7,543 research outputs found
Hybrid Shrinkage Estimators Using Penalty Bases For The Ordinal One-Way Layout
This paper constructs improved estimators of the means in the Gaussian
saturated one-way layout with an ordinal factor. The least squares estimator
for the mean vector in this saturated model is usually inadmissible. The hybrid
shrinkage estimators of this paper exploit the possibility of slow variation in
the dependence of the means on the ordered factor levels but do not assume it
and respond well to faster variation if present. To motivate the development,
candidate penalized least squares (PLS) estimators for the mean vector of a
one-way layout are represented as shrinkage estimators relative to the penalty
basis for the regression space. This canonical representation suggests further
classes of candidate estimators for the unknown means: monotone shrinkage (MS)
estimators or soft-thresholding (ST) estimators or, most generally, hybrid
shrinkage (HS) estimators that combine the preceding two strategies. Adaptation
selects the estimator within a candidate class that minimizes estimated risk.
Under the Gaussian saturated one-way layout model, such adaptive estimators
minimize risk asymptotically over the class of candidate estimators as the
number of factor levels tends to infinity. Thereby, adaptive HS estimators
asymptotically dominate adaptive MS and adaptive ST estimators as well as the
least squares estimator. Local annihilators of polynomials, among them
difference operators, generate penalty bases suitable for a range of numerical
examples.Comment: Published at http://dx.doi.org/10.1214/009053604000000652 in the
Annals of Statistics (http://www.imstat.org/aos/) by the Institute of
Mathematical Statistics (http://www.imstat.org
On parameter estimation for locally stationary long-memory processes
We consider parameter estimation for time-dependent locally stationary long-memory processes. The asymptotic distribution of an estimator based on the local infinite autoregressive representation is derived, and asymptotic formulas for the mean squared error of the estimator, and the asymptotically optimal bandwidth are obtained. In spite of long memory, the optimal bandwidth turns out to be of the order n^(-1/5) and inversely proportional to the square of the second derivative of d. In this sense, local estimation of d is comparable to regression smoothing with iid residuals.long memory, fractional ARIMA process, local stationarity, bandwidth selection
Special observations
The wind or temperature profiler is a new special observation device designed to supplement traditional atmospheric measurement and provide more accurate middle-range forecasts, including aviation and space applications. Radar is most useful in the short, nowcast time frame. Satellites and surface observations are also most useful for short-range forecasts but have less impact on the longer range. The radiosonde network, on the other hand, only starts to be very important after about six hours and has greatest impact at lead times of 12 hours or more. In the wind profiler, wind is measured by using clear-air Doppler radar principles, Two fixed beams, pointing 15 deg to the north and 15 deg to the east, sense the Doppler shift. The resulting wind vectors are then rotated to the horizontal and combined to give total wind. The temperature profiler measures temperature and humidity by using passive radiometers. Development on the profiler is 95 percent complete, and on the temperature profiler 75 percent complete
On estimating extremal dependence structures by parametric spectral measures
Estimation of extreme value copulas is often required in situations where
available data are sparse. Parametric methods may then be the preferred
approach. A possible way of defining parametric families that are simple and,
at the same time, cover a large variety of multivariate extremal dependence
structures is to build models based on spectral measures. This approach is
considered here. Parametric families of spectral measures are defined as convex
hulls of suitable basis elements, and parameters are estimated by projecting an
initial nonparametric estimator on these finite-dimensional spaces. Asymptotic
distributions are derived for the estimated parameters and the resulting
estimates of the spectral measure and the extreme value copula. Finite sample
properties are illustrated by a simulation study
On approximate pseudo-maximum likelihood estimation for LARCH-processes
Linear ARCH (LARCH) processes were introduced by Robinson [J. Econometrics 47
(1991) 67--84] to model long-range dependence in volatility and leverage. Basic
theoretical properties of LARCH processes have been investigated in the recent
literature. However, there is a lack of estimation methods and corresponding
asymptotic theory. In this paper, we consider estimation of the dependence
parameters for LARCH processes with non-summable hyperbolically decaying
coefficients. Asymptotic limit theorems are derived. A central limit theorem
with -rate of convergence holds for an approximate conditional
pseudo-maximum likelihood estimator. To obtain a computable version that
includes observed values only, a further approximation is required. The
computable estimator is again asymptotically normal, however with a rate of
convergence that is slower than Comment: Published in at http://dx.doi.org/10.3150/09-BEJ189 the Bernoulli
(http://isi.cbs.nl/bernoulli/) by the International Statistical
Institute/Bernoulli Society (http://isi.cbs.nl/BS/bshome.htm
On asymptotically optimal wavelet estimation of trend functions under long-range dependence
We consider data-adaptive wavelet estimation of a trend function in a time
series model with strongly dependent Gaussian residuals. Asymptotic expressions
for the optimal mean integrated squared error and corresponding optimal
smoothing and resolution parameters are derived. Due to adaptation to the
properties of the underlying trend function, the approach shows very good
performance for smooth trend functions while remaining competitive with minimax
wavelet estimation for functions with discontinuities. Simulations illustrate
the asymptotic results and finite-sample behavior.Comment: Published in at http://dx.doi.org/10.3150/10-BEJ332 the Bernoulli
(http://isi.cbs.nl/bernoulli/) by the International Statistical
Institute/Bernoulli Society (http://isi.cbs.nl/BS/bshome.htm
Delivering Diabetes Care in the Philippines and Vietnam: Policy and Practice Issues
The aim of this study is the comparison of 2 studies looking at the barriers to access of diabetes care and medicines in the Philippines and Vietnam. These studies used the Rapid Assessment Protocol for Insulin Access. Diabetes care is provided in specialized facilities and appropriate referral systems are lacking. In Vietnam, no problems were reported with regard to diagnostic tools, whereas this was a concern in the public sector in the Philippines. Both countries had high prices for medicines in comparison to international standards. Availability of medicines was better in Vietnam than in the Philippines, especially with regard to insulin. This affected adherence as did a lack of patient education. As countries aim to provide health care to the majority of their populations through universal coverage, the challenge of diabetes cannot be neglected. Trying to achieve universal coverage in parallel to decentralization, national and local governments need adapted guidance for this
Recent Developments in Non- and Semiparametric Regression with Fractional Time Series Errors
This paper summarizes recent developments in non- and semiparametric regres- sion with stationary fractional time series errors, where the error process may be short-range, long-range dependent or antipersistent. The trend function in this model is estimated nonparametrically, while the dependence structure of the error process is estimated by approximate maximum likelihood. Asymptotic properties of these estimators are described briefly. The focus is on describing the developments of bandwidth selection in this context based on the iterative plug-in idea (Gasser et al., 1991) and some detailed computational aspects. Applications in the framework of the SEMIFAR (semiparametric fractional autoregressive) model (Beran, 1999) illustrate the practical usefulness of the methods described here.Nonparametric regression, FARIMA error processes, bandwidth selection, iterative plug-in, SEMIFAR model
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