context("daqda")
test_that("daqda: misspecified arguments", {
data(iris)
# wrong variable names
expect_error(daqda(formula = Species ~ V1, data = iris, wf = "gaussian", bw = 10))
# wrong class
expect_error(daqda(formula = iris, data = iris, wf = "gaussian", bw = 10))
#expect_error(daqda(iris, data = iris, wf = "gaussian", bw = 10))
# target variable also in x
expect_error(daqda(grouping = iris$Species, x = iris, wf = "gaussian", bw = 10)) ## system singular
expect_warning(daqda(Species ~ Species + Petal.Width, data = iris, wf = "gaussian", bw = 10)) ## warning, Species on RHS removed
# missing x
expect_error(daqda(grouping = iris$Species, wf = "gaussian", bw = 10))
## itr
expect_that(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, itr = -5), throws_error("'itr' must be >= 1"))
expect_that(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, itr = 0), throws_error("'itr' must be >= 1"))
## wrong method argument
# missing quotes
expect_error(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, method = ML))
# method as vector
expect_error(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, method = c("ML","unbiased")))
})
test_that("daqda throws a warning if grouping variable is numeric", {
data(iris)
# formula, data
expect_that(daqda(formula = Sepal.Length ~ ., data = iris, wf = "gaussian", bw = 10), gives_warning("'grouping' was coerced to a factor"))
expect_error(daqda(formula = Petal.Width ~ ., data = iris, wf = "gaussian", bw = 10)) ## system singular
# grouping, x
expect_that(daqda(grouping = iris[,1], x = iris[,-1], wf = "gaussian", bw = 10), gives_warning("'grouping' was coerced to a factor"))
expect_error(daqda(grouping = iris[,4], x = iris[,-1], wf = "gaussian", bw = 10)) ## system singular
})
test_that("daqda works if only one predictor variable is given", {
data(iris)
fit <- daqda(Species ~ Petal.Width, data = iris, wf = "gaussian", bw = 5)
expect_equal(ncol(fit$means), 1)
expect_equal(dim(fit$covs[[1]]), rep(1, 2))
})
test_that("daqda: training data from only one class", {
data(iris)
expect_that(daqda(Species ~ ., data = iris, bw = 2, subset = 1:50), throws_error("training data from only one group given"))
expect_that(daqda(grouping = iris$Species, x = iris[,-5], bw = 2, subset = 1:50), throws_error("training data from only one group given"))
})
test_that("daqda: one training observation", {
data(iris)
# one training observation
expect_error(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = 1)) ## system singular
# one training observation in one predictor variable
expect_error(daqda(Species ~ Petal.Width, data = iris, wf = "gaussian", bw = 1, subset = 1)) ## system singular
})
test_that("daqda: initial weighting works correctly", {
data(iris)
## check if weighted solution with initial weights = 1 equals unweighted solution
fit1 <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 2)
fit2 <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 2, weights = rep(1,150))
expect_equal(fit1[-9],fit2[-9])
## returned weights
a <- rep(1, 150)
names(a) <- 1:150
expect_equal(fit1$weights[[1]], a)
expect_equal(fit1$weights, fit2$weights)
## weights and subsetting
# formula, data
expect_that(fit <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 2, subset = 11:60), gives_warning("group virginica is empty"))
a <- rep(1,50)
names(a) <- 11:60
expect_equal(fit$weights[[1]], a)
# formula, data, weights
a <- rep(1:3,50)[11:60]
a <- a/sum(a) * length(a)
names(a) <- 11:60
expect_that(fit <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 2, weights = rep(1:3, 50), subset = 11:60), gives_warning("group virginica is empty"))
expect_equal(fit$weights[[1]], a)
# x, grouping
expect_that(fit <- daqda(x = iris[,-5], grouping = iris$Species, wf = "gaussian", bw = 2, subset = 11:60), gives_warning("group virginica is empty"))
a <- rep(1,50)
names(a) <- 11:60
expect_equal(fit$weights[[1]], a)
# x, grouping, weights
expect_that(fit <- daqda(x = iris[,-5], grouping = iris$Species, wf = "gaussian", bw = 2, weights = rep(1:3, 50), subset = 11:60), gives_warning("group virginica is empty"))
a <- rep(1:3,50)[11:60]
a <- a/sum(a) * length(a)
names(a) <- 11:60
expect_equal(fit$weights[[1]], a)
## wrong specification of weights argument
# weights in a matrix
weight <- matrix(seq(1:150), nrow = 50)
expect_error(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 2, weights = weight))
# weights < 0
expect_error(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 2, weights = rep(-5, 150)))
# weights true/false
expect_error(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 2, weights = TRUE))
})
test_that("daqda breaks out of for-loop if only one class is left", {
expect_that(fit <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 4, k = 10), gives_warning("for at least one class all weights are zero"))
expect_equal(fit$itr, 3)
expect_equal(length(fit$weights), 4)
expect_that(fit <- daqda(Species ~ ., data = iris, wf = "gaussian", k = 3, subset = 1:100), gives_warning("training data from only one group, breaking out of iterative procedure"))
expect_equal(fit$itr, 0)
expect_equal(length(fit$weights), 1)
})
#sapply(fit$weights, function(x) return(list(sum(x[1:50]), sum(x[51:100]), sum(x[101:150]))))
test_that("daqda: subsetting works", {
data(iris)
# formula, data
expect_that(fit1 <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 2, subset = 1:80), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(Species ~ ., data = iris[1:80,], wf = "gaussian", bw = 2), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(1,80)
names(a) <- 1:80
expect_equal(fit1$weights[[1]], a)
# formula, data, weights
expect_that(fit1 <- daqda(Species ~ ., data = iris, weights = rep(1:3, each = 50), wf = "gaussian", bw = 2, subset = 1:80), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(Species ~ ., data = iris[1:80,], weights = rep(1:3, each = 50)[1:80], wf = "gaussian", bw = 2), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(80, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
b <- rep(1:3, each = 50)[1:80]
b <- b/sum(b) * length(b)
names(b) <- 1:80
expect_equal(fit1$weights[[1]], b)
# x, grouping
expect_that(fit1 <- daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 2, subset = 1:80), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(grouping = iris$Species[1:80], x = iris[1:80,-5], wf = "gaussian", bw = 2), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(1,80)
names(a) <- 1:80
expect_equal(fit1$weights[[1]], a)
# x, grouping, weights
expect_that(fit1 <- daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 2, weights = rep(1:3, each = 50), subset = 1:80), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(grouping = iris$Species[1:80], x = iris[1:80,-5], wf = "gaussian", bw = 2, weights = rep(1:3, each = 50)[1:80]), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(80, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
b <- rep(1:3, each = 50)[1:80]
b <- b/sum(b) * length(b)
names(b) <- 1:80
expect_equal(fit1$weights[[1]], b)
# wrong specification of subset argument
expect_error(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = iris[1:10,]))
expect_error(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = FALSE))
expect_error(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = 0))
expect_error(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = -10:50))
})
test_that("daqda: NA handling works correctly", {
### NA in x
data(iris)
irisna <- iris
irisna[1:10, c(1,3)] <- NA
## formula, data
# na.fail
expect_that(daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 6:60, na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 6:60, na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 11:60), gives_warning("group virginica is empty"))
expect_equal(fit1[-c(9, 18)], fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
## formula, data, weights
# na.fail
expect_that(daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 6:60, weights = rep(1:3, 50), na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 6:60, weights = rep(1:3, 50), na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 11:60, weights = rep(1:3, 50)), gives_warning("group virginica is empty"))
expect_equal(fit1[-c(9, 18)], fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
## x, grouping
# na.fail
expect_that(daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 6:60, na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 6:60, na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 11:60), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
## x, grouping, weights
# na.fail
expect_that(daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 6:60, weights = rep(1:3, 50), na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 6:60, weights = rep(1:3, 50), na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 11:60, weights = rep(1:3, 50)), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
### NA in grouping
irisna <- iris
irisna$Species[1:10] <- NA
## formula, data
# na.fail
expect_that(daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 6:60, na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 6:60, na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 11:60), gives_warning("group virginica is empty"))
expect_equal(fit1[-c(9, 18)], fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
## formula, data, weights
# na.fail
expect_that(daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 6:60, weights = rep(1:3, 50), na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 6:60, weights = rep(1:3, 50), na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(Species ~ ., data = irisna, wf = "gaussian", bw = 10, subset = 11:60, weights = rep(1:3, 50)), gives_warning("group virginica is empty"))
expect_equal(fit1[-c(9, 18)], fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
## x, grouping
# na.fail
expect_that(daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 6:60, na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 6:60, na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 11:60), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
## x, grouping, weights
# na.fail
expect_that(daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 6:60, weights = rep(1:3, 50), na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 6:60, weights = rep(1:3, 50), na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(grouping = irisna$Species, x = irisna[,-5], wf = "gaussian", bw = 10, subset = 11:60, weights = rep(1:3, 50)), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
### NA in weights
weights <- rep(1:3,50)
weights[1:10] <- NA
## formula, data, weights
# na.fail
expect_that(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = 6:60, weights = weights, na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = 6:60, weights = weights, na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = 11:60, weights = weights), gives_warning("group virginica is empty"))
expect_equal(fit1[-c(9, 18)], fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
## x, grouping, weights
# na.fail
expect_that(daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 10, subset = 6:60, weights = weights, na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 10, subset = 6:60, weights = weights, na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 10, subset = 11:60, weights = weights), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
### NA in subset
subset <- 6:60
subset[1:5] <- NA
## formula, data
# na.fail
expect_that(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = subset, na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = subset, na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = 11:60), gives_warning("group virginica is empty"))
expect_equal(fit1[-c(9, 18)], fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
## formula, data, weights
# na.fail
expect_that(daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = subset, weights = rep(1:3, 50), na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = subset, weights = rep(1:3, 50), na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = 11:60, weights = rep(1:3, 50)), gives_warning("group virginica is empty"))
expect_equal(fit1[-c(9, 18)], fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
## x, grouping
# na.fail
expect_that(daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 10, subset = subset, na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 10, subset = subset, na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 10, subset = 11:60), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
## x, grouping, weights
# na.fail
expect_that(daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 10, subset = subset, weights = rep(1:3, 50), na.action = na.fail), throws_error("missing values in object"))
# check if na.omit works correctly
expect_that(fit1 <- daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 10, subset = subset, weights = rep(1:3, 50), na.action = na.omit), gives_warning("group virginica is empty"))
expect_that(fit2 <- daqda(grouping = iris$Species, x = iris[,-5], wf = "gaussian", bw = 10, subset = 11:60, weights = rep(1:3, 50)), gives_warning("group virginica is empty"))
expect_equal(fit1[-9],fit2[-9])
a <- rep(50, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, length), a)
})
test_that("daqda: try all weight functions", {
fit1 <- daqda(formula = Species ~ ., data = iris, wf = "gaussian", bw = 0.5)
fit2 <- daqda(formula = Species ~ ., data = iris, wf = gaussian(0.5))
fit3 <- daqda(x = iris[,-5], grouping = iris$Species, wf = "gaussian", bw = 0.5)
fit4 <- daqda(x = iris[,-5], grouping = iris$Species, wf = gaussian(0.5))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit3[-9], fit4[-9])
expect_equal(fit2[c(1:8,10:15)], fit4[c(1:8,10:15)])
expect_that(fit1 <- daqda(formula = Species ~ ., data = iris, wf = "gaussian", bw = 0.5, k = 80), gives_warning("for at least one class all weights are zero"))
expect_that(fit2 <- daqda(formula = Species ~ ., data = iris, wf = gaussian(bw = 0.5, k = 80)), gives_warning("for at least one class all weights are zero"))
expect_that(fit3 <- daqda(x = iris[,-5], grouping = iris$Species, wf = "gaussian", bw = 0.5, k = 80), gives_warning("for at least one class all weights are zero"))
expect_that(fit4 <- daqda(x = iris[,-5], grouping = iris$Species, wf = gaussian(0.5, 80)), gives_warning("for at least one class all weights are zero"))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit3[-9], fit4[-9])
expect_equal(fit2[c(1:8,10:15)], fit4[c(1:8,10:15)])
a <- rep(80, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
fit1 <- daqda(formula = Species ~ ., data = iris, wf = "epanechnikov", bw = 5)
fit2 <- daqda(formula = Species ~ ., data = iris, wf = epanechnikov(bw = 5))
fit3 <- daqda(x = iris[,-5], grouping = iris$Species, wf = "epanechnikov", bw = 5)
fit4 <- daqda(x = iris[,-5], grouping = iris$Species, wf = epanechnikov(5))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit3[-9], fit4[-9])
expect_equal(fit2[c(1:8,10:15)], fit4[c(1:8,10:15)])
a <- rep(150, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
expect_that(fit1 <- daqda(formula = Species ~ ., data = iris, wf = "rectangular", bw = 5, k = 80), gives_warning("for at least one class all weights are zero"))
expect_that(fit2 <- daqda(formula = Species ~ ., data = iris, wf = rectangular(bw = 5, k = 80)), gives_warning("for at least one class all weights are zero"))
expect_that(fit3 <- daqda(x = iris[,-5], grouping = iris$Species, wf = "rectangular", bw = 5, k = 80), gives_warning("for at least one class all weights are zero"))
expect_that(fit4 <- daqda(x = iris[,-5], grouping = iris$Species, wf = rectangular(5, 80)), gives_warning("for at least one class all weights are zero"))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit3[-9], fit4[-9])
expect_equal(fit2[c(1:8,10:15)], fit4[c(1:8,10:15)])
a <- rep(80, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
fit1 <- daqda(formula = Species ~ ., data = iris, wf = "triangular", bw = 5)
fit2 <- daqda(formula = Species ~ ., data = iris, wf = triangular(5))
fit3 <- daqda(x = iris[,-5], grouping = iris$Species, wf = "triangular", bw = 5)
fit4 <- daqda(x = iris[,-5], grouping = iris$Species, wf = triangular(5))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit3[-9], fit4[-9])
expect_equal(fit2[c(1:8,10:15)], fit4[c(1:8,10:15)])
a <- rep(150, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
expect_that(fit1 <- daqda(formula = Species ~ ., data = iris, wf = "biweight", bw = 5, k = 80), gives_warning("for at least one class all weights are zero"))
expect_that(fit2 <- daqda(formula = Species ~ ., data = iris, wf = biweight(5, k = 80)), gives_warning("for at least one class all weights are zero"))
expect_that(fit3 <- daqda(x = iris[,-5], grouping = iris$Species, wf = "biweight", bw = 5, k = 80), gives_warning("for at least one class all weights are zero"))
expect_that(fit4 <- daqda(x = iris[,-5], grouping = iris$Species, wf = biweight(5, 80)), gives_warning("for at least one class all weights are zero"))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit3[-9], fit4[-9])
expect_equal(fit2[c(1:8,10:15)], fit4[c(1:8,10:15)])
a <- rep(80, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
fit1 <- daqda(formula = Species ~ ., data = iris, wf = "optcosine", bw = 5)
fit2 <- daqda(formula = Species ~ ., data = iris, wf = optcosine(5))
fit3 <- daqda(x = iris[,-5], grouping = iris$Species, wf = "optcosine", bw = 5)
fit4 <- daqda(x = iris[,-5], grouping = iris$Species, wf = optcosine(5))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit3[-9], fit4[-9])
expect_equal(fit2[c(1:8,10:15)], fit4[c(1:8,10:15)])
a <- rep(150, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
expect_that(fit1 <- daqda(formula = Species ~ ., data = iris, wf = "cosine", bw = 5, k = 80), gives_warning("for at least one class all weights are zero"))
expect_that(fit2 <- daqda(formula = Species ~ ., data = iris, wf = cosine(5, k = 80)), gives_warning("for at least one class all weights are zero"))
expect_that(fit3 <- daqda(x = iris[,-5], grouping = iris$Species, wf = "cosine", bw = 5, k = 80), gives_warning("for at least one class all weights are zero"))
expect_that(fit4 <- daqda(x = iris[,-5], grouping = iris$Species, wf = cosine(5, 80)), gives_warning("for at least one class all weights are zero"))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit3[-9], fit4[-9])
expect_equal(fit2[c(1:8,10:15)], fit4[c(1:8,10:15)])
a <- rep(80, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
})
test_that("daqda: local solution with rectangular window function and large bw and global solution coincide", {
fit1 <- wqda(formula = Species ~ ., data = iris)
fit2 <- daqda(formula = Species ~ ., data = iris, wf = rectangular(20))
expect_equal(fit1[-c(7,9)], fit2[-c(7,9:15)])
expect_equal(fit1$weights, fit2$weights[[1]])
})
test_that("daqda: arguments related to weighting misspecified", {
# bw, k not required
expect_that(fit1 <- daqda(Species ~ ., data = iris, wf = gaussian(0.5), k = 30, bw = 0.5), gives_warning(c("argument 'k' is ignored", "argument 'bw' is ignored")))
fit2 <- daqda(Species ~ ., data = iris, wf = gaussian(0.5))
expect_equal(fit1[-9], fit2[-9])
expect_that(fit1 <- daqda(Species ~ ., data = iris, wf = gaussian(0.5), bw = 0.5), gives_warning("argument 'bw' is ignored"))
fit2 <- daqda(Species ~ ., data = iris, wf = gaussian(0.5))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit1$k, NULL)
expect_equal(fit1$nn.only, NULL)
expect_equal(fit1$bw, 0.5)
expect_equal(fit1$adaptive, FALSE)
expect_that(fit1 <- daqda(Species ~ ., data = iris, wf = function(x) exp(-x), bw = 0.5, k = 30), gives_warning(c("argument 'k' is ignored", "argument 'bw' is ignored")))
expect_that(fit2 <- daqda(Species ~ ., data = iris, wf = function(x) exp(-x), k = 30), gives_warning("argument 'k' is ignored"))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit1$k, NULL)
expect_equal(fit1$nn.only, NULL)
expect_equal(fit1$bw, NULL)
expect_equal(fit1$adaptive, NULL)
expect_that(fit1 <- daqda(Species ~ ., data = iris, wf = function(x) exp(-x), bw = 0.5), gives_warning("argument 'bw' is ignored"))
fit2 <- daqda(Species ~ ., data = iris, wf = function(x) exp(-x))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit1$k, NULL)
expect_equal(fit1$nn.only, NULL)
expect_equal(fit1$bw, NULL)
expect_equal(fit1$adaptive, NULL)
# missing quotes
expect_error(daqda(formula = Species ~ ., data = iris, wf = gaussian)) ## error because length(weights) and nrow(x) are different
# bw, k missing
expect_that(daqda(formula = Species ~ ., data = iris, wf = gaussian()), throws_error("either 'bw' or 'k' have to be specified"))
expect_that(daqda(formula = Species ~ ., data = iris, wf = gaussian(), k = 10), throws_error("either 'bw' or 'k' have to be specified"))
expect_that(daqda(Species ~ ., data = iris), throws_error("either 'bw' or 'k' have to be specified"))
# bw < 0
expect_that(daqda(formula = Species ~ ., data = iris, wf = "gaussian", bw = -5), throws_error("'bw' must be positive"))
expect_that(daqda(formula = Species ~ ., data = iris, wf = "cosine", k = 10, bw = -50), throws_error("'bw' must be positive"))
# bw vector
expect_that(daqda(formula = Species ~., data = iris, wf = "gaussian", bw = rep(1, nrow(iris))), gives_warning("only first element of 'bw' used"))
# k < 0
expect_that(daqda(formula = Species ~ ., data = iris, wf = "gaussian", k =-7, bw = 50), throws_error("'k' must be positive"))
# k too small
#expect_error(daqda(formula = Species ~ ., data = iris, wf = "gaussian", k = 5, bw = 0.005))
# k too large
expect_that(daqda(formula = Species ~ ., data = iris, k = 250, wf = "gaussian", bw = 50), throws_error("'k' is larger than 'n'"))
# k vector
expect_that(daqda(formula = Species ~., data = iris, wf = "gaussian", k = rep(50, nrow(iris))), gives_warning("only first element of 'k' used"))
})
test_that("daqda: weighting schemes work", {
## wf with finite support
# fixed bw
fit1 <- daqda(formula = Species ~ ., data = iris, wf = "rectangular", bw = 5)
fit2 <- daqda(formula = Species ~ ., data = iris, wf = rectangular(bw = 5))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit1$bw, 5)
expect_equal(fit1$k, NULL)
expect_equal(fit1$nn.only, NULL)
expect_true(!fit1$adaptive)
# adaptive bw, only knn
expect_that(fit1 <- daqda(formula = Species ~ ., data = iris, wf = "rectangular", k = 50), gives_warning("for at least one class all weights are zero"))
expect_that(fit2 <- daqda(formula = Species ~ ., data = iris, wf = rectangular(k = 50)), gives_warning("for at least one class all weights are zero"))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit1$bw, NULL)
expect_equal(fit1$k, 50)
expect_equal(fit1$bw, NULL)
expect_true(fit1$nn.only)
expect_true(fit1$adaptive)
a <- rep(50, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
# fixed bw, only knn
expect_that(fit1 <- daqda(formula = Species ~ ., data = iris, wf = "rectangular", bw = 5, k = 80), gives_warning("for at least one class all weights are zero"))
expect_that(fit2 <- daqda(formula = Species ~ ., data = iris, wf = rectangular(bw = 5, k = 80)), gives_warning("for at least one class all weights are zero"))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit1$bw, 5)
expect_equal(fit1$k, 80)
expect_true(fit1$nn.only)
expect_true(!fit1$adaptive)
a <- rep(80, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
# nn.only not needed
expect_that(daqda(formula = Species ~ ., data = iris, wf = "rectangular", bw = 5, nn.only = TRUE), gives_warning("argument 'nn.only' is ignored"))
# nn.only has to be TRUE if bw and k are both given
expect_that(daqda(formula = Species ~ ., data = iris, wf = "rectangular", bw = 5, k = 50, nn.only = FALSE), throws_error("if 'bw' and 'k' are given argument 'nn.only' must be TRUE"))
## wf with infinite support
# fixed bw
fit1 <- daqda(formula = Species ~ ., data = iris, wf = "gaussian", bw = 0.5)
fit2 <- daqda(formula = Species ~ ., data = iris, wf = gaussian(bw = 0.5))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit1$bw, 0.5)
expect_equal(fit1$k, NULL)
expect_equal(fit1$nn.only, NULL)
expect_true(!fit1$adaptive)
a <- rep(150, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, function(x) sum(x > 0)), a)
# adaptive bw, only knn
expect_that(fit1 <- daqda(formula = Species ~ ., data = iris, wf = "gaussian", k = 50), gives_warning("for at least one class all weights are zero"))
expect_that(fit2 <- daqda(formula = Species ~ ., data = iris, wf = gaussian(k = 50)), gives_warning("for at least one class all weights are zero"))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit1$bw, NULL)
expect_equal(fit1$k, 50)
expect_equal(fit1$nn.only, TRUE)
expect_true(fit1$adaptive)
a <- rep(50, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
# adaptive bw, all obs
fit1 <- daqda(formula = Species ~ ., data = iris, wf = "gaussian", k = 50, nn.only = FALSE)
fit2 <- daqda(formula = Species ~ ., data = iris, wf = gaussian(k = 50, nn.only = FALSE))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit1$bw, NULL)
expect_equal(fit1$k, 50)
expect_equal(fit1$nn.only, FALSE)
expect_true(fit1$adaptive)
a <- rep(150, 4)
names(a) <- 0:3
expect_equal(sapply(fit1$weights, function(x) sum(x > 0)), a)
# fixed bw, only knn
expect_that(fit1 <- daqda(formula = Species ~ ., data = iris, wf = "gaussian", bw = 1, k = 50), gives_warning("for at least one class all weights are zero"))
expect_that(fit2 <- daqda(formula = Species ~ ., data = iris, wf = gaussian(bw = 1, k = 50)), gives_warning("for at least one class all weights are zero"))
expect_equal(fit1[-9], fit2[-9])
expect_equal(fit1$bw, 1)
expect_equal(fit1$k, 50)
expect_equal(fit1$nn.only, TRUE)
expect_true(!fit1$adaptive)
a <- rep(50, 3)
names(a) <- 1:3
expect_equal(sapply(fit1$weights[2:4], function(x) sum(x > 0)), a)
# nn.only has to be TRUE if bw and k are both given
expect_that(daqda(formula = Species ~ ., data = iris, wf = "gaussian", bw = 1, k = 50, nn.only = FALSE), throws_error("if 'bw' and 'k' are given argument 'nn.only' must be TRUE"))
})
#=================================================================================================================
context("predict.daqda")
test_that("predict.daqda works correctly with formula and data.frame interface and with missing newdata", {
data(iris)
ran <- sample(1:150,100)
## formula, data
fit <- daqda(formula = Species ~ ., data = iris, wf = "gaussian", bw = 2, subset = ran)
pred <- predict(fit)
expect_equal(rownames(pred$posterior), rownames(iris)[ran])
expect_equal(names(pred$class), rownames(iris)[ran])
## formula, data, newdata
fit <- daqda(formula = Species ~ ., data = iris, wf = "gaussian", bw = 2, subset = ran)
pred <- predict(fit, newdata = iris[-ran,])
expect_equal(rownames(pred$posterior), rownames(iris)[-ran])
expect_equal(names(pred$class), rownames(iris)[-ran])
## grouping, x
fit <- daqda(x = iris[,-5], grouping = iris$Species, wf = "gaussian", bw = 2, subset = ran)
pred <- predict(fit)
expect_equal(rownames(pred$posterior), rownames(iris)[ran])
expect_equal(names(pred$class), rownames(iris)[ran])
## grouping, x, newdata
fit <- daqda(x = iris[,-5], grouping = iris$Species, wf = "gaussian", bw = 2, subset = ran)
pred <- predict(fit, newdata = iris[-ran,-5])
expect_equal(rownames(pred$posterior), rownames(iris)[-ran])
expect_equal(names(pred$class), rownames(iris)[-ran])
})
test_that("predict.daqda: retrieving training data works", {
data(iris)
## no subset
# formula, data
fit <- daqda(formula = Species ~ ., data = iris, wf = "gaussian", bw = 2)
pred1 <- predict(fit)
pred2 <- predict(fit, newdata = iris)
expect_equal(pred1, pred2)
# y, x
fit <- daqda(x = iris[,-5], grouping = iris$Species, wf = "gaussian", bw = 2)
pred1 <- predict(fit)
pred2 <- predict(fit, newdata = iris[,-5])
expect_equal(pred1, pred2)
## subset
ran <- sample(1:150,100)
# formula, data
fit <- daqda(formula = Species ~ ., data = iris, wf = "gaussian", bw = 2, subset = ran)
pred1 <- predict(fit)
pred2 <- predict(fit, newdata = iris[ran,])
expect_equal(pred1, pred2)
# y, x
fit <- daqda(x = iris[,-5], grouping = iris$Species, wf = "gaussian", bw = 2, subset = ran)
pred1 <- predict(fit)
pred2 <- predict(fit, newdata = iris[ran,-5])
expect_equal(pred1, pred2)
})
test_that("predict.daqda works with missing classes in the training data", {
data(iris)
ran <- sample(1:150,100)
expect_that(fit <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 10, subset = 1:100), gives_warning("group virginica is empty"))
expect_equal(length(fit$prior), 2)
a <- rep(50, 2)
names(a) <- names(fit$counts)
expect_equal(fit$counts, a)
expect_equal(fit$N, 100)
expect_equal(nrow(fit$means), 2)
pred <- predict(fit, newdata = iris[-ran,])
expect_equal(nlevels(pred$class), 3)
expect_equal(ncol(pred$posterior), 2)
# a <- rep(0,50)
# names(a) <- rownames(pred$posterior)
# expect_equal(pred$posterior[,3], a)
})
test_that("predict.daqda works with one single predictor variable", {
data(iris)
ran <- sample(1:150,100)
fit <- daqda(Species ~ Petal.Width, data = iris, wf = "gaussian", bw = 2, subset = ran)
expect_equal(ncol(fit$means), 1)
expect_equal(dim(fit$covs[[1]]), rep(1, 2))
pred <- predict(fit, newdata = iris[-ran,])
})
test_that("predict.daqda works with one single test observation", {
data(iris)
ran <- sample(1:150,100)
fit <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 2, subset = ran)
pred <- predict(fit, newdata = iris[5,])
expect_equal(length(pred$class), 1)
expect_equal(dim(pred$posterior), c(1, 3))
a <- factor("setosa", levels = c("setosa", "versicolor", "virginica"))
names(a) = "5"
expect_equal(pred$class, a)
pred <- predict(fit, newdata = iris[58,])
expect_equal(length(pred$class), 1)
expect_equal(dim(pred$posterior), c(1, 3))
a <- factor("versicolor", levels = c("setosa", "versicolor", "virginica"))
names(a) = "58"
expect_equal(pred$class, a)
})
test_that("predict.daqda works with one single predictor variable and one single test observation", {
data(iris)
ran <- sample(1:150,100)
fit <- daqda(Species ~ Petal.Width, data = iris, wf = "gaussian", bw = 2, subset = ran)
expect_equal(ncol(fit$means), 1)
expect_equal(dim(fit$covs[[1]]), rep(1, 2))
pred <- predict(fit, newdata = iris[5,])
expect_equal(length(pred$class), 1)
expect_equal(dim(pred$posterior), c(1, 3))
})
test_that("predict.daqda: NA handling in newdata works", {
data(iris)
ran <- sample(1:150,100)
irisna <- iris
irisna[1:17,c(1,3)] <- NA
fit <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 50, subset = ran)
expect_warning(pred <- predict(fit, newdata = irisna))
expect_equal(all(is.na(pred$class[1:17])), TRUE)
expect_equal(all(is.na(pred$posterior[1:17,])), TRUE)
})
test_that("predict.daqda: misspecified arguments", {
data(iris)
ran <- sample(1:150,100)
fit <- daqda(Species ~ ., data = iris, wf = "gaussian", bw = 2, subset = ran)
# errors in newdata
expect_error(predict(fit, newdata = TRUE))
expect_error(predict(fit, newdata = -50:50))
# errors in prior
expect_error(predict(fit, prior = rep(2,length(levels(iris$Species))), newdata = iris[-ran,]))
expect_error(predict(fit, prior = TRUE, newdata = iris[-ran,]))
expect_error(predict(fit, prior = 0.6, newdata = iris[-ran,]))
})
#=================================================================================================================
# mod <- daqda(Species ~ Sepal.Length + Sepal.Width, data = iris, wf = "gaussian", bw = 0.5)
# x1 <- seq(4,8,0.05)
# x2 <- seq(2,5,0.05)
# plot(iris[,1], iris[,2], col = iris$Species, cex = mod$weights[[1]])
# plot(iris[,1], iris[,2], col = iris$Species, cex = mod$weights[[2]])
# plot(iris[,1], iris[,2], col = iris$Species, cex = mod$weights[[3]])
# plot(iris[,1], iris[,2], col = iris$Species, cex = mod$weights[[4]])
# legend("bottomright", legend = levels(iris$Species), col = as.numeric(unique(iris$Species)), lty = 1)
# iris.grid <- expand.grid(Sepal.Length = x1, Sepal.Width = x2)
# pred <- predict(mod, newdata = iris.grid)
# prob.grid <- pred$posterior
# contour(x1, x2, matrix(prob.grid[,1], length(x1)), add = TRUE, label = colnames(prob.grid)[1])
# contour(x1, x2, matrix(prob.grid[,2], length(x1)), add = TRUE, label = colnames(prob.grid)[2])
# contour(x1, x2, matrix(prob.grid[,3], length(x1)), add = TRUE, label = colnames(prob.grid)[3])
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