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Estimating income poverty in the presence of missing data and measurement error

Estimating income poverty in the presence of missing data and measurement error
Estimating income poverty in the presence of missing data and measurement error
Reliable measures of poverty are an essential statistical tool for public policies aimed at reducing poverty. In this article we consider the reliability of income poverty measures based on survey data which are typically plagued by missing data and measurement error. Neglecting these problems can bias the estimated poverty rates. We show how to derive upper and lower bounds for the population poverty rate using the sample evidence, an upper bound on the probability of misclassifying people into poor and nonpoor, and instrumental or monotone instrumental variable assumptions. By using the European Community Household Panel, we compute bounds for the poverty rate in 10 European countries and study the sensitivity of poverty comparisons across countries to missing data and measurement error problems. Supplemental materials for this article may be downloaded from the JBES website.
0735-0015
61-72
Nicoletti, C.
2ba1d079-0799-45ec-9f37-6af8166e0056
Peracchi, F.
9ae7a285-1675-4fc5-847a-0f2484941afb
Foliano, F.
323e8871-4b9f-4a78-b22f-39f4e46eca39
Nicoletti, C.
2ba1d079-0799-45ec-9f37-6af8166e0056
Peracchi, F.
9ae7a285-1675-4fc5-847a-0f2484941afb
Foliano, F.
323e8871-4b9f-4a78-b22f-39f4e46eca39

Nicoletti, C., Peracchi, F. and Foliano, F. (2012) Estimating income poverty in the presence of missing data and measurement error. Journal of Business and Economic Statistics, 29 (1), 61-72. (doi:10.1198/jbes.2010.07185).

Record type: Article

Abstract

Reliable measures of poverty are an essential statistical tool for public policies aimed at reducing poverty. In this article we consider the reliability of income poverty measures based on survey data which are typically plagued by missing data and measurement error. Neglecting these problems can bias the estimated poverty rates. We show how to derive upper and lower bounds for the population poverty rate using the sample evidence, an upper bound on the probability of misclassifying people into poor and nonpoor, and instrumental or monotone instrumental variable assumptions. By using the European Community Household Panel, we compute bounds for the poverty rate in 10 European countries and study the sensitivity of poverty comparisons across countries to missing data and measurement error problems. Supplemental materials for this article may be downloaded from the JBES website.

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Published date: 1 January 2012

Identifiers

Local EPrints ID: 509895
URI: http://eprints.soton.ac.uk/id/eprint/509895
ISSN: 0735-0015
PURE UUID: 49d6c64c-3cdb-4212-8ff1-f231100943d3
ORCID for F. Foliano: ORCID iD orcid.org/0000-0003-0145-3434

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Date deposited: 10 Mar 2026 17:50
Last modified: 11 Mar 2026 03:13

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Contributors

Author: C. Nicoletti
Author: F. Peracchi
Author: F. Foliano ORCID iD

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