### R code from vignette source 'residual-shadings.Rnw' ################################################### ### code chunk number 1: preliminaries ################################################### library("grid") library("vcd") rseed <- 1071 ################################################### ### code chunk number 2: Arthritis-data ################################################### data("Arthritis", package = "vcd") (art <- xtabs(~ Treatment + Improved, data = Arthritis, subset = Sex == "Female")) ################################################### ### code chunk number 3: Arthritis-classic (eval = FALSE) ################################################### ## mosaic(art) ## assoc(art) ################################################### ### code chunk number 4: Arthritis-classic1 ################################################### grid.newpage() pushViewport(viewport(layout = grid.layout(1, 2))) pushViewport(viewport(layout.pos.col=1, layout.pos.row=1)) mosaic(art, newpage = FALSE, margins = c(2.5, 4, 2.5, 3)) popViewport() pushViewport(viewport(layout.pos.col=2, layout.pos.row=1)) assoc(art, newpage = FALSE, margins = c(5, 2, 5, 4)) popViewport(2) ################################################### ### code chunk number 5: Arthritis-max ################################################### set.seed(rseed) (art_max <- coindep_test(art, n = 5000)) ################################################### ### code chunk number 6: Arthritis-sumsq ################################################### ss <- function(x) sum(x^2) set.seed(rseed) coindep_test(art, n = 5000, indepfun = ss) ################################################### ### code chunk number 7: Arthritis-extended (eval = FALSE) ################################################### ## mosaic(art, gp = shading_Friendly(lty = 1, eps = NULL)) ## mosaic(art, gp = shading_hsv, gp_args = list( ## interpolate = art_max$qdist(c(0.9, 0.99)), p.value = art_max$p.value)) ## set.seed(rseed) ## mosaic(art, gp = shading_max, gp_args = list(n = 5000)) ################################################### ### code chunk number 8: pistonrings-data ################################################### data("pistonrings", package = "HSAUR3") pistonrings ################################################### ### code chunk number 9: shadings ################################################### mymar <- c(1.5, 0.5, 0.5, 2.5) grid.newpage() pushViewport(viewport(layout = grid.layout(2, 3))) pushViewport(viewport(layout.pos.row = 1, layout.pos.col = 1)) mosaic(art, margins = mymar, newpage = FALSE, gp = shading_Friendly(lty = 1, eps = NULL)) popViewport() pushViewport(viewport(layout.pos.row = 1, layout.pos.col = 2)) mosaic(art, gp = shading_hsv, margins = mymar, newpage = FALSE, gp_args = list(interpolate = art_max$qdist(c(0.9, 0.99)), p.value = art_max$p.value)) popViewport() pushViewport(viewport(layout.pos.row = 1, layout.pos.col = 3)) set.seed(rseed) mosaic(art, gp = shading_max, margins = mymar, newpage = FALSE, gp_args = list(n = 5000)) popViewport() pushViewport(viewport(layout.pos.row = 2, layout.pos.col = 1)) mosaic(pistonrings, margins = mymar, newpage = FALSE, gp = shading_Friendly(lty = 1, eps = NULL, interpolate = c(1, 1.5))) popViewport() pushViewport(viewport(layout.pos.row = 2, layout.pos.col = 2)) mosaic(pistonrings, gp = shading_hsv, margins = mymar, newpage = FALSE, gp_args = list(p.value = 0.069, interpolate = c(1, 1.5))) popViewport() pushViewport(viewport(layout.pos.row = 2, layout.pos.col = 3)) mosaic(pistonrings, gp = shading_hcl, margins = mymar, newpage = FALSE, gp_args = list(p.value = 0.069, interpolate = c(1, 1.5))) popViewport(2) ################################################### ### code chunk number 10: pistonrings-inference ################################################### set.seed(rseed) coindep_test(pistonrings, n = 5000) set.seed(rseed) (pring_ss <- coindep_test(pistonrings, n = 5000, indepfun = ss)) ################################################### ### code chunk number 11: pistonrings-plot (eval = FALSE) ################################################### ## mosaic(pistonrings, gp = shading_Friendly(lty = 1, eps = NULL, interpolate = c(1, 1.5))) ## mosaic(pistonrings, gp = shading_hsv, gp_args = list(p.value = pring_ss$p.value, interpolate = c(1, 1.5))) ## mosaic(pistonrings, gp = shading_hcl, gp_args = list(p.value = pring_ss$p.value, interpolate = c(1, 1.5))) ################################################### ### code chunk number 12: alzheimer-data ################################################### data("alzheimer", package = "coin") alz <- xtabs(~ smoking + disease + gender, data = alzheimer) alz ################################################### ### code chunk number 13: alzheimer-plot1 ################################################### set.seed(rseed) cotabplot(~ smoking + disease | gender, data = alz, panel = cotab_coindep, panel_args = list(n = 5000)) ################################################### ### code chunk number 14: alzheimer-inference ################################################### set.seed(rseed) coindep_test(alz, 3, n = 5000) set.seed(rseed) coindep_test(alz, 3, n = 5000, indepfun = ss) set.seed(rseed) coindep_test(alz, 3, n = 5000, indepfun = ss, aggfun = sum) ################################################### ### code chunk number 15: alzheimer-plot (eval = FALSE) ################################################### ## set.seed(rseed) ## cotabplot(~ smoking + disease | gender, data = alz, panel = cotab_coindep, panel_args = list(n = 5000)) ################################################### ### code chunk number 16: Punishment-data ################################################### data("Punishment", package = "vcd") pun <- xtabs(Freq ~ memory + attitude + age + education, data = Punishment) ftable(pun, row.vars = c("age", "education", "memory")) ################################################### ### code chunk number 17: Punishment-assoc1 ################################################### set.seed(rseed) cotabplot(~ memory + attitude | age + education, data = pun, panel = cotab_coindep, n = 5000, type = "assoc", test = "maxchisq", interpolate = 1:2) ################################################### ### code chunk number 18: Punishment-mosaic1 ################################################### set.seed(rseed) cotabplot(~ memory + attitude | age + education, data = pun, panel = cotab_coindep, n = 5000, type = "mosaic", test = "maxchisq", interpolate = 1:2) ################################################### ### code chunk number 19: Punishment-inference ################################################### set.seed(rseed) coindep_test(pun, 3:4, n = 5000) set.seed(rseed) coindep_test(pun, 3:4, n = 5000, indepfun = ss) set.seed(rseed) coindep_test(pun, 3:4, n = 5000, indepfun = ss, aggfun = sum) ################################################### ### code chunk number 20: Punishment-assoc (eval = FALSE) ################################################### ## set.seed(rseed) ## cotabplot(~ memory + attitude | age + education, data = pun, panel = cotab_coindep, ## n = 5000, type = "assoc", test = "maxchisq", interpolate = 1:2) ################################################### ### code chunk number 21: Punishment-mosaic (eval = FALSE) ################################################### ## set.seed(rseed) ## cotabplot(~ memory + attitude | age + education, data = pun, panel = cotab_coindep, ## n = 5000, type = "mosaic", test = "maxchisq", interpolate = 1:2)