Diagnostic Checking For Linearity in Time Series Models
Abstract
In this thesis, I studied the well-known portmanteau tests appearing in the time
series literature. In particular, I interest in reviewing the test statistics that can be used
to check the adequacy of the fitted Autoregressive and Moving Average (ARMA)
models, the Generalized Conditional Heteroskedasticity (GARCH) models, and
special nonlinear models that are proposed early and widely used specially in
financial time series. I estimate the empirical levels of these tests based on the Monte
Carlo significance tests and show that the Monte-Carlo tests provide an accurate
estimate for these levels. I conduct a simulation power comparison between these
tests and show that the Monte-Carlo significance test presented based on the
determinant of a matrix which include four matrices of auto correlation of residual,
auto correlation of squared residual and cross correlation between the residual and
squared residuals has higher power than the other tests in many cases. I demonstrate
the usefulness of the Monte-Carlo tests by applying these tests on the daily log-returns
of Ooredoo Qatar.
DOI/handle
http://hdl.handle.net/10576/15316Collections
- Mathematics, Statistics & Physics [33 items ]