The problem of Small Area Estimation is how to produce reliable estimates of area (domain) characteristics, when the sizes within the areas are too small to warrant the use of traditional direct survey estimates. This problem is commonly tackled by borrowing information from either neighboring areas and/or from previous surveys, using appropriate time series/cross-sectional models. In order to protect against possible model breakdowns and for other reasons, it is often required to benchmark the model dependent estimates to the corresponding direct survey estimates in larger areas, for which the survey estimates are sufficiently accurate. The benchmarking process defines another way of borrowing information across the areas.This article show...
Government agencies often provide small area estimates that rely on available data and some underlyi...
It is known that direct-survey estimators of small area parameters, calculated with the data from th...
We present a novel methodology to benchmark county-level estimates of crop area totals to a preset s...
The problem of Small Area Estimation is how to produce reliable estimates of area (domain) character...
This article shows how to benchmark small area estimators, produced by fitting separate state-space ...
This article is divided into two parts. In the first part, we review and study the properties of sin...
We congratulate the authors for a stimulating and valuable manuscript, pro-viding a careful review o...
The purpose of this paper is to provide a critical review of the main advances in small area estimat...
This dissertation concerns model selection as well as resampling methods in small-area estimation an...
There has been recent growth in small area estimation due to the need for more pre-cise estimation o...
Small area estimation is concerned with methodology for estimating population parameters associated ...
We develop constrained Bayesian estimation methods for small area problems: those requiring smoothne...
Models for small area estimation based on a random effects specification typically assume population...
Small area estimation (SAE) concerns with how to reliably estimate population quantities of interest...
Government agencies often provide small area estimates that rely on available data and some underlyi...
It is known that direct-survey estimators of small area parameters, calculated with the data from th...
We present a novel methodology to benchmark county-level estimates of crop area totals to a preset s...
The problem of Small Area Estimation is how to produce reliable estimates of area (domain) character...
This article shows how to benchmark small area estimators, produced by fitting separate state-space ...
This article is divided into two parts. In the first part, we review and study the properties of sin...
We congratulate the authors for a stimulating and valuable manuscript, pro-viding a careful review o...
The purpose of this paper is to provide a critical review of the main advances in small area estimat...
This dissertation concerns model selection as well as resampling methods in small-area estimation an...
There has been recent growth in small area estimation due to the need for more pre-cise estimation o...
Small area estimation is concerned with methodology for estimating population parameters associated ...
We develop constrained Bayesian estimation methods for small area problems: those requiring smoothne...
Models for small area estimation based on a random effects specification typically assume population...
Small area estimation (SAE) concerns with how to reliably estimate population quantities of interest...
Government agencies often provide small area estimates that rely on available data and some underlyi...
It is known that direct-survey estimators of small area parameters, calculated with the data from th...
We present a novel methodology to benchmark county-level estimates of crop area totals to a preset s...