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Advisor(s)
Abstract(s)
The high level of unemployment is one of the major problems in most European countries nowadays.
Hence, the demand for small area labor market statistics has rapidly increased over the past few years.
The Labour Force Survey (LFS) conducted by the Portuguese Statistical Office is the main source of
official statistics on the labour market at the macro level (e.g. NUTS2 and national level). However, the
LFS was not designed to produce reliable statistics at the micro level (e.g. NUTS3, municipalities or
further disaggregate level) due to small sample sizes. Consequently, traditional design-based estimators
are not appropriate. A solution to this problem is to consider model-based estimators that "borrow
information" from related areas or past samples by using auxiliary information. This paper reviews,
under the model-based approach, Best Linear Unbiased Predictors and an estimator based on the posterior
predictive distribution of a Hierarchical Bayesian model. The goal of this paper is to analyze the possibility
to produce accurate unemployment rate statistics at micro level from the Portuguese LFS using these kinds of stimators. This paper discusses the advantages of using each approach and the viability of its implementation.
Description
Keywords
Small Area Estimation Empirical Best Linear Unbiased Predictor Hierarchical Bayes Unemployment Rate
Citation
European Young Statisticians Meeting, 17th , Lisbon, 2011.
Publisher
Universidade Nova de Lisboa