SAE - A Stata Package for Unit Level Small Area Estimation

This paper presents a new family of Stata functions devoted to small area estimation. Small area methods attempt to solve low representativeness of surveys within areas, or the lack of data for specific areas/sub-populations. This is accomplished by incorporating information from outside sources. Such target data sets are becoming increasingly available and can take the form of a traditional population census, but also large scale administrative records from tax administrations, or geospatial information produced using remote sensing. The strength of these target data sets is their granularity on the subpopulations of interest, however, in many cases they lack the ability to collect analytically relevant variables such as welfare or caloric intake. The family of functions introduced follow a modular design to have the flexibility with which these can be expanded in the future. This can be accomplished by the authors and/or other collaborators from the Stata community. Thus far, a major limitation of such analysis in Stata has been the large size of target data sets. The package introduces new mata functions and a plugin used to circumvent memory limitations that inevitably arise when working with big data. From an estimation perspective, the paper starts by implementing a methodology that has been widely used for the production of several poverty maps.

Saved in:
Bibliographic Details
Main Authors: Nguyen, Minh Cong, Corral, Paul, Azevedo, Joao Pedro, Zhao, Qinghua
Format: Working Paper biblioteca
Language:English
Published: World Bank, Washington, DC 2018-10
Subjects:SMALL AREA ESTIMATION, POVERTY MAPPING, BIG DATA, GEOSPATIAL ECONOMICS, STATA, REMOTE SENSING,
Online Access:http://documents.worldbank.org/curated/en/398721540906483895/sae-A-Stata-Package-for-Unit-Level-Small-Area-Estimation
https://hdl.handle.net/10986/30650
Tags: Add Tag
No Tags, Be the first to tag this record!
id dig-okr-1098630650
record_format koha
spelling dig-okr-10986306502024-08-09T07:29:28Z SAE - A Stata Package for Unit Level Small Area Estimation Nguyen, Minh Cong Corral, Paul Azevedo, Joao Pedro Zhao, Qinghua SMALL AREA ESTIMATION POVERTY MAPPING BIG DATA GEOSPATIAL ECONOMICS STATA REMOTE SENSING This paper presents a new family of Stata functions devoted to small area estimation. Small area methods attempt to solve low representativeness of surveys within areas, or the lack of data for specific areas/sub-populations. This is accomplished by incorporating information from outside sources. Such target data sets are becoming increasingly available and can take the form of a traditional population census, but also large scale administrative records from tax administrations, or geospatial information produced using remote sensing. The strength of these target data sets is their granularity on the subpopulations of interest, however, in many cases they lack the ability to collect analytically relevant variables such as welfare or caloric intake. The family of functions introduced follow a modular design to have the flexibility with which these can be expanded in the future. This can be accomplished by the authors and/or other collaborators from the Stata community. Thus far, a major limitation of such analysis in Stata has been the large size of target data sets. The package introduces new mata functions and a plugin used to circumvent memory limitations that inevitably arise when working with big data. From an estimation perspective, the paper starts by implementing a methodology that has been widely used for the production of several poverty maps. 2018-11-01T18:44:01Z 2018-11-01T18:44:01Z 2018-10 Working Paper Document de travail Documento de trabajo http://documents.worldbank.org/curated/en/398721540906483895/sae-A-Stata-Package-for-Unit-Level-Small-Area-Estimation https://hdl.handle.net/10986/30650 English Policy Research Working Paper;No. 8630 CC BY 3.0 IGO http://creativecommons.org/licenses/by/3.0/igo World Bank application/pdf text/plain World Bank, Washington, DC
institution Banco Mundial
collection DSpace
country Estados Unidos
countrycode US
component Bibliográfico
access En linea
databasecode dig-okr
tag biblioteca
region America del Norte
libraryname Biblioteca del Banco Mundial
language English
topic SMALL AREA ESTIMATION
POVERTY MAPPING
BIG DATA
GEOSPATIAL ECONOMICS
STATA
REMOTE SENSING
SMALL AREA ESTIMATION
POVERTY MAPPING
BIG DATA
GEOSPATIAL ECONOMICS
STATA
REMOTE SENSING
spellingShingle SMALL AREA ESTIMATION
POVERTY MAPPING
BIG DATA
GEOSPATIAL ECONOMICS
STATA
REMOTE SENSING
SMALL AREA ESTIMATION
POVERTY MAPPING
BIG DATA
GEOSPATIAL ECONOMICS
STATA
REMOTE SENSING
Nguyen, Minh Cong
Corral, Paul
Azevedo, Joao Pedro
Zhao, Qinghua
SAE - A Stata Package for Unit Level Small Area Estimation
description This paper presents a new family of Stata functions devoted to small area estimation. Small area methods attempt to solve low representativeness of surveys within areas, or the lack of data for specific areas/sub-populations. This is accomplished by incorporating information from outside sources. Such target data sets are becoming increasingly available and can take the form of a traditional population census, but also large scale administrative records from tax administrations, or geospatial information produced using remote sensing. The strength of these target data sets is their granularity on the subpopulations of interest, however, in many cases they lack the ability to collect analytically relevant variables such as welfare or caloric intake. The family of functions introduced follow a modular design to have the flexibility with which these can be expanded in the future. This can be accomplished by the authors and/or other collaborators from the Stata community. Thus far, a major limitation of such analysis in Stata has been the large size of target data sets. The package introduces new mata functions and a plugin used to circumvent memory limitations that inevitably arise when working with big data. From an estimation perspective, the paper starts by implementing a methodology that has been widely used for the production of several poverty maps.
format Working Paper
topic_facet SMALL AREA ESTIMATION
POVERTY MAPPING
BIG DATA
GEOSPATIAL ECONOMICS
STATA
REMOTE SENSING
author Nguyen, Minh Cong
Corral, Paul
Azevedo, Joao Pedro
Zhao, Qinghua
author_facet Nguyen, Minh Cong
Corral, Paul
Azevedo, Joao Pedro
Zhao, Qinghua
author_sort Nguyen, Minh Cong
title SAE - A Stata Package for Unit Level Small Area Estimation
title_short SAE - A Stata Package for Unit Level Small Area Estimation
title_full SAE - A Stata Package for Unit Level Small Area Estimation
title_fullStr SAE - A Stata Package for Unit Level Small Area Estimation
title_full_unstemmed SAE - A Stata Package for Unit Level Small Area Estimation
title_sort sae - a stata package for unit level small area estimation
publisher World Bank, Washington, DC
publishDate 2018-10
url http://documents.worldbank.org/curated/en/398721540906483895/sae-A-Stata-Package-for-Unit-Level-Small-Area-Estimation
https://hdl.handle.net/10986/30650
work_keys_str_mv AT nguyenminhcong saeastatapackageforunitlevelsmallareaestimation
AT corralpaul saeastatapackageforunitlevelsmallareaestimation
AT azevedojoaopedro saeastatapackageforunitlevelsmallareaestimation
AT zhaoqinghua saeastatapackageforunitlevelsmallareaestimation
_version_ 1807154663875674112