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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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 |
_version_ |
1764477809000972288 |