R Under development (unstable) (2024-09-25 r87194 ucrt) -- "Unsuffered Consequences" Copyright (C) 2024 The R Foundation for Statistical Computing Platform: x86_64-w64-mingw32/x64 R is free software and comes with ABSOLUTELY NO WARRANTY. You are welcome to redistribute it under certain conditions. Type 'license()' or 'licence()' for distribution details. R is a collaborative project with many contributors. Type 'contributors()' for more information and 'citation()' on how to cite R or R packages in publications. Type 'demo()' for some demos, 'help()' for on-line help, or 'help.start()' for an HTML browser interface to help. Type 'q()' to quit R. > > library("tram") Loading required package: mlt Loading required package: basefun Loading required package: variables Loading required package: mvtnorm > library("sandwich") > set.seed(29) > > chk <- function(x, y, tol = 1e-3) + stopifnot(isTRUE(all.equal(x, y, check.attributes = FALSE, tol = tol))) > > if (require("mlbench")) { + + data("BostonHousing2", package = "mlbench") + + m <- Lm(cmedv ~ nox, data = BostonHousing2) + + d <- predict(as.mlt(m), type = "density") + ll <- sum(log(d)) + chk(c(logLik(m)), ll) + d1 <- predict(as.mlt(m), newdata = BostonHousing2[1:6,], type = "density") + d2 <- diag(predict(as.mlt(m), newdata = BostonHousing2[1:6,-6], q = + BostonHousing2[1:6,6], type = "density")) + chk(d1, d2) + prb <- 1:9 / 10 + q <- predict(as.mlt(m), newdata = BostonHousing2[1:2,-6], prob = prb, + type = "quantile") + p1 <- round(predict(as.mlt(m), newdata = BostonHousing2[1:2,-6], q = q[,1], + type = "distribution")[,1], 2) + p2 <- round(predict(as.mlt(m), newdata = BostonHousing2[1:2,-6], q = q[,2], + type = "distribution")[,2], 2) + chk(p1, prb) + chk(p2, prb) + + m <- Lm(cmedv ~ nox | rm, data = BostonHousing2) + + d <- predict(as.mlt(m), type = "density") + ll <- sum(log(d)) + chk(c(logLik(m)), ll) + d1 <- predict(as.mlt(m), newdata = BostonHousing2[1:6,], type = "density") + d2 <- diag(predict(as.mlt(m), newdata = BostonHousing2[1:6,-6], q = + BostonHousing2[1:6,6], type = "density")) + chk(d1, d2) + prb <- 1:9 / 10 + q <- predict(as.mlt(m), newdata = BostonHousing2[1:2,-6], prob = prb, + type = "quantile") + p1 <- round(predict(as.mlt(m), newdata = BostonHousing2[1:2,-6], q = q[,1], + type = "distribution")[,1], 2) + p2 <- round(predict(as.mlt(m), newdata = BostonHousing2[1:2,-6], q = q[,2], + type = "distribution")[,2], 2) + chk(p1, prb) + chk(p2, prb) + + } Loading required package: mlbench > > if (suppressPackageStartupMessages(require("gamlss"))) { + + N <- 1000 + x1 <- rnorm(N) + x2 <- rnorm(N) + y <- rnorm(N, mean = 2 * x1, sd = 2 * sqrt(exp(.5 * x2))) + d <- data.frame(y = y, x1 = x1, x2 = x2) + + ### shift-scale transformation model + tm <- Lm(y ~ x1 | x2, data = d, scale_shift = TRUE) + + ### same model, via gamlss + gm <- gamlss(y ~ x1, sigma.formula = ~ x2, data = d, family = NO2, trace = FALSE) + chk(logLik(gm), logLik(tm)) + chk(-coef(tm)["scl_x2"], coefAll(gm)[[2]]["x2"]) + + X1 <- model.matrix(~ x1, data = d) + X2 <- model.matrix(~ x2, data = d) + + #### logLik gamlss + glp1 <- X1 %*% coefAll(gm)[[1]] + glp2 <- X2 %*% coefAll(gm)[[2]] + chk(c(logLik(gm)), + sum(dnorm(y, mean = glp1, sd = sqrt(exp(glp2)), log = TRUE))) + + ### shift-scale transformation model + Y <- model.matrix(~ y, data = d) + h0 <- Y %*% coef(as.mlt(tm))[1:2] + cf <- coef(tm) + tlp1 <- X1[,-1,drop = FALSE] %*% cf[-grep("scl", names(cf))] + tlp2 <- X2[,-1,drop = FALSE] %*% cf[grep("scl", names(cf))] + st <- exp(tlp2) + xi <- coef(as.mlt(tm))["y"] + + ### transformation function + chk(c(sqrt(st) * (h0 - tlp1)), tr <- predict(tm, type = "trafo")) + + ### logLik + chk(c(logLik(tm)), + sum(log(1 / sqrt(2 * pi)) + .5 * tlp2 + log(xi) - 1 / 2 * tr^2)) + + ### score function + # score alpha + sa <- sum(-sqrt(st) * tr) + # score xi + sx <- sum(1 / xi - sqrt(st) * tr * y) + # score beta + sb <- sum(sqrt(st) * tr * X1[,-1,drop = FALSE]) + # score gamma + sg <- sum(1 / 2 * (1 - tr^2) * X2[,-1, drop = FALSE]) + + chk(c(sa, sx, sb, sg), -Gradient(tm)) + + ### Hessian + # alpha, alpha + Haa <- sum(-st) + # xi, xi + Hxx <- sum(- xi^(-2) - st * y^2) + # beta, beta + Htm <- crossprod(-st * X1[, -1, drop = FALSE], X1[, -1, drop = FALSE]) + # gamma, gamma + Hgg <- crossprod(-1 / 2 * tr^2 * X2[, -1, drop = FALSE], X2[, -1, drop = FALSE]) + # alpha, xi + Hax <- sum(-st * y) + # alpha, beta + Hab <- colSums(st * X1[, -1, drop = FALSE]) + # alpha, gamma + Hag <- colSums(- sqrt(st) * tr * X2[, -1, drop = FALSE]) + # beta, xi + Hbx <- colSums(st * y * X1[, -1, drop = FALSE]) + # beta, gamma + Hbg <- crossprod(sqrt(st) * tr * X1[, -1, drop = FALSE], X2[, -1, drop = FALSE]) + # xi, gamma + Hxg <- colSums(- sqrt(st) * tr * y * X2[, -1, drop = FALSE]) + H <- diag(c(Haa, Hxx, Htm, Hgg)) + H[1, 2] <- H[2, 1] <- Hax + H[1, 3] <- H[3, 1] <- Hab + H[1, 4] <- H[4, 1] <- Hag + H[2, 3] <- H[3, 2] <- Hbx + H[2, 4] <- H[4, 2] <- Hxg + H[3, 4] <- H[4, 3] <- Hbg + + chk(-H, Hessian(as.mlt(tm))) + + ### scale terms are defined analoguously in Lm and gamlss(NO2) + ### compare z statistics + chk(-coef(tm)["scl_x2"] / sqrt(vcov(tm)["scl_x2", "scl_x2"]), + coefAll(gm)[[2]]["x2"] / sqrt(vcov(gm)["x2", "x2"])) + } > > ### predict > > N <- 10000 > x1 <- runif(N) > x2 <- runif(N) > s <- gl(k <- 11, N/k) > y <- rnorm(N, mean = 2 * x1, sd = sqrt(exp(.5 * x2))) > d <- data.frame(y = y, x1 = x1, x2 = x2, s = s) > > fm <- formula(y ~ s + x1) > m <- Coxph(fm, data = d) > try(a <- predict(m, type = "distribution")) ### works > > sfm <- as.formula(y ~ s | x1) > sm <- Coxph(sfm, data = d) > try(b <- predict(sm, type = "distribution")) ### didn't work > > ### check discrete models > data("wine", package = "ordinal") > m <- Polr(rating ~ temp | contact, data = wine, + optim = mltoptim(spg = list(maxit = 10000, checkGrad = TRUE))) > > ### inference methods & residuals > N <- 1000 > x1 <- runif(N) > x2 <- runif(N) > z <- rnorm(N) > y <- (z + .2 * x1) * sqrt(exp(.5 * x2)) > d <- data.frame(y = y, x1 = x1, x2 = x2, one = 1) > > ### Wald, Score and Likelihood intervals > m2 <- Lm(y ~ x1 | x2, data = d) > ciW <- confint(m2) > ciL <- confint(profile(m2)) > ciS <- rbind(score_test(m2, "x1")$conf, + score_test(m2, "scl_x2")$conf) > > chk(ciW, ciL, tol = 1e-3) > chk(ciW, ciS, tol = 1e-3) > > ### not quite the same! > round(ciW[1,], 3) 2.5 % 97.5 % 0.162 0.592 > round(perm_test(m2, "x1")$conf, 3) [1] 0.166 0.589 attr(,"conf.level") [1] 0.95 attr(,"achieved.conf.level") [1] 0.9501 > > ### check residuals > m0 <- Lm(y ~ 1, data = d) > rs <- c(estfun(as.mlt(m0)) %*% coef(as.mlt(m0))) * .5 > rs2 <- resid(m0, what = "scaling") > chk(rs, rs2) > > ### residuals, nonparametrically > N <- 50 > x1 <- runif(N) > x2 <- runif(N) > z <- rnorm(N) > y <- (z + .2 * x1) * sqrt(exp(.5 * x2)) > d <- data.frame(y = y, x1 = x1, x2 = x2, one = 1) > > d$yR <- R(y, as.R.ordered = TRUE) > m0 <- Polr(yR ~ 1, data = d) > rs <- c(estfun(as.mlt(m0)) %*% coef(as.mlt(m0))) * .5 > rs2 <- resid(m0, what = "scaling") > chk(rs, rs2) > > ### linear predictor > aq <- airquality[complete.cases(airquality),] > aq <- as.data.frame(lapply(aq, as.double)) > m <- Lm(Ozone ~ Solar.R + Wind + Temp + Month + Day | Solar.R + Wind + Temp + Month + Day, + data = aq) > > lp1 <- predict(m, type = "lp", what = "shifting") > lp2 <- predict(m, type = "lp", what = "scaling") > > X <- model.matrix(~ Solar.R + Wind + Temp + Month + Day, data = aq)[, -1L] > stopifnot(identical(lp1, X %*% coef(m, with_baseline = FALSE)[m$shiftcoef])) > stopifnot(identical(lp2, X %*% coef(m, with_baseline = FALSE)[m$scalecoef])) > > proc.time() user system elapsed 9.37 0.84 10.21