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For autoregressive processes, we propose new estimators
whose pivotal statistics have the standard normal limiting
distribution for all ranges of the autoregressive parameters.
The proposed estimators are approximately median unbiased.
For seasonal time series, the new estimators give us unit
root tests that have limiting normal distribution regardless
of period of the seasonality. Using the estimators, confidence
intervals of the autoregressive parameters are constructed.
A Monte-Carlo simulation for first-order autoregressions
shows that the proposed tests for unit roots are locally
more powerful than the tests based on the ordinary least
squares estimators. It also shows that the proposed confidence
intervals have shorter average lengths than those of Andrews
(1993, Econometrica 61, 139–165) based on
the ordinary least squares estimators when the autoregressive
coefficient is close to one.
We consider the asymptotic null distribution of
the empirical autocorrelation function when the innovations
of a moving average process belong to the normal domain
of attraction of a Cauchy law. A series expansion for the
density of the limiting null distribution is developed,
and some critical values of the tests are computed numerically.
In this paper nearly unstable AR(p) processes
(in other words, models with characteristic roots near the
unit circle) are studied. Our main aim is to describe the
asymptotic behavior of the least-squares estimators of the
coefficients. A convergence result is presented for the
general complex-valued case. The limit distribution is given
by the help of some continuous time AR processes. We apply
the results for real-valued nearly unstable AR(p)
models. In this case the limit distribution can be identified
with the maximum likelihood estimator of the coefficients of
the corresponding continuous time AR processes.
Despite the fact that it is not correct to speak
of Bartlett corrections in the case of nonstationary time
series, this paper shows that a Bartlett-type correction
to the likelihood ratio test for a unit root can be an
effective tool to control size distortions. Using well-known
formulae, we obtain second-order (numerical) approximations
to the moments and cumulants of the likelihood ratio, which
makes it possible to calculate a Bartlett-type factor.
It turns out that the cumulants of the corrected statistic
are closer to their asymptotic value than the original
one. A simulation study is then carried out to assess the
quality of these approximations for the first four moments;
the size and the power of the original and the corrected
statistic are also simulated. Our results suggest that
the proposed correction reduces the size distortion without
affecting the power too much.
In this paper a method is presented to estimate
correlated discrete random variables with known univariate
distribution functions up to some parameters. We also present
an empirical illustration on Dutch recreational data.
We develop asymptotic approximations to the distribution
of forecast errors from an estimated AR(1) model with no
drift when the true process is nearly I(1) and both
the forecast horizon and the sample size are allowed to increase
at the same rate. We find that the forecast errors are the sums of two
components that are asymptotically independent. The first is
asymptotically normal whereas the second is asymptotically nonnormal.
This throws doubt on the suitability of a normal approximation
to the forecast error distribution. We then perform a Monte
Carlo study to quantify further the effects on the forecast
errors of sampling variability in the parameter estimates
as we allow both forecast horizon and sample size to increase.