quantileResiduals {uGMAR} | R Documentation |
DEPRECATED, USE quantile_residuals
INSTEAD! Compute quantile residuals of GMAR, StMAR, or G-StMAR model
Description
quantileResiduals
computes the quantile residuals of the specified GMAR, StMAR, or G-StMAR model.
DEPRECATED, USE quantile_residuals
INSTEAD!
Usage
quantileResiduals(
data,
p,
M,
params,
model = c("GMAR", "StMAR", "G-StMAR"),
restricted = FALSE,
constraints = NULL,
parametrization = c("intercept", "mean")
)
Arguments
data |
a numeric vector or class |
p |
a positive integer specifying the autoregressive order of the model. |
M |
|
params |
a real valued parameter vector specifying the model.
Symbol |
model |
is "GMAR", "StMAR", or "G-StMAR" model considered? In the G-StMAR model, the first |
restricted |
a logical argument stating whether the AR coefficients |
constraints |
specifies linear constraints imposed to each regime's autoregressive parameters separately.
The symbol |
parametrization |
is the model parametrized with the "intercepts" |
Details
DEPRECATED, USE quantile_residuals
INSTEAD!
Value
Returns a (Tx1)
numeric vector containing the quantile residuals of the specified GMAR, StMAR or G-StMAR model.
Note that there are no quantile residuals for the first p
observations as they are the initial values.
Suggested packages
Install the suggested package "gsl" for faster evaluation of the quantile residuals of StMAR and G-StMAR models.
References
Galbraith, R., Galbraith, J. 1974. On the inverses of some patterned matrices arising in the theory of stationary time series. Journal of Applied Probability 11, 63-71.
Kalliovirta L. (2012) Misspecification tests based on quantile residuals. The Econometrics Journal, 15, 358-393.
Kalliovirta L., Meitz M. and Saikkonen P. 2015. Gaussian Mixture Autoregressive model for univariate time series. Journal of Time Series Analysis, 36(2), 247-266.
Meitz M., Preve D., Saikkonen P. 2023. A mixture autoregressive model based on Student's t-distribution. Communications in Statistics - Theory and Methods, 52(2), 499-515.
Virolainen S. 2022. A mixture autoregressive model based on Gaussian and Student's t-distributions. Studies in Nonlinear Dynamics & Econometrics, 26(4) 559-580.