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Disaggregate level estimates and spatial mapping of food insecurity in Bangladesh by linking survey and census data

Disaggregate level estimates and spatial mapping of food insecurity in Bangladesh by linking survey and census data
Disaggregate level estimates and spatial mapping of food insecurity in Bangladesh by linking survey and census data
Food insecurity is an important and persistent social issue in Bangladesh. Existing data based on socio-economic surveys produce divisional and nationally representative food insecurity estimates but these surveys cannot be used directly to generate reliable district level estimates. We deliberate small area estimation (SAE) approach for estimating the food insecurity status at district level in Bangladesh by combining Household Income and Expenditure Survey 2010 with the Bangladesh Population and Housing Census 2011. The food insecurity prevalence, gap and severity status have been determined based on per capita calorie intake with a threshold of 2122 kcal per day, as specified by the Bangladesh Bureau of Statistics. The results show that the food insecurity estimates generated from SAE are precise and representative of the spatial heterogeneity in the socioeconomic conditions than do the direct estimates. The maps showing the food insecurity indicators by district indicate that a number of districts in northern and southern parts are more vulnerable in terms of all indicators. These maps will guide the government, international organizations, policymakers and development partners for efficient resource allocation.
1932-6203
Hossain, Md Jamal
3b4f5a47-c0a3-407b-88c0-ec936e70faf3
Das, Sumonkanti
20088ff1-85ab-4060-ac87-7edf6196da88
Chandra, Hukum
a7613f1e-3693-45b8-b600-30364c3712cb
Islam, Mohammad Amirul
a9205727-5330-42ab-8de1-75f34ff68764
Hossain, Md Jamal
3b4f5a47-c0a3-407b-88c0-ec936e70faf3
Das, Sumonkanti
20088ff1-85ab-4060-ac87-7edf6196da88
Chandra, Hukum
a7613f1e-3693-45b8-b600-30364c3712cb
Islam, Mohammad Amirul
a9205727-5330-42ab-8de1-75f34ff68764

Hossain, Md Jamal, Das, Sumonkanti, Chandra, Hukum and Islam, Mohammad Amirul (2020) Disaggregate level estimates and spatial mapping of food insecurity in Bangladesh by linking survey and census data. PLoS ONE, 15 (4), [e0230906]. (doi:10.1371/journal.pone.0230906).

Record type: Article

Abstract

Food insecurity is an important and persistent social issue in Bangladesh. Existing data based on socio-economic surveys produce divisional and nationally representative food insecurity estimates but these surveys cannot be used directly to generate reliable district level estimates. We deliberate small area estimation (SAE) approach for estimating the food insecurity status at district level in Bangladesh by combining Household Income and Expenditure Survey 2010 with the Bangladesh Population and Housing Census 2011. The food insecurity prevalence, gap and severity status have been determined based on per capita calorie intake with a threshold of 2122 kcal per day, as specified by the Bangladesh Bureau of Statistics. The results show that the food insecurity estimates generated from SAE are precise and representative of the spatial heterogeneity in the socioeconomic conditions than do the direct estimates. The maps showing the food insecurity indicators by district indicate that a number of districts in northern and southern parts are more vulnerable in terms of all indicators. These maps will guide the government, international organizations, policymakers and development partners for efficient resource allocation.

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Accepted/In Press date: 12 March 2020
Published date: 10 April 2020

Identifiers

Local EPrints ID: 490935
URI: http://eprints.soton.ac.uk/id/eprint/490935
ISSN: 1932-6203
PURE UUID: ec24c6a8-28ca-40dc-9191-7bb13d5e2ced

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Date deposited: 10 Jun 2024 16:32
Last modified: 14 Jun 2024 17:19

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Contributors

Author: Md Jamal Hossain
Author: Sumonkanti Das
Author: Hukum Chandra
Author: Mohammad Amirul Islam

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