39 research outputs found
The asymptotic structure of nearly unstable non-negative integer-valued AR(1) models
This paper considers non-negative integer-valued autoregressive processes
where the autoregression parameter is close to unity. We consider the
asymptotics of this `near unit root' situation. The local asymptotic structure
of the likelihood ratios of the model is obtained, showing that the limit
experiment is Poissonian. To illustrate the statistical consequences we discuss
efficient estimation of the autoregression parameter and efficient testing for
a unit root.Comment: Published in at http://dx.doi.org/10.3150/08-BEJ153 the Bernoulli
(http://isi.cbs.nl/bernoulli/) by the International Statistical
Institute/Bernoulli Society (http://isi.cbs.nl/BS/bshome.htm
Local Asymptotic Equivalence of the Bai and Ng (2004) and Moon and Perron (2004) Frameworks for Panel Unit Root Testing
This paper considers unit-root tests in large n and large T heterogeneous
panels with cross-sectional dependence generated by unobserved factors. We
reconsider the two prevalent approaches in the literature, that of Moon and
Perron (2004) and the PANIC setup proposed in Bai and Ng (2004). While these
have been considered as completely different setups, we show that, in case of
Gaussian innovations, the frameworks are asymptotically equivalent in the sense
that both experiments are locally asymptotically normal (LAN) with the same
central sequence. Using Le Cam's theory of statistical experiments we determine
the local asymptotic power envelope and derive an optimal test jointly in both
setups. We show that the popular Moon and Perron (2004) and Bai and Ng (2010)
tests only attain the power envelope in case there is no heterogeneity in the
long-run variance of the idiosyncratic components. The new test is
asymptotically uniformly most powerful irrespective of possible heterogeneity.
Moreover, it turns out that for any test, satisfying a mild regularity
condition, the size and local asymptotic power are the same under both data
generating processes. Thus, applied researchers do not need to decide on one of
the two frameworks to conduct unit root tests. Monte-Carlo simulations
corroborate our asymptotic results and document significant gains in
finite-sample power if the variances of the idiosyncratic shocks differ
substantially among the cross sectional units
Efficient Estimation in Semiparametric Time Series: the ACD Model
In this paper we consider efficient estimation in semiparametric ACD models. We consider a suite of model specifications that impose less and less structure. We calculate the corresponding efficiency bounds, discuss the construction of efficient estimators in each case, and study tvide a simulation study that shows the practical gain from using the proposed semiparametric procedures. We find that, although one does not gain as much as theory suggests, these semiparametric procedures definitely outperform more classical procedures. We apply the procedures to model semiparametrically durations observed on the Paris Bourse for the Alcatel stock in July and August 1996.
Temporal Aggregation of GARCH Processes.
The authors derive low frequency, say weekly, models implied by high frequency, say daily, ARMA models with symmetric GARCH errors. They show that low frequency models exhibit conditional heteroskedasticity of the GARCH form as well. The parameters in the conditional variance equation of the low frequency model depend upon mean, variance, and kurtosis parameters of the corresponding high frequency model. Moreover, strongly consistent estimators of the parameters in the high frequency model can be derived from low frequency data. The common assumption in applications that rescaled innovations are independent is disputable, since it depends upon the available data frequency. Copyright 1993 by The Econometric Society.
Semiparametric Duration Models
In this paper we consider semiparametric duration models and efficient estimation of the parameters in a non-i.i.d. environment. In contrast to classical time series models where innovations are assumed to be i.i.d., we show that, for example in the often-used Autoregressive Conditional Duration (ACD) model, the assumption of independent innovations is too restrictive to describe financial durations accurately. Therefore, we consider semiparametric extensions of the standard specification that allow for arbitrary kinds of dependencies between the innovations. The exact nonparametric specification of these dependencies determines the flexibility of the semiparametric model. We calculate semiparametric efficiency bounds for the ACD parameters, discuss the construction of efficient estimators, and study the efficiency loss of the exponential pseudo-likelihood procedure. This efficiency loss proves to be sizeable in applications. For durations observed on the Paris Bourse for the Alcatel stock in July and August 1996, the proposed semiparametric procedures clearly outperform pseudo-likelihood procedures. We analyze these efficiency gains using a simulation study which confirms that, at least at the Paris Bourse, dependencies among rescaled durations can be exploited