Initial release.
svp(): Closed-form W-ARMA-SV estimation for SV(p)
models of any order.svpSE(): Simulation-based standard errors and
confidence intervals.sim_svp(): Simulate SV(p) processes with Gaussian,
Student-t, or GED innovations, with optional leverage effects for all
distributions.lmc_ar() / mmc_ar(): AR order
selection.lmc_lev() / mmc_lev(): Leverage effects
(all distributions).lmc_t() / mmc_t(): Student-t vs. Gaussian
(with directional testing).lmc_ged() / mmc_ged(): GED vs. Gaussian
(with directional testing).filter_svp(): Kalman filtering and smoothing with three
methods:
forecast_svp(): Multi-step ahead volatility forecasts
with MSE-based confidence bands. Supports log-variance, variance, and
volatility output scales.mu_bar(nu) = psi(1/2) - psi(nu/2) + log(nu). Simulation no
longer divides raw Student-t samples by sqrt(nu/(nu-2)). GED innovations
remain standardized (unit variance), following Nelson (1991).
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