This is Wave 3 of the survey. Data collection dates were as follows:
- Wave 1: February - September 2015
- Wave 2: February - June 2016
- Wave 3: September 2016 - March 2017
- Wave 4: May - August 2017
Between September 2016 and March 2017, World Bank in collaboration with South Sudan’s National Bureau of Statistics, funded by DfID, conducted the third wave of the High Frequency Survey South Sudan to monitor welfare and perceptions of citizens. This dataset contains information on security, economic conditions, education, employment, access to services, and perceptions. It also includes comprehensive information on assets and consumption, to allow estimation of poverty based on the Rapid Consumption methodology as detailed in Pape and Mistiaen (2014).
Kind of Data
Sample survey data [ssd]
Unit of Analysis
This version includes both the processed and cleaned data, as well as the code for the cleaning process.
3/20/2020 - Input data files and replication programs removed form dissemination package.
The scope of the survey includes:
- Household : Household listing, household characteristics: household member information (relation to head, migration, education, occupation, employment status, earnings) household head module (marital status, migration,tribe, religion, housing type and tenure, amenities, land ownership and use, proximity to school and market, hunger, livelihood)
- Food consumption - quantity, price and source
- Non-food consumption - quantity, price and source
- Durable goods
- Physical, Psychological and Social Well-Being
Seven of South Sudan's ten former states: Western Equatoria, Central Equatoria, Eastern Equatoria, Northern Bahr-El-Ghazl, Western Bahr-El-Ghazal, Warrap and Lakes state.
Producers and sponsors
Utz J. Pape
IBRD - World Bank
South Sudan's National Bureau of Statistics
U.K. Department for International Development
The design employs a stratified clustered design. Within each of the 7 strata (7 states, urban and rural areas) the primary sampling units are enumeration areas (EAs) that were drawn randomly proportional to size. Within EAs, a listing was conducted for the new enumeration areas introduced into the sample and 12 households were drawn randomly as unit of observation.
Deviations from the Sample Design
EAs were replaced if security rendered field work unfeasible. Replacements were approved by the project manager. Replacement of households were approved by the supervisor after a total of three unsuccessful visits to the household.
The sampling weight is the inverse probability of selection. The selection probability for a household can be decomposed into the selection probability of the EA and the selection probability of the household within the EA. The selection probability of an EA is calculated as the number of households within the EA divided by the number of households within the stratum multiplied by the number of selected EAs in the stratum estimated using the 2008 Census. The selection probability for a household within an EA is constant across households and is calculated as the number of households selected in the EA over the number of listed households in the EA. Sampling weights were then scaled to equal the number of households per strata using the Census 2008 data.
Dates of Data Collection
Data Collection Mode
Computer Assisted Personal Interview [capi]
The questionnaire comprises the following modules
Module B: Household Roster
Module C: Household Head
Module D: Household Characterisitcs
Module E: Food consumption
Module F: Non-food consumption
Module G: Livestock
Module H: Durable goods
Module I: Physical, Psychological and Social Well-Being
Module J: Enumerator Conclusions
The questionnaire is provided under the Related Materials tab.
See accompanying Stata do-files, available under the related materials tab
Utz J. Pape
IBRD - World Bank
Before being granted access to the dataset, all users have to formally agree:
1. To make no copies of any files or portions of files to which s/he is granted access except those authorized by the data depositor.
2. Not to use any technique in an attempt to learn the identity of any person, establishment, or sampling unit not identified on public use data files.
3. To hold in strictest confidence the identification of any establishment or individual that may be inadvertently revealed in any documents or discussion, or analysis. Such inadvertent identification revealed in her/his analysis will be immediately brought to the attention of the data depositor.
The dataset has been anonymized and is available as a Public Use Dataset. It is accessible to all for statistical and research purposes only, under the following terms and conditions:
1. The data and other materials will not be redistributed or sold to other individuals, institutions, or organizations without the written agreement of the World Bank Microdata Library.
2. The data will be used for statistical and scientific research purposes only. They will be used solely for reporting of aggregated information, and not for investigation of specific individuals or organizations.
3. No attempt will be made to re-identify respondents, and no use will be made of the identity of any person or establishment discovered inadvertently. Any such discovery would immediately be reported to the World Bank Microdata Library.
4. No attempt will be made to produce links among datasets provided by the World Bank Microdata Library, or among data from the World Bank Microdata Library and other datasets that could identify individuals or organizations.
5. Any books, articles, conference papers, theses, dissertations, reports, or other publications that employ data obtained from the World Bank Microdata Library will cite the source of data in accordance with the Citation Requirement provided with each dataset.
Use of the dataset must be acknowledged using a citation which would include:
- the Identification of the Primary Investigator
- the title of the survey (including country, acronym and year of implementation)
- the survey reference number
- the source and date of download
Pape, Utz. World Bank. South Sudan High Frequency Survey 2016, Wave 3 (HFS-W3 2016). Ref. SSD_2016_HFS-W3_v03_M. Downloaded from [URI] on [Date]
Disclaimer and copyrights
The user of the data acknowledges that the original collector of the data, the authorized distributor of the data, and the relevant funding agency bear no responsibility for use of the data or for interpretations or inferences based upon such uses.
DDI Document ID
Development Economics Data Group
The World Bank
Documentation of the DDI
Date of Metadata Production
DDI Document version
Version 03 (March 2020)
Input data and replication programs removed from the documentation and from the dissemination package.