McLeod.Li.test {TSA} | R Documentation |
McLeod-Li test
Description
Perform the McLeod-Li test for conditional heteroscedascity (ARCH).
Usage
McLeod.Li.test(object, y, gof.lag, col = "red", omit.initial = TRUE,
plot = TRUE, ...)
Arguments
object |
a fitted Arima model, ususally the output from the arima function. If supplied, then the Mcleod-Li test is applied to the residuals of the model, and the y-argument is ignored. |
y |
time series data with which one wants to test for the presence of conditional heteroscedascity |
gof.lag |
maximum number of lags for which the test is carried out. |
col |
color of the reference line |
omit.initial |
suppress the initial (d+Ds) residuals if set to be TRUE |
plot |
suppress plotting if set to be FALSE |
... |
other arguments to be passed to the plot function |
Details
The test checks for the presence of conditional heteroscedascity by computing the Ljung-Box (portmanteau) test with the squared data (if y is supplied and object suppressed) or with the squared residuals from an arima model (if an arima model is passed to the function via the object argument.)
Value
pvlaues |
the vector of p-values for the Ljung-Box test statistics
computed using the first |
Author(s)
Kung-Sik Chan
References
McLeod, A. I. and W. K. Li (1983). Diagnostic checking ARMA time series models using squared residual autocorrelations. Journal of Time Series Analysis, 4, 269273.
Examples
data(CREF)
r.cref=diff(log(CREF))*100
McLeod.Li.test(y=r.cref)