Adaptive Safety Nets for Rural Africa : Drought-Sensitive Targeting with Sparse Data

This paper combines remote-sensed data and individual child-, mother-, and household-level data from the Demographic and Health Surveys for five countries in Sub-Saharan Africa (Malawi, Tanzania, Mozambique, Zambia, and Zimbabwe) to design a protot...

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Main Authors: Baez, Javier E., Kshirsagar, Varun, Skoufias, Emmanuel
Format: Working Paper
Language:English
Published: World Bank, Washington, DC 2019
Subjects:
Online Access:http://documents.worldbank.org/curated/en/104851575303189267/Adaptive-Safety-Nets-for-Rural-Africa-Drought-Sensitive-Targeting-with-Sparse-Data
http://hdl.handle.net/10986/33014
id okr-10986-33014
recordtype oai_dc
spelling okr-10986-330142022-09-20T00:14:13Z Adaptive Safety Nets for Rural Africa : Drought-Sensitive Targeting with Sparse Data Baez, Javier E. Kshirsagar, Varun Skoufias, Emmanuel SAFETY NETS POVERTY CHILD WELFARE CLIMATE CHANGE TARGETING SOCIAL PROTECTION MALNUTRITION STUNTING This paper combines remote-sensed data and individual child-, mother-, and household-level data from the Demographic and Health Surveys for five countries in Sub-Saharan Africa (Malawi, Tanzania, Mozambique, Zambia, and Zimbabwe) to design a prototype drought-contingent targeting framework that may be used in scarce-data contexts. To accomplish this, the paper: (i) develops simple and easy-to-communicate measures of drought shocks; (ii) shows that droughts have a large impact on child stunting in these five countries -- comparable, in size, to the effects of mother's illiteracy and a fall to a lower wealth quintile; and (iii) shows that, in this context, decision trees and logistic regressions predict stunting as accurately (out-of-sample) as machine learning methods that are not interpretable. Taken together, the analysis lends support to the idea that a data-driven approach may contribute to the design of policies that mitigate the impact of climate change on the world's most vulnerable populations. 2019-12-13T20:58:27Z 2019-12-13T20:58:27Z 2019-12 Working Paper http://documents.worldbank.org/curated/en/104851575303189267/Adaptive-Safety-Nets-for-Rural-Africa-Drought-Sensitive-Targeting-with-Sparse-Data http://hdl.handle.net/10986/33014 English Policy Research Working Paper;No. 9071 CC BY 3.0 IGO http://creativecommons.org/licenses/by/3.0/igo World Bank World Bank, Washington, DC Publications & Research Publications & Research :: Policy Research Working Paper Africa Sub-Saharan Africa Malawi Mozambique Tanzania Zambia Zimbabwe
repository_type Digital Repository
institution_category Foreign Institution
institution Digital Repositories
building World Bank Open Knowledge Repository
collection World Bank
language English
topic SAFETY NETS
POVERTY
CHILD WELFARE
CLIMATE CHANGE
TARGETING
SOCIAL PROTECTION
MALNUTRITION
STUNTING
spellingShingle SAFETY NETS
POVERTY
CHILD WELFARE
CLIMATE CHANGE
TARGETING
SOCIAL PROTECTION
MALNUTRITION
STUNTING
Baez, Javier E.
Kshirsagar, Varun
Skoufias, Emmanuel
Adaptive Safety Nets for Rural Africa : Drought-Sensitive Targeting with Sparse Data
geographic_facet Africa
Sub-Saharan Africa
Malawi
Mozambique
Tanzania
Zambia
Zimbabwe
relation Policy Research Working Paper;No. 9071
description This paper combines remote-sensed data and individual child-, mother-, and household-level data from the Demographic and Health Surveys for five countries in Sub-Saharan Africa (Malawi, Tanzania, Mozambique, Zambia, and Zimbabwe) to design a prototype drought-contingent targeting framework that may be used in scarce-data contexts. To accomplish this, the paper: (i) develops simple and easy-to-communicate measures of drought shocks; (ii) shows that droughts have a large impact on child stunting in these five countries -- comparable, in size, to the effects of mother's illiteracy and a fall to a lower wealth quintile; and (iii) shows that, in this context, decision trees and logistic regressions predict stunting as accurately (out-of-sample) as machine learning methods that are not interpretable. Taken together, the analysis lends support to the idea that a data-driven approach may contribute to the design of policies that mitigate the impact of climate change on the world's most vulnerable populations.
format Working Paper
author Baez, Javier E.
Kshirsagar, Varun
Skoufias, Emmanuel
author_facet Baez, Javier E.
Kshirsagar, Varun
Skoufias, Emmanuel
author_sort Baez, Javier E.
title Adaptive Safety Nets for Rural Africa : Drought-Sensitive Targeting with Sparse Data
title_short Adaptive Safety Nets for Rural Africa : Drought-Sensitive Targeting with Sparse Data
title_full Adaptive Safety Nets for Rural Africa : Drought-Sensitive Targeting with Sparse Data
title_fullStr Adaptive Safety Nets for Rural Africa : Drought-Sensitive Targeting with Sparse Data
title_full_unstemmed Adaptive Safety Nets for Rural Africa : Drought-Sensitive Targeting with Sparse Data
title_sort adaptive safety nets for rural africa : drought-sensitive targeting with sparse data
publisher World Bank, Washington, DC
publishDate 2019
url http://documents.worldbank.org/curated/en/104851575303189267/Adaptive-Safety-Nets-for-Rural-Africa-Drought-Sensitive-Targeting-with-Sparse-Data
http://hdl.handle.net/10986/33014
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