Combining information from multiple surveys can improve the quality of small-area estimates. Customary approaches include the multiple-frame method and the statistical matching method. However, these techniques require individual data, whereas in practice often only aggregate estimates are available. Commercial surveys usually produce aggregate estimates without clear description of the methodology used. In this context bias modelling is crucial, for which we propose a series of Bayesian hierarchical models. These allow for additive biases, which are exchangeable between small-areas within surveys, and include the possibility of estimating correlations between data sources and trends over time. Our objective is to obtain combined estimates of smoking prevalence in each of the 48 local authorities across the East of England from seven data sources, which provide smoking prevalence estimates at the local authority level, but vary by time, sample size and methodology. The estimates adjust for the biases in commercial surveys but incorporate useful information from all the sources to provide more accurate and precise estimates. Our approach is more general than other methods and uses prevalence rates rather than individual data. It provides estimates of smoking prevalence in each area, based essentially on meta-analysis of synthetic estimates, and tools to evaluate the amount of bias in each data source.

Combining small-area smoking prevalence estimates from multiple surveys / G. Manzi, D.J. Spiegelhalter, J. Flowers, R.M. Turner, S.G. Thompson - In: RSS Conference 2008 abstracts booklet[s.l] : The Royal statistical society, 2008 Sep. - pp. 65-65 (( convegno The Royal statistical society conference tenutosi a Nottingham nel 2008.

Combining small-area smoking prevalence estimates from multiple surveys

G. Manzi
Primo
;
2008

Abstract

Combining information from multiple surveys can improve the quality of small-area estimates. Customary approaches include the multiple-frame method and the statistical matching method. However, these techniques require individual data, whereas in practice often only aggregate estimates are available. Commercial surveys usually produce aggregate estimates without clear description of the methodology used. In this context bias modelling is crucial, for which we propose a series of Bayesian hierarchical models. These allow for additive biases, which are exchangeable between small-areas within surveys, and include the possibility of estimating correlations between data sources and trends over time. Our objective is to obtain combined estimates of smoking prevalence in each of the 48 local authorities across the East of England from seven data sources, which provide smoking prevalence estimates at the local authority level, but vary by time, sample size and methodology. The estimates adjust for the biases in commercial surveys but incorporate useful information from all the sources to provide more accurate and precise estimates. Our approach is more general than other methods and uses prevalence rates rather than individual data. It provides estimates of smoking prevalence in each area, based essentially on meta-analysis of synthetic estimates, and tools to evaluate the amount of bias in each data source.
Settore SECS-S/01 - Statistica
set-2008
The Royal statistical society
http://www.rss.org.uk/uploadedfiles/userfiles/files/RSS2008_Final_abstracts_booklet%20rev.pdf
Book Part (author)
File in questo prodotto:
Non ci sono file associati a questo prodotto.
Pubblicazioni consigliate

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/143781
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus ND
  • ???jsp.display-item.citation.isi??? ND
social impact