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We show that the empirical distribution of the roots of
the vector autoregression (VAR) of order
p fitted to T
observations of a general stationary or
nonstationary process converges to the uniform
distribution over the unit circle on the complex
plane, when both T and
p tend to infinity so that (ln
T)/p → 0 and
p3/T
→ 0. In particular, even if the process is a white
noise, nearly all roots of the estimated VAR will
converge by absolute value to unity. For fixed
p, we derive an asymptotic
approximation to the expected empirical distribution
of the estimated roots as T → ∞.
The approximation is concentrated in a circular
region in the complex plane for various data
generating processes and sample sizes.
An asymptotic theory is developed for a weakly
identified cointegrating regression model in which
the regressor is a nonlinear transformation of an
integrated process. Weak identification arises from
the presence of a loading coefficient for the
nonlinear function that may be close to zero. In
that case, standard nonlinear cointegrating limit
theory does not provide good approximations to the
finite-sample distributions of nonlinear least
squares estimators, resulting in potentially
misleading inference. A new local limit theory is
developed that approximates the finite-sample
distributions of the estimators uniformly well
irrespective of the strength of the identification.
An important technical component of this theory
involves new results showing the uniform weak
convergence of sample covariances involving
nonlinear functions to mixed normal and stochastic
integral limits. Based on these asymptotics, we
construct confidence intervals for the loading
coefficient and the nonlinear transformation
parameter and show that these confidence intervals
have correct asymptotic size. As in other cases of
nonlinear estimation with integrated processes and
unlike stationary process asymptotics, the
properties of the nonlinear transformations affect
the asymptotics and, in particular, give rise to
parameter dependent rates of convergence and
differences between the limit results for integrable
and asymptotically homogeneous functions.
In this paper we study the convergence to fractional
Brownian motion for long memory time series having
independent innovations with infinite second moment.
For the sake of applications we derive the
self-normalized version of this theorem. The study
is motivated by models arising in economic
applications where often the linear processes have
long memory, and the innovations have heavy
tails.
We propose a new test against a change in correlation
at an unknown point in time based on cumulated sums
of empirical correlations. The test does not require
that inputs are independent and identically
distributed under the null. We derive its limiting
null distribution using a new functional delta
method argument, provide a formula for its local
power for particular types of structural changes,
give some Monte Carlo evidence on its finite-sample
behavior, and apply it to recent stock returns.
This paper introduces a new estimation method for
arbitrary temporal heterogeneity in panel data
models. The paper provides a semiparametric method
for estimating general patterns of cross-sectional
specific time trends. The methods proposed in the
paper are related to principal component analysis
and estimate the time-varying trend effects using a
small number of common functions calculated from the
data. An important application for the new estimator
is in the estimation of time-varying technical
efficiency considered in the stochastic frontier
literature. Finite sample performance of the
estimators is examined via Monte Carlo simulations.
We apply our methods to the analysis of productivity
trends in the U.S. banking industry.
In this article we consider a new separable
nonparametric volatility model that includes
second-order interaction terms in both mean and
conditional variance functions. This is a very
flexible nonparametric ARCH model that can
potentially explain the behavior of the wide variety
of financial assets. The model is estimated using
the generalized version of the local instrumental
variable estimation method first introduced in Kim
and Linton (2004, Econometric Theory
20, 1094–1139). This method is computationally more
effective than most other nonparametric estimation
methods that can potentially be used to estimate
components of such a model. Asymptotic behavior of
the resulting estimators is investigated and their
asymptotic normality is established. Explicit
expressions for asymptotic means and variances of
these estimators are also obtained.
We discuss the moment condition for the fractional
functional central limit theorem (FCLT) for partial
sums of xt =
Δ−dut,
where is
the fractional integration parameter and
ut is weakly
dependent. The classical condition is existence of
q ≥ 2 and
moments of the innovation sequence. When
d is close to this
moment condition is very strong. Our main result is
to show that when and under
some relatively weak conditions on
ut, the existence of
moments is in fact necessary for the FCLT for
fractionally integrated processes and that
moments are necessary for more general fractional
processes. Davidson and de Jong (2000,
Econometric Theory 16, 643–666)
presented a fractional FCLT where only
q > 2 finite moments are
assumed. As a corollary to our main theorem we show
that their moment condition is not sufficient and
hence that their result is incorrect.
The Box–Cox regression model has been widely used in
applied economics. However, there has been very
limited discussion when data are censored. The focus
has been on parametric estimation in the
cross-sectional case, and there has been no
discussion at all for the panel data model with
fixed effects. This paper fills these important gaps
by proposing distribution-free estimators for the
Box–Cox model with censoring in both the
cross-sectional and panel data settings. The
proposed methods are easy to implement by combining
a convex minimization problem with a one-dimensional
search. The procedures are applicable to other
transformation models.
We consider censored structural latent variables models
where some exogenous variables are subject to
additive measurement errors. We demonstrate that
overidentification conditions can be exploited to
provide natural instruments for the variables
measured with errors, and we propose a two-stage
estimation procedure. The first stage involves
substituting available instruments in lieu of the
variables that are measured with errors and
estimating the resulting reduced form parameters
using consistent censored regression methods. The
second stage obtains structural form parameters
using the conventional linear simultaneous equations
model estimators.
An empirical likelihood–based confidence interval is
proposed for interval estimations of the
autoregressive coefficient of a first-order
autoregressive model via weighted score equations.
Although the proposed weighted estimate is less
efficient than the usual least squares estimate, its
asymptotic limit is always normal without assuming
stationarity of the process. Unlike the bootstrap
method or the least squares procedure, the proposed
empirical likelihood–based confidence interval is
applicable regardless of whether the underlying
autoregressive process is stationary, unit root,
near-integrated, or even explosive, thereby
providing a unified approach for interval estimation
of an AR(1) model to encompass all situations.
Finite-sample simulation studies confirm the
effectiveness of the proposed method.