# Functional Rarity Indices
# General data -----------------------------------------------------------------
# Empty Matrix
empty_mat = matrix(rep(0, 4), ncol = 2)
rownames(empty_mat) = paste0("s", 1:2)
colnames(empty_mat) = letters[1:2]
# Valid Presence-Absence Matrix
valid_mat = matrix(c(1, 0, 0, 0,
rep(1, 3), 0,
0, rep(1, 3),
0, 1, 0, 1),
ncol = 4)
dimnames(valid_mat) = list("site" = paste0("s", 1:4), "species" = letters[1:4])
# Community Table
log_mat = (valid_mat == 1)
suppressWarnings({
com_df = lapply(rownames(log_mat), function(x) {
species = colnames(valid_mat)[log_mat[x, ]]
data.frame(site = rep(x, length(species)), species = species,
stringsAsFactors = FALSE)
})
com_df = do.call(rbind.data.frame, com_df)
})
# Traits df
trait_df = data.frame(tr1 = c("A", "A", "B", "B"), tr2 = c(rep(0, 3), 1),
tr3 = seq(4, 16, 4), stringsAsFactors = TRUE)
rownames(trait_df) = letters[1:4]
# Distance Matrix
dist_mat = compute_dist_matrix(trait_df)
# Distinctiveness data --------------------------------------------------------
# Final distinctiveness table for all communities
correct_dist = data.frame(
site = c("s1", "s1", "s2", "s2", "s2", "s3", "s3", "s4", "s4"),
species = c("a", "b", "b", "c", "d","b", "c", "c", "d"),
Di = c(1/9, 1/9, 6/9, 4/9, 6/9, 4/9, 4/9, 4/9, 4/9),
stringsAsFactors = FALSE
)
correct_dist_mat = table(correct_dist$site, correct_dist$species)
correct_dist_mat[which(correct_dist_mat == 0)] = NA_real_
correct_dist_mat[which(correct_dist_mat == 1)] = correct_dist$Di
correct_dist_mat[2, 3] = 4/9
correct_dist_mat[2, 4] = 6/9
names(dimnames(correct_dist_mat)) = c("site", "species")
# Distinctiveness with abundances
correct_dist_ab = correct_dist
# Undefined Distinctiveness site-species matrix
small_mat = matrix(c(1, 0, 0, 1), nrow = 2)
colnames(small_mat) = letters[1:2]
rownames(small_mat) = c("s1", "s2")
small_df = matrix_to_tidy(small_mat)
# Distinctiveness final data.frame
undef_dist = data.frame(site = c("s1", "s2"), species = c("a", "b"),
Di = rep(NaN, 2))
# Final distinctiveness matrix
undef_dist_mat = table(undef_dist$site, undef_dist$species)
undef_dist_mat[which(undef_dist_mat == 0)] = NA_real_
undef_dist_mat[which(undef_dist_mat == 1)] = undef_dist$Di
suppressWarnings({
suppressMessages({
undef_test = distinctiveness(small_mat, dist_mat)
})
})
# Scarcity data ----------------------------------------------------------------
com_df_ex = cbind(com_df, data.frame(abund = c(0.3, 0.7, 0.2, 0.6,
0.2, 0.5, 0.5, 0.2,
0.8)))
abund_mat = valid_mat
abund_mat[abund_mat == 1] = com_df_ex[order(com_df_ex$species), "abund"]
scarcity_mat = apply(abund_mat, 1, function(x) {
ifelse(x != 0, exp(-sum(x != 0)*log(2)*x), NA)
})
scarcity_mat = t(scarcity_mat)
com_scarcity = aggregate(species ~ site, data = com_df_ex,
function(x) sum(x != 0))
colnames(com_scarcity)[2] = "N_sp"
com_scarcity = merge(com_df_ex, com_scarcity, by = "site")
com_scarcity$Si = exp(-com_scarcity$N_sp*log(2)*com_scarcity$abund)
com_scarcity = com_scarcity[, c(1:3, 5)]
rownames(com_scarcity) = NULL
abund_com = matrix_to_stack(abund_mat, value_col = "abund", row_to_col = "site",
col_to_col = "species")
abund_com = subset(abund_com, abund > 0 & site == "s3")
abund_com$Di = c(4/9, 4/9)
# Tests for Combined function --------------------------------------------------
test_that("Funrar runs smoothly", {
expect_silent(funrar(valid_mat, dist_mat))
expect_silent(funrar_stack(com_df_ex, "species", "site", "abund", dist_mat))
expect_equal(length(funrar(valid_mat, dist_mat)), 3)
expect_equal(length(funrar(abund_mat, dist_mat, rel_abund = TRUE)), 4)
expect_equal(length(funrar_stack(com_df, "species", "site",
dist_matrix = dist_mat)), 3)
expect_equal(length(funrar_stack(com_df_ex, "species", "site", "abund",
dist_mat)), 4)
})
test_that("funrar functions warns if object does not have relative abundances",
{
abs_mat = valid_mat
abs_mat[[1]] = 4
abs_df = matrix_to_stack(abs_mat)
expect_warning(scarcity(abs_mat),
"^Provided object may not contain relative abund.*")
})
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