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The asymptotic properties of parameter estimators which
are based on a model that has been selected by a
model selection procedure are investigated. In
particular, the asymptotic distribution is derived
and the effects of the model selection process on
subsequent inference are illustrated.
The LAD estimator of the vector parameter in a linear
regression is defined by minimizing the sum of the
absolute values of the residuals. This paper
provides a direct proof of asymptotic normality for
the LAD estimator. The main theorem assumes
deterministic carriers. The extension to random
carriers includes the case of autoregressions whose
error terms have finite second moments. For a
first-order autoregression with Cauchy errors the
LAD estimator is shown to converge at a
1/n rate.
We consider the limiting distributions of
M-estimates of an
“autoregressive” parameter when the observations
come from an integrated linear process with infinite
variance innovations. It is shown that
M-estimates are, asymptotically,
infinitely more efficient than the least-squares
estimator (in the sense that they have a faster rate
of convergence) and are conditionally asymptotically
normal.
This paper presents maximal inequalities and strong law
of large numbers for weakly dependent heterogeneous
random variables. Specifically considered are
Lr mixingales for
r > 1, strong mixing
sequences, and near epoch dependent (NED) sequences.
We provide the first strong law for
Lr-bounded
Lr mixingales and NED
sequences for 1 > r > 2. The strong laws
presented for α-mixing sequences are less
restrictive than the laws of McLeish [8].
The exact finite sample behavior is investigated on the
bias of multiperiod leastsquares forecasts in the
normal autoregressive model
yt =
α +
βyt–1
+ ut.
Necessary and sufficient conditions are given for
the existence of the bias and an expression is
presented which we use to obtain exact numerical
results for finite samples. The unit root and near
unit root behavior is studied in detail and some
popular preconceptions about the behavior of the
bias are shown to be false.
We consider the least-squares estimator in a strictly
stationary first-order autoregression without an
estimated intercept. We study its continuous time
asymptotic distribution based on an asymptotic
framework where the sampling interval converges to
zero as the sample size increases. We derive a
momentgenerating function which permits the
calculation of percentage points and moments of this
asymptotic distribution and assess the adequacy of
the approximation to the finite sample distribution.
In general, the approximation is excellent for
values of the autoregressive parameter near one. We
also consider the behavior of the power function of
tests based on the normalized leastsquares
estimator. Interesting nonmonotonic properties are
uncovered. This analysis extends the study of Perron
[15] and helps to provide explanations for the
finite sample results established by Nankervis and
Savin [13].
This paper gives simple nonuniform bounds on the tail
areas of the permutation distribution of the usual
Student's t-statistic when the
observations are independent with symmetric
distributions. As opposed to uniform bounds,
nonuniform bounds depend on the observed sample. It
is shown that the nonuniform bounds proposed are
always tighter than uniform exponential bounds
previously suggested. The use of the bounds to
perform nonparametric t-tests is
discussed and numerical examples are presented.
Further, the bounds are extended to
t-tests in the context of a
simple linear regression.
Asymptotic local power analysis has become an important
and increasingly used technique in econometrics.
This paper reviews the history of local power
analysis and delineates the contribution of
J.Neyman, E.J.G. Pitman, and G. Noether.