## ----setup, include = FALSE--------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 6, fig.height = 4 ) ## ----gaussian-sv1------------------------------------------------------------- library(wARMASVp) set.seed(123) # Simulate sim <- sim_svp(2000, phi = 0.95, sigy = 1, sigv = 0.3) y <- sim$y # Estimate fit <- svp(y, p = 1, J = 10) summary(fit) ## ----gaussian-sv2------------------------------------------------------------- y2 <- sim_svp(2000, phi = c(0.20, 0.63), sigy = 1, sigv = 0.5)$y fit2 <- svp(y2, p = 2, J = 10) summary(fit2) ## ----student-t---------------------------------------------------------------- yt <- sim_svp(2000, phi = 0.90, sigy = 1, sigv = 0.3, errorType = "Student-t", nu = 5)$y fit_t <- svp(yt, p = 1, errorType = "Student-t") summary(fit_t) ## ----ged---------------------------------------------------------------------- yg <- sim_svp(2000, phi = 0.90, sigy = 1, sigv = 0.3, errorType = "GED", nu = 1.5)$y fit_ged <- svp(yg, p = 1, errorType = "GED") summary(fit_ged) ## ----leverage----------------------------------------------------------------- sim_lev <- sim_svp(2000, phi = 0.95, sigy = 1, sigv = 0.3, leverage = TRUE, rho = -0.5) fit_lev <- svp(sim_lev$y, p = 1, leverage = TRUE) summary(fit_lev) ## ----leverage-t--------------------------------------------------------------- sim_lev_t <- sim_svp(2000, phi = 0.90, sigy = 1, sigv = 0.3, errorType = "Student-t", nu = 5, leverage = TRUE, rho = -0.5) fit_lev_t <- svp(sim_lev_t$y, p = 1, errorType = "Student-t", leverage = TRUE) summary(fit_lev_t) ## ----test-ar------------------------------------------------------------------ y_test <- sim_svp(2000, phi = 0.95, sigy = 1, sigv = 0.3)$y # H0: SV(1) vs H1: SV(2) — should not reject test_ar <- lmc_ar(y_test, p_null = 1, p_alt = 2, N = 49) print(test_ar) ## ----test-lev----------------------------------------------------------------- test_lev <- lmc_lev(y_test, p = 1, N = 49, Amat = "Weighted") print(test_lev) ## ----test-dist---------------------------------------------------------------- # Test H0: nu = 10 (mild tails) on Student-t data with true nu = 5 test_t <- lmc_t(yt, nu_null = 10, N = 49, Amat = "Weighted") print(test_t) # Directional test: H1: nu < 10 (heavier tails than null) test_t_dir <- lmc_t(yt, nu_null = 10, N = 49, Amat = "Weighted", direction = "less") print(test_t_dir) ## ----filtering---------------------------------------------------------------- # Fit model fit_filt <- svp(y, p = 1, J = 10) # GMKF (recommended) filt <- filter_svp(fit_filt, method = "mixture") plot(filt) ## ----forecast----------------------------------------------------------------- fit_fc <- svp(sim_lev$y, p = 1, leverage = TRUE) fc <- forecast_svp(fit_fc, H = 20) plot(fc)