Developing Gender-Disaggregated Poverty Small Area Estimates : Technical Report

Small area estimates of poverty and inequality statistics, through survey-to-census imputation that lets consumption be estimated for each and every household in a census, are useful for at least three reasons. First, they can help improve the effe...

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Main Author: World Bank
Format: Report
Language:English
Published: World Bank, Washington, DC 2019
Subjects:
Online Access:http://documents.worldbank.org/curated/en/486731560917670303/Timor-Leste-Poverty-Developing-Gender-Disaggregated-Poverty-Small-Area-Estimates-Technical-Report
http://hdl.handle.net/10986/32018
id okr-10986-32018
recordtype oai_dc
spelling okr-10986-320182021-05-25T09:25:38Z Developing Gender-Disaggregated Poverty Small Area Estimates : Technical Report World Bank DEMOGRAPHIC AND HEALTH SURVEY POVERTY RATE SMALL AREA ESTIMATION POVERTY LINE POVERTY MAP GENDER Small area estimates of poverty and inequality statistics, through survey-to-census imputation that lets consumption be estimated for each and every household in a census, are useful for at least three reasons. First, they can help improve the effectiveness of public spending, by targeting to prevent the leakage of benefits to the non-poor (and prevent the under-coverage of the poor). If poor people are concentrated in certain areas, spatial targeting by directing extra development projects and public services to those areas, may be more feasible than trying to individually target the poor. Geographic targeting is highly relevant in countries like Timor Leste, where mountainous topography contributes to high levels of heterogeneity. In similar environments, such as Papua New Guinea, the enclave nature of some modern economic development has created high levels of spatial inequality. The basic details are that household survey data are used to estimate a model of consumption, with explanatory variables restricted to those that have overlapping distributions from a census. The coefficients from this model are then combined with the variables from the census, and consumption is predicted for each household in the census. With these predictions available for all households, inequality and poverty statistics can be estimated for small geographic areas (Elbers et al, 2003).2 In the results below, the poverty statistics that are calculated by using the predicted consumption data for each census household are reported at the suco level (n=442). For the headcount poverty rate, the standard errors at the suco level (relative to the poverty index) average one-quarter and so this is a comparable degree of precision to what the survey offered at the municipality level (n=13) for a variable like the poverty severity index. 2019-07-02T19:04:32Z 2019-07-02T19:04:32Z 2019-06-18 Report http://documents.worldbank.org/curated/en/486731560917670303/Timor-Leste-Poverty-Developing-Gender-Disaggregated-Poverty-Small-Area-Estimates-Technical-Report http://hdl.handle.net/10986/32018 English CC BY 3.0 IGO http://creativecommons.org/licenses/by/3.0/igo World Bank World Bank, Washington, DC Economic & Sector Work :: Other Poverty Study Economic & Sector Work East Asia and Pacific Timor-Leste
repository_type Digital Repository
institution_category Foreign Institution
institution Digital Repositories
building World Bank Open Knowledge Repository
collection World Bank
language English
topic DEMOGRAPHIC AND HEALTH SURVEY
POVERTY RATE
SMALL AREA ESTIMATION
POVERTY LINE
POVERTY MAP
GENDER
spellingShingle DEMOGRAPHIC AND HEALTH SURVEY
POVERTY RATE
SMALL AREA ESTIMATION
POVERTY LINE
POVERTY MAP
GENDER
World Bank
Developing Gender-Disaggregated Poverty Small Area Estimates : Technical Report
geographic_facet East Asia and Pacific
Timor-Leste
description Small area estimates of poverty and inequality statistics, through survey-to-census imputation that lets consumption be estimated for each and every household in a census, are useful for at least three reasons. First, they can help improve the effectiveness of public spending, by targeting to prevent the leakage of benefits to the non-poor (and prevent the under-coverage of the poor). If poor people are concentrated in certain areas, spatial targeting by directing extra development projects and public services to those areas, may be more feasible than trying to individually target the poor. Geographic targeting is highly relevant in countries like Timor Leste, where mountainous topography contributes to high levels of heterogeneity. In similar environments, such as Papua New Guinea, the enclave nature of some modern economic development has created high levels of spatial inequality. The basic details are that household survey data are used to estimate a model of consumption, with explanatory variables restricted to those that have overlapping distributions from a census. The coefficients from this model are then combined with the variables from the census, and consumption is predicted for each household in the census. With these predictions available for all households, inequality and poverty statistics can be estimated for small geographic areas (Elbers et al, 2003).2 In the results below, the poverty statistics that are calculated by using the predicted consumption data for each census household are reported at the suco level (n=442). For the headcount poverty rate, the standard errors at the suco level (relative to the poverty index) average one-quarter and so this is a comparable degree of precision to what the survey offered at the municipality level (n=13) for a variable like the poverty severity index.
format Report
author World Bank
author_facet World Bank
author_sort World Bank
title Developing Gender-Disaggregated Poverty Small Area Estimates : Technical Report
title_short Developing Gender-Disaggregated Poverty Small Area Estimates : Technical Report
title_full Developing Gender-Disaggregated Poverty Small Area Estimates : Technical Report
title_fullStr Developing Gender-Disaggregated Poverty Small Area Estimates : Technical Report
title_full_unstemmed Developing Gender-Disaggregated Poverty Small Area Estimates : Technical Report
title_sort developing gender-disaggregated poverty small area estimates : technical report
publisher World Bank, Washington, DC
publishDate 2019
url http://documents.worldbank.org/curated/en/486731560917670303/Timor-Leste-Poverty-Developing-Gender-Disaggregated-Poverty-Small-Area-Estimates-Technical-Report
http://hdl.handle.net/10986/32018
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