## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 7, fig.height = 4 ) ## ----setup-------------------------------------------------------------------- library(muse) ## ----air-default-------------------------------------------------------------- air <- pts(AirPassengers, model = "ZZZ", h = 12, holdout = TRUE) air ## ----air-fit, fig.height=6---------------------------------------------------- plot(air, which = c(1, 2)) ## ----air-states, fig.height=6------------------------------------------------- plot(air, which = 12) ## ----air-fc------------------------------------------------------------------- fc <- forecast(air, h = 12) plot(fc) ## ----air-acc------------------------------------------------------------------ accuracy(air) ## ----air-loglambda------------------------------------------------------------ air_log <- pts(AirPassengers, model = "0LT", h = 12, holdout = TRUE) air_log$lambda ## ----air-auto, eval = FALSE--------------------------------------------------- # pts(AirPassengers, model = "ZZZ", h = 12, ic = "BIC") ## ----air-arma, eval = FALSE--------------------------------------------------- # # ARMA(2, 1) on the irregular # pts(AirPassengers, model = "ZZZ", orders = c(2, 1), h = 12) # # # Seasonal SARMA(1, 1)(1, 1)_12 — non-seasonal + seasonal blocks # pts(AirPassengers, model = "ZZZ", # orders = list(ar = c(1, 1), ma = c(1, 1), lags = c(1, 12)), h = 12) # # # Automatic ARMA search up to the supplied caps # pts(AirPassengers, model = "ZZZ", # orders = list(ar = 2, ma = 2, select = TRUE), h = 12) ## ----air-fc-intervals--------------------------------------------------------- fc <- forecast(air, h = 12, interval = "prediction", level = c(0.80, 0.95)) plot(fc) ## ----air-outliers------------------------------------------------------------- y <- AirPassengers y[100] <- 3 * y[100] # inject an obvious additive spike m_out <- pts(y, model = "ZZZ", outliers = "use", level = 0.99) m_out$outliersDetected ## ----seatbelts-xreg----------------------------------------------------------- sb <- Seatbelts[, c("drivers", "kms", "PetrolPrice", "law")] m_sb <- pts(sb, model = "ZZZ", h = 12, holdout = TRUE) m_sb ## ----seatbelts-fc, eval = FALSE----------------------------------------------- # # Holdout values of the regressors are stashed on $holdout for accuracy # fc_sb <- forecast(m_sb, h = 12, newdata = tail(Seatbelts, 12)) # plot(fc_sb) ## ----seatbelts-outliers------------------------------------------------------- m_sb_out <- pts(Seatbelts[, "drivers"], model = "ZZZ", outliers = "use", level = 0.99) m_sb_out$outliersDetected ## ----air-accuracy------------------------------------------------------------- accuracy(air) ## ----air-sim------------------------------------------------------------------ set.seed(42) sim <- simulate(air, nsim = 200, h = 12) str(sim, max.level = 1) ## ----air-accessors, eval = FALSE---------------------------------------------- # summary(air) # Coefficient table + variance proportions # coef(air) # Estimated parameter vector # vcov(air) # Parameter covariance matrix # confint(air) # Wald confidence intervals # logLik(air); AIC(air); BIC(air) # fitted(air); residuals(air) # rstandard(air); rstudent(air) # nparam(air); nobs(air); sigma(air) # modelType(air); orders(air); lags(air); errorType(air)