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Tail approximation of the asymptotic distribution
of the log likelihood ratio test for cointegration in a
vector autoregressive process is studied. In dimension
2, an approximation of weighted χ2 type
is derived by applying multivariate saddlepoint approximation
techniques to a Fourier inversion integral.
This paper deals with the estimation of unequally
spaced panel data regression models with AR(1) remainder
disturbances. A feasible generalized least squares (GLS)
procedure is proposed as a weighted least squares that
can handle a wide range of unequally spaced panel data
patterns. This procedure is simple to compute and provides
natural estimates of the serial correlation and variance
components parameters. The paper also provides a locally
best invariant test for zero first-order serial correlation
against positive or negative serial correlation in case
of unequally spaced panel data.
In this paper, a necessary and sufficient condition
for the existence of the unconditional fourth moment of
the GARCH(p,q) process is given and
also an expression for the moment itself. Furthermore,
the autocorrelation function of the centered and squared
observations of this process is derived. The statistical
theory is further illustrated by a few special cases such
as the GARCH(2,2) process and the ARCH(q) process.
In time series regression models with “short-memory”
residual processes, the Durbin–Watson statistic (DW)
has been used for the problem of testing for independence of the
residuals. In this paper we elucidate the asymptotics of DW
for “long-memory” residual processes. A standardized
Durbin–Watson statistic (SDW) is proposed. Then we
derive the asymptotic distributions of SDW under both the
null and local alternative hypotheses. Based on this result we
evaluate the local power of SDW. Numerical studies for
DW and SDW are given.
Professor James Tobin is a figure of truly historic significance
in the economics profession. He is one of the major developers of
modern macroeconomic theory. He has contributed fundamental knowledge
to the theory of investment, of consumption, of money and banking, and
of economic growth. His theoretical work made possible the development
of the capital asset pricing model that has been a central paradigm in
modern finance. His work on limited-dependent variable models has
started a field within econometrics.