata$pvalues), 144)
testthat::expect_equal(ncol(pdata$pvalues), 5)
testthat::expect_true(all(c("Rows","Columns","p","sections1","sections2") %in% names(pdata$pvalues)))
})
cat("#### Test for factor combinations asreml42\n")
test_that("factor.combinations.asreml42", {
skip_if_not_installed("asreml")
skip_on_cran()
library(asreml)
library(asremlPlus)
library(dae)
LeafSucculence.diff <- readRDS("./data/LeafSucculence.diff")
LeafSucculence.diff <- LeafSucculence.diff[[1]]
LeafSucculence.diff <- recalcLSD(LeafSucculence.diff, LSDtype = "factor.combinations",
LSDby = "Species")
testthat::expect_warning(LeafSucculence.diff <- redoErrorIntervals(LeafSucculence.diff,
error.intervals = "half"))
testthat::expect_equal(nrow(LeafSucculence.diff$LSD), 3)
testthat::expect_equal(ncol(LeafSucculence.diff$LSD), 8)
testthat::expect_true(all(c("P1","P2","P3") %in% rownames(LeafSucculence.diff$LSD)))
testthat::expect_false("lower.halfLeastSignificant.limit" %in% names(LeafSucculence.diff$predictions))
testthat::expect_true(names(LeafSucculence.diff$predictions)[length(names(
LeafSucculence.diff$predictions))] == "est.status")
})
cat("#### Test for recalcLSD.alldiffs4\n")
test_that("recalcLSD.alldiffs4", {
skip_if_not_installed("asreml")
skip_on_cran()
library(asreml)
library(asremlPlus)
library(dae)
data(WaterRunoff.dat)
asreml.options(keep.order = TRUE) #required for asreml4 only
testthat::expect_silent(current.asr <- asreml(fixed = pH ~ Benches + (Sources * (Type + Species)),
random = ~ Benches:MainPlots,
data= WaterRunoff.dat))
current.asrt <- as.asrtests(current.asr, NULL, NULL)
diffs <- predictPlus.asreml(classify = "Sources:Type",
asreml.obj = current.asr, tables = "none",
wald.tab = current.asrt$wald.tab,
present = c("Type","Species","Sources"))
testthat::expect_is(diffs, "alldiffs")
diffs <- recalcLSD.alldiffs(diffs, LSDtype = "factor.combinations", LSDby = "Sources")
testthat::expect_equal(nrow(diffs$LSD), 6)
testthat::expect_equal(ncol(diffs$LSD), 8)
testthat::expect_warning(diffs <- redoErrorIntervals(diffs,
error.intervals = "halfLeastSignificant"))
testthat::expect_false("upper.halfLeastSignificant.limit" %in% names(diffs$predictions))
})
cat("#### Test for LSDby4\n")
test_that("LSDby4", {
skip_if_not_installed("asreml")
skip_on_cran()
library(asreml)
library(asremlPlus)
library(dae)
#example 9-1 from Montgomery 5 edn
#Set up data.frame
Pressure.lev <- c(10,15,20)
Speed.lev <- c(100,120,140)
Nozzle.lev <- c("A", "B", "C")
Fac3Syrup.dat <- fac.gen(generate=list(Nozzle = Nozzle.lev,
Pressure = Pressure.lev, Speed = Speed.lev),
each=2)
Fac3Syrup.dat <- within(Fac3Syrup.dat,
{
SpeedPress <- fac.combine(list(Speed,Pressure),
combine.levels = TRUE)
WSpeedPress <- fac.nested(SpeedPress)
})
Fac3Syrup.dat <- data.frame(Test = factor(1:54), Fac3Syrup.dat)
Fac3Syrup.dat$Loss <- c(-35,-25,-45,-60,-40,15, 110,75,-10,30,80,54,
4,5,-40,-30,31,36, 17,24,-65,-58,20,4,
55,120,-55,-44,110,44, -23,-5,-64,-62,-20,-31,
-39,-35,-55,-67,15,-30, 90,113,-28,-26,110,135,
-30,-55,-61,-52,54,4)+70
Fac3Syrup.dat <- with(Fac3Syrup.dat, Fac3Syrup.dat[order(SpeedPress, WSpeedPress),])
#Analysis
interaction.ABC.plot(Loss, Pressure, Speed, Nozzle, data=Fac3Syrup.dat)
Fac3Syrup.aov <- aov(Loss ~ Nozzle * Pressure * Speed + Error(Test), Fac3Syrup.dat)
summary(Fac3Syrup.aov)
m1 <- do.call("asreml",
args = list(Loss ~ Nozzle * Pressure * Speed,
residual = ~idh(SpeedPress):WSpeedPress,
data = Fac3Syrup.dat))
testthat::expect_true(abs(summary(m1)$varcomp$component[2] - 27.5) < 1e-05)
wald.tab <- wald.asreml(m1, denDF = "numeric")$Wald
testthat::expect_equal(nrow(wald.tab), 8)
diffs <- predictPlus(m1, classify = "Nozzle:Pressure:Speed",
#linear.transformation = ~(Nozzle + Pressure):Speed,
wald.tab = wald.tab,
tables = "none")
testthat::expect_true("upper.Confidence.limit" %in% names(diffs$predictions))
testthat::expect_true(all(c( "LSDtype", "LSDstatistic") %in% names(attributes(diffs))))
testthat::expect_true(is.null(attr(diffs, which = "LSDby")))
testthat::expect_true((attr(diffs, which = "LSDtype") == "overall"))
#Calculate LSD, but leave as CIs
diffs.LSD <- recalcLSD(diffs, LSDtype = "factor",
LSDby = c("Speed","Pressure"))
testthat::expect_equal(nrow(diffs.LSD$LSD), 9)
testthat::expect_true(abs(diffs.LSD$LSD$minLSD[1]- 11.92550) < 1e-05)
testthat::expect_true(all(abs(diffs.LSD$LSD$minLSD- diffs.LSD$LSD$maxLSD) < 1e-05))
testthat::expect_true(all(c( "LSDtype", "LSDby", "LSDstatistic") %in% names(attributes(diffs.LSD))))
testthat::expect_true((attr(diffs.LSD, which = "LSDtype") == "factor.combinations"))
testthat::expect_true("upper.Confidence.limit" %in% names(diffs$predictions))
#Convert from CI to LSI
diffs.LSI <- redoErrorIntervals(diffs.LSD, error.intervals = "half")
testthat::expect_true("upper.halfLeastSignificant.limit" %in% names(diffs.LSI$predictions))
testthat::expect_equal(nrow(diffs.LSI$LSD), 9)
diffs <- redoErrorIntervals(diffs, error.intervals = "half", LSDtype = "factor",
LSDby = c("Speed","Pressure"), wald.tab = wald.tab,
tables = "none")
testthat::expect_true("upper.halfLeastSignificant.limit" %in% names(diffs$predictions))
testthat::expect_equal(nrow(diffs$LSD), 9)
testthat::expect_true(abs(diffs$LSD$minLSD[1]- 11.92550) < 1e-05)
testthat::expect_true(all(abs(diffs$LSD$minLSD- diffs$LSD$maxLSD) < 1e-05))
#Test changing the LSDby
testthat::expect_warning(diff.Press <-
redoErrorIntervals(diffs, error.intervals = "half",
LSDtype = "factor",
LSDby = "Pressure", wald.tab = wald.tab,
tables = "none"))
diff.Press$LSD
testthat::expect_equal(nrow(diff.Press$LSD), 3)
testthat::expect_true(abs(diff.Press$LSD$minLSD[1]- 11.92550) < 1e-05)
testthat::expect_true(abs(diff.Press$LSD$meanLSD[1]- 41.13342) < 1e-05)
testthat::expect_true(abs(diff.Press$LSD$maxLSD[1]- 67.62672) < 1e-05)
#No LSDtype
testthat::expect_warning(diff.Press <-
redoErrorIntervals(diffs, error.intervals = "half",
LSDby = "Pressure", wald.tab = wald.tab,
tables = "none"))
testthat::expect_equal(nrow(diff.Press$LSD), 3)
testthat::expect_true(abs(diff.Press$LSD$minLSD[1]- 11.92550) < 1e-05)
testthat::expect_true(abs(diff.Press$LSD$meanLSD[1]- 41.13342) < 1e-05)
testthat::expect_true(abs(diff.Press$LSD$maxLSD[1]- 67.62672) < 1e-05)
testthat::expect_warning(diff.all <-
redoErrorIntervals(diffs, error.intervals = "half",
LSDtype = "overall",
LSDby = NULL, wald.tab = wald.tab,
tables = "none"))
testthat::expect_equal(nrow(diff.all$LSD), 1)
testthat::expect_true(rownames(diff.all$LSD) == "overall")
testthat::expect_true(abs(diff.all$LSD$minLSD[1]- 11.92550) < 1e-05)
#LSDtype = overall only
testthat::expect_warning(diff.all <-
redoErrorIntervals(diffs, error.intervals = "half",
LSDtype = "overall",
wald.tab = wald.tab,
tables = "none"))
testthat::expect_equal(nrow(diff.all$LSD), 1)
testthat::expect_true(abs(diff.all$LSD$minLSD[1]- 11.92550) < 1e-05)
#Test predictPlus with LSD options
#With linear transformation and LSDtype = "factor combinations"
diffs.LSD <- predictPlus(m1, classify = "Nozzle:Pressure:Speed",
linear.transformation = ~(Nozzle + Pressure):Speed,
error.intervals = "half", LSDtype = "factor", LSDby = c("Speed", "Pressure"),
wald.tab = wald.tab,
tables = "none")
testthat::expect_true("upper.halfLeastSignificant.limit" %in% names(diffs.LSD$predictions))
testthat::expect_true(all(c( "LSDtype", "LSDby", "LSDstatistic") %in% names(attributes(diffs.LSD))))
testthat::expect_true((attr(diffs.LSD, which = "LSDtype") == "factor.combinations"))
testthat::expect_true(all(c( "LSDtype", "LSDby", "LSDstatistic", "LSDvalues") %in%
names(attributes(diffs.LSD$predictions))))
testthat::expect_true(attr(diffs.LSD$predictions, which = "LSDtype") == "factor.combinations")
testthat::expect_true(attr(diffs.LSD$predictions, which = "LSDstatistic") == "mean")
})
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