test_that("Offset works", { skip_on_cran() skip_on_ci() pcod$offset <- rnorm(nrow(pcod)) fit2 <- sdmTMB(density ~ 1, offset = pcod$offset, data = pcod, spatial = "off", family = tweedie() ) expect_error(fit2 <- sdmTMB(density ~ 1, offset = year, data = pcod, spatial = "off", family = tweedie() ), regexp = "year") }) test_that("Offset matches glmmTMB", { skip_on_cran() skip_on_ci() set.seed(1) pcod$offset <- rnorm(nrow(pcod)) pcod_pos <- subset(pcod, density > 0) fit1 <- glmmTMB::glmmTMB(density ~ 1, data = pcod_pos, family = Gamma(link = "log") ) fit1_off <- glmmTMB::glmmTMB(density ~ 1 + offset(offset), data = pcod_pos, family = Gamma(link = "log") ) pcod_pos$offset2 <- log(1) fit1_off0 <- glmmTMB::glmmTMB(density ~ 1 + offset(offset2), data = pcod_pos, family = Gamma(link = "log") ) fit2 <- sdmTMB(density ~ 1, data = pcod_pos, spatial = "off", family = Gamma(link = "log") ) fit2_off <- sdmTMB(density ~ 1, offset = pcod_pos$offset, data = pcod_pos, spatial = "off", family = Gamma(link = "log") ) fit2_off0 <- sdmTMB(density ~ 1, offset = pcod_pos$offset2, data = pcod_pos, spatial = "off", family = Gamma(link = "log") ) b1 <- summary(fit1)$coefficients$cond[1] b1_offset <- summary(fit1_off)$coefficients$cond[1] b1_offset0 <- summary(fit1_off0)$coefficients$cond[1] b2 <- tidy(fit2)$estimate[1] b2_offset <- tidy(fit2_off)$estimate[1] b2_offset0 <- tidy(fit2_off0)$estimate[1] # test that glmmTMB and sdmTMB agree expect_equal(b2, b1, tolerance = 1e-4) expect_equal(b2_offset, b1_offset, tolerance = 1e-4) expect_equal(b2_offset0, b1_offset0, tolerance = 1e-4) # the offset of 0 is same as no offset expect_equal(b2_offset0, b2, tolerance = 1e-8) # the offset is doing something expect_false(((b2_offset - b2) == 0)) }) test_that("Offset works with extra_time", { skip_on_cran() skip_on_ci() set.seed(1) pcod$offset <- rnorm(nrow(pcod)) mesh <- make_mesh(pcod, xy_cols = c("X", "Y"), n_knots = 80) fit <- sdmTMB(density ~ 1, offset = pcod$offset, mesh = mesh, time = "year", extra_time = c(2006L, 2008L, 2010L, 2012L, 2014L, 2016L), data = pcod, spatial = "off", spatiotemporal = "ar1", family = tweedie() ) expect_true(inherits(fit, "sdmTMB")) b <- tidy(fit, "ran_pars") expect_equal(round(b$estimate[b$term == "rho"], 2), 0.91) }) test_that("Offset prediction matches glm()", { skip_on_cran() skip_if_not_installed("glmmTMB") set.seed(1) dat <- pcod[pcod$density > 0,] dat$.offset <- rnorm(nrow(dat)) fit <- sdmTMB( present ~ 1, offset = dat$.offset, data = dat, spatial = "off", family = Gamma(link = "log") ) fit_glm <- glm( present ~ 1 + offset(.offset), data = dat, family = Gamma(link = "log") ) fit_glmmTMB <- glmmTMB::glmmTMB( present ~ 1 + offset(.offset), data = dat, family = Gamma(link = "log") ) p <- predict(fit) p_glm <- predict(fit_glm) p_glmmTMB <- predict(fit_glmmTMB) expect_equal(p$est, unname(p_glm)) expect_equal(p$est, p_glmmTMB) p_glmmTMB <- predict(fit_glmmTMB, newdata = dat) expect_equal(p$est, unname(p_glm)) expect_equal(p$est, p_glmmTMB) set.seed(1) p <- predict(fit, nsim = 1000, offset = dat$.offset) mu <- apply(p, 1, mean) plot(mu, p_glm) expect_equal(unname(mu), unname(p_glm), tolerance = 0.01) # sdmTMB ignores offset here (but not glm() or glmmTMB()!) # p <- predict(fit, newdata = dat) # p_glmmTMB <- predict(fit_glmmTMB, newdata = dat) # expect_equal(p$est, unname(p_glmmTMB)) }) # # # # offset/prediction setting checks: # # pos <- dogfish[dogfish$catch_weight > 0,] # # m1 <- sdmTMB(catch_weight ~ 1, family = Gamma("log"), data = pos, offset = log(pos$area_swept), spatial = "off") # # m2 <- glmmTMB::glmmTMB(catch_weight ~ 1, family = Gamma("log"), data = pos, offset = log(pos$area_swept)) # # m3 <- glm(catch_weight ~ 1, family = Gamma("log"), data = pos, offset = log(pos$area_swept)) # # head(predict(m1, newdata = pos, offset = rep(0, nrow(pos)))$est) # right # head(predict(m1, offset = rep(0, nrow(pos)))$est) # right (was wrong) # # head(predict(m1, offset = log(pos$area_swept))$est) # right # head(predict(m1, newdata = pos, offset = log(pos$area_swept))$est) # right # # head(predict(m1)$est) # right # head(predict(m1, newdata = pos)$est) # right # # head(predict(m1, newdata = pos, offset = rep(0, nrow(pos)), nsim = 2)) # right # head(predict(m1, offset = rep(0, nrow(pos)), nsim = 2)) # right (was wrong) # # head(predict(m1, offset = log(pos$area_swept), nsim = 2)) # right # head(predict(m1, newdata = pos, offset = log(pos$area_swept), nsim = 2)) # right # # head(predict(m1, nsim = 2)) # right # head(predict(m1, newdata = pos, nsim = 2)) # right # # # # m2 <- glmmTMB::glmmTMB(catch_weight ~ 1, family = Gamma("log"), data = pos) # # head(predict(m2)) # # head(predict(m2, newdata = pos)) # # predict(m2, newdata = pos[1:3,,drop=FALSE]) # # # # e1 <- predict(m1, newdata = pos, offset = rep(0, nrow(pos)))$est # # plot(exp(e1), pos$catch_weight) # # mean(exp(e1)) # # mean(pos$catch_weight) # # # # # # e1 <- predict(m1, newdata = pos, offset = log(pos$area_swept))$est # # plot(exp(e1), pos$catch_weight) # # mean(exp(e1)) # # mean(pos$catch_weight) # # # # head(predict(m1, newdata = pos, offset = rep(0, nrow(pos)))$est) # # # # head(predict(m2)) # # head(predict(m2, newdata = pos)) # # # # head(predict(m2)) # # head(predict(m2, newdata = pos)) # # head(predict(m3)) # # # # expect_equal(p7[,1,drop=TRUE], p6[,1,drop=TRUE]) # # # # set.seed(1) # # suppressWarnings(p8 <- predict(m, newdata = pcod, nsim = 2L)) # # suppressWarnings(p9 <- predict(m, newdata = pcod, offset = rep(0, nrow(pcod)), nsim = 2L)) # # # # pos <- subset(dogfish, catch_weight > 0) # # # # mm <- glm(catch_weight ~ 1, family = Gamma("log"), data = pos, offset = log(pos$area_swept)) # # mm_s <- sdmTMB(catch_weight ~ 1, family = Gamma("log"), data = pos, offset = log(pos$area_swept), spatial = "off") # # pp1 <- predict(mm) # # pp1_s <- predict(mm_s) # # # # # # # # head(p8) # # head(p9)