## ----setup, include = FALSE--------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 6, fig.height = 4 ) ## ----eval = FALSE------------------------------------------------------------- # remotes::install_github("lhvanegasp/mtarm") ## ----eval = FALSE------------------------------------------------------------- # install.packages("mtarm") ## ----fig.width=9, fig.height=7------------------------------------------------ library(mtarm) data(iceland.rf) str(iceland.rf) ## ----fig.width=9, fig.height=5------------------------------------------------ summary(iceland.rf[,-5]) ## ----fig.width=9, fig.height=5------------------------------------------------ plot(ts(as.matrix(iceland.rf[,-5])), main="Iceland") ## ----------------------------------------------------------------------------- set.seed(09102) fits <- mtar_grid(~ Jokulsa + Vatnsdalsa | Temperature | Precipitation, data=iceland.rf, subset={Date<="1974-11-06"}, row.names=Date, nregim.min=2, nregim.max=2, p.min=15, p.max=15, q.min=4, q.max=4, d.min=2, d.max=2, n.burnin=500, n.sim=400, n.thin=2, ssvs=TRUE, dist=c("Gaussian","Student-t","Laplace"), plan_strategy="multisession") fits ## ----------------------------------------------------------------------------- DIC(fits) WAIC(fits) ## ----------------------------------------------------------------------------- newdata <- subset(iceland.rf, Date>"1974-11-06") set.seed(09102) oos <- out_of_sample(fits, newdata=newdata, n.ahead=nrow(newdata), FUN=median) oos[,c(1,2,5,6)] ## ----------------------------------------------------------------------------- set.seed(09102) oos2 <- out_of_sample(fits, newdata=newdata, n.ahead=nrow(newdata), rolling=5, FUN=median) for(i in 1:length(oos2)){ cat("\n",i,"-step-ahead\n") print(oos2[[i]][,c(1,2,5,6)]) } ## ----------------------------------------------------------------------------- summary(fits[["Laplace.2.15.4.2"]]) ## ----fig.width=9, fig.height=5------------------------------------------------ res <- residuals(fits[["Laplace.2.15.4.2"]]) ## ----fig.width=9, fig.height=5------------------------------------------------ par(mfrow=c(1,2)) qqnorm(res[["full"]], pch=20, col="blue", main="") abline(0, 1, lty=3) hist(res[["full"]], freq=FALSE, xlab="Quantile-type residual", ylab="Density", main="") curve(dnorm(x), col="blue", add=TRUE) ## ----fig.width=9, fig.height=5------------------------------------------------ par(mfrow=c(1,2)) acf(res[["full"]], col="blue", main="") pacf(res[["full"]], col="blue", main="") ## ----------------------------------------------------------------------------- pred <- predict(fits[["Laplace.2.15.4.2"]], newdata=newdata, n.ahead=nrow(newdata), row.names=Date, credible=0.8) head(pred$summary) tail(pred$summary) ## ----------------------------------------------------------------------------- fitmcmc <- coda::as.mcmc(fits[["Laplace.2.15.4.2"]]) summary(fitmcmc) ## ----------------------------------------------------------------------------- geweke_diagTAR(fits[["Laplace.2.15.4.2"]]) ## ----------------------------------------------------------------------------- effectiveSize_TAR(fits[["Laplace.2.15.4.2"]])