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  • In most social surveys, the elderly institutionalized population is not part of the target population because it is considered as hard-to-reach and hard-to-interview. The deliberate exclusion of institutionalized elderly from survey samples might cause bias, like previous studies investigating institutionalized elderly persons and their transition to institutions implied. We use a Monte Carlo simulation based on cross-national samples of the Survey of Health, Ageing and Retirement in Europe (SHARE) to test whether the noncoverage and undercoverage of the elderly institutionalized population lead to biased estimates. Moreover, we examined to what extent weights could be used to correct for the underrepresentation of the institutionalized population. Our results show that noncoverage leads to biased estimates in two healthrelated variables. With respect to undercoverage, the precision of all estimates is better, especially if weights accounting for the hard-to-survey population are applied. (xsd:string)
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?:dateModified
  • 2019 (xsd:gyear)
?:datePublished
  • 2019 (xsd:gyear)
?:doi
  • 10.13094/SMIF-2019-00017 ()
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  • en (xsd:string)
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  • 2296-4754 ()
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  • Undercoverage of the elderly institutionalized population: The risk of biased estimates and the potentials of weighting (xsd:string)
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  • Zeitschriftenartikel (xsd:string)
  • journal_article (en)
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  • GESIS-SSOAR (xsd:string)
  • In: Survey Methods: Insights from the Field, 2019, 1-19 (xsd:string)
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