Pull your small area estimates up by the bootstraps Articles uri icon

authors

  • CORRAL RODAS, PAUL
  • MOLINA PERALTA, ISABEL
  • NGUYEN, MINH

publication date

  • January 2021

start page

  • 3304

end page

  • 3357

issue

  • 16

volume

  • 91

International Standard Serial Number (ISSN)

  • 0094-9655

Electronic International Standard Serial Number (EISSN)

  • 1563-5163

abstract

  • This paper presents a methodological update to the World Bank's toolkit for small area estimation. The paper reviews the computational procedures of the current methods used by the institution: the traditional ELL approach and the Empirical Best (EB) addition introduced to imitate the original EB procedure of Molina and Rao [Small area estimation of poverty indicators. Canadian J Stat. 2010;38(3):369–385], including heteroskedasticity and survey weights, but using a different bootstrap approach, here referred to as clustered bootstrap. Simulation experiments provide empirical evidence of the shortcomings of the clustered bootstrap approach, which yields biased and noisier point estimates. The document presents an update to the World Bank"s EB implementation by considering the original EB procedures for point and noise estimation, extended for complex designs and heteroscedasticity. Simulation experiments illustrate that the revised methods yield considerably less biased and more efficient estimators than those obtained from the clustered bootstrap approach.

subjects

  • Statistics

keywords

  • small area estimation; ell; poverty mapping; poverty map; empirical best; parametric bootstrap