The influence of maternal agency on severe child undernutrition in conflict-ridden Nigeria: Modeling heterogeneous treatment effects with machine learning.

Nigeria is one of the fastest growing African economies, yet struggles with armed conflict, poverty, and morbidity. An area of high concern is how this situation affects vulnerable families and their children. A key pathway in improving the situation for children in times of conflict is to reinforce...

Full description

Bibliographic Details
Main Authors: Nadine Kraamwinkel, Hans Ekbrand, Stefania Davia, Adel Daoud
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0208937
id doaj-bc31106a04ae44a79ecede59e401f010
record_format Article
spelling doaj-bc31106a04ae44a79ecede59e401f0102021-03-03T20:58:54ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01141e020893710.1371/journal.pone.0208937The influence of maternal agency on severe child undernutrition in conflict-ridden Nigeria: Modeling heterogeneous treatment effects with machine learning.Nadine KraamwinkelHans EkbrandStefania DaviaAdel DaoudNigeria is one of the fastest growing African economies, yet struggles with armed conflict, poverty, and morbidity. An area of high concern is how this situation affects vulnerable families and their children. A key pathway in improving the situation for children in times of conflict is to reinforce maternal agency, for instance, through education. However, the state of the art of research lacks a clear understanding of how many years of education is needed before children benefit. Due to mother's differing social context and ability, the effect of maternal education varies. We study the heterogeneous treatment effects of maternal agency, here operationalized as length of education, on severe child undernutrition in the context of armed conflict. We deploy a repeated cross-sectional study design, using the Nigeria 2008 and 2013 Demographic and Health Survey (DHS). The sample covers 25,917 children and their respective mothers. A key methodological challenge is to estimate this heterogeneity inductively. The causal inference literature proposes a machine learning approach, Bayesian Additive Regression Trees (BART), as a promising avenue to overcome this challenge. Based on BART-estimation of the Conditional Average Treatment Effect (CATE) this study confirms earlier findings in that maternal education decreases severe child undernutrition, but only when mothers acquire an education that lasts more than the country's compulsory 9 years; that is 10 years of education and higher. This protective effect remains even during the exposure of armed conflict.https://doi.org/10.1371/journal.pone.0208937
collection DOAJ
language English
format Article
sources DOAJ
author Nadine Kraamwinkel
Hans Ekbrand
Stefania Davia
Adel Daoud
spellingShingle Nadine Kraamwinkel
Hans Ekbrand
Stefania Davia
Adel Daoud
The influence of maternal agency on severe child undernutrition in conflict-ridden Nigeria: Modeling heterogeneous treatment effects with machine learning.
PLoS ONE
author_facet Nadine Kraamwinkel
Hans Ekbrand
Stefania Davia
Adel Daoud
author_sort Nadine Kraamwinkel
title The influence of maternal agency on severe child undernutrition in conflict-ridden Nigeria: Modeling heterogeneous treatment effects with machine learning.
title_short The influence of maternal agency on severe child undernutrition in conflict-ridden Nigeria: Modeling heterogeneous treatment effects with machine learning.
title_full The influence of maternal agency on severe child undernutrition in conflict-ridden Nigeria: Modeling heterogeneous treatment effects with machine learning.
title_fullStr The influence of maternal agency on severe child undernutrition in conflict-ridden Nigeria: Modeling heterogeneous treatment effects with machine learning.
title_full_unstemmed The influence of maternal agency on severe child undernutrition in conflict-ridden Nigeria: Modeling heterogeneous treatment effects with machine learning.
title_sort influence of maternal agency on severe child undernutrition in conflict-ridden nigeria: modeling heterogeneous treatment effects with machine learning.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description Nigeria is one of the fastest growing African economies, yet struggles with armed conflict, poverty, and morbidity. An area of high concern is how this situation affects vulnerable families and their children. A key pathway in improving the situation for children in times of conflict is to reinforce maternal agency, for instance, through education. However, the state of the art of research lacks a clear understanding of how many years of education is needed before children benefit. Due to mother's differing social context and ability, the effect of maternal education varies. We study the heterogeneous treatment effects of maternal agency, here operationalized as length of education, on severe child undernutrition in the context of armed conflict. We deploy a repeated cross-sectional study design, using the Nigeria 2008 and 2013 Demographic and Health Survey (DHS). The sample covers 25,917 children and their respective mothers. A key methodological challenge is to estimate this heterogeneity inductively. The causal inference literature proposes a machine learning approach, Bayesian Additive Regression Trees (BART), as a promising avenue to overcome this challenge. Based on BART-estimation of the Conditional Average Treatment Effect (CATE) this study confirms earlier findings in that maternal education decreases severe child undernutrition, but only when mothers acquire an education that lasts more than the country's compulsory 9 years; that is 10 years of education and higher. This protective effect remains even during the exposure of armed conflict.
url https://doi.org/10.1371/journal.pone.0208937
work_keys_str_mv AT nadinekraamwinkel theinfluenceofmaternalagencyonseverechildundernutritioninconflictriddennigeriamodelingheterogeneoustreatmenteffectswithmachinelearning
AT hansekbrand theinfluenceofmaternalagencyonseverechildundernutritioninconflictriddennigeriamodelingheterogeneoustreatmenteffectswithmachinelearning
AT stefaniadavia theinfluenceofmaternalagencyonseverechildundernutritioninconflictriddennigeriamodelingheterogeneoustreatmenteffectswithmachinelearning
AT adeldaoud theinfluenceofmaternalagencyonseverechildundernutritioninconflictriddennigeriamodelingheterogeneoustreatmenteffectswithmachinelearning
AT nadinekraamwinkel influenceofmaternalagencyonseverechildundernutritioninconflictriddennigeriamodelingheterogeneoustreatmenteffectswithmachinelearning
AT hansekbrand influenceofmaternalagencyonseverechildundernutritioninconflictriddennigeriamodelingheterogeneoustreatmenteffectswithmachinelearning
AT stefaniadavia influenceofmaternalagencyonseverechildundernutritioninconflictriddennigeriamodelingheterogeneoustreatmenteffectswithmachinelearning
AT adeldaoud influenceofmaternalagencyonseverechildundernutritioninconflictriddennigeriamodelingheterogeneoustreatmenteffectswithmachinelearning
_version_ 1714819439784886272