Learn R Programming

gmwm (version 2.0.0)

gen.lts: Generate Latent Time Series Object Based on Model

Description

Create a lts object based on a supplied time series model.

Usage

gen.lts(model, N = 1000, start = 0, end = NULL, freq = 1, unit = NULL, name = NULL, process = NULL)

Arguments

model
A ts.model or gmwm object containing one of the allowed models.
N
An interger indicating the amount of observations generated in this function.
start
A numeric that provides the time of the first observation.
end
A numeric that provides the time of the last observation.
freq
A numeric that provides the rate of samples. Default value is 1.
unit
A string that contains the unit expression of the frequency. Default value is NULL.
name
A string that provides an identifier to the data. Default value is NULL.
process
A vector that contains model names of decomposed and combined processes.

Value

A lts object with the following attributes:
start
The time of the first observation
end
The time of the last observation
freq
Numeric representation of frequency
unit
String representation of the unit
name
Name of the dataset
process
A vector that contains model names of decomposed and combined processes

Details

This function accepts either a ts.model object (e.g. AR1(phi = .3, sigma2 =1) + WN(sigma2 = 1)) or a gmwm object.

Examples

Run this code
# AR
set.seed(1336)
model = AR1(phi = .99, sigma = 1) + WN(sigma2=1)
test = gen.lts(model)
plot(test)

Run the code above in your browser using DataLab