KEN_2021_RHHS_v01_M
Refugee and Host Household Survey in Nairobi, 2021
Name | Country code |
---|---|
Kenya | KEN |
1-2-3 Survey, phase 1 [hh/123-1]
This cross-sectional survey was conducted with refugee and host community households in Nairobi and conducted between May 22 to July 27, 2021.
Household, Individual
Edited, anonymous dataset for public distribution.
This survey covers the following topics: Household roster, education, labor, housing, consumption and insecurity, vulnerabilities, social cohesion, coping mechanisms, trajectories, remittances, household air pollution (subset of households), women empowerment (1 female respondent per household).
Nairobi county, Kenya
Name | Affiliation |
---|---|
Nistha Sinha | World Bank |
Precious Zikhali | World Bank |
Antonia Johanna Sophie Delius | World Bank |
Nduati Maina Kariu | World Bank |
Name |
---|
Joint Data Center on Forced Displacement |
The survey has two primary samples contained in the ‘sample’ variable: the refugee sample and the host community sample. The refugee sample used the UNHCR database of refugees and asylum seekers in Kenya (proGres) as the sampling frame. ProGres holds information on all registered refugees and asylum seekers in Kenya including their contact information and data on nationality and approximate location of living. We considered only refugees living in Nairobi and implicitly stratified by nationality and location. In total, the sample comprises 2,420 refugee families.
The host community sample differentiates between two types of communities. We consider ‘core’ host communities as residents who live in Eastleigh North, Kayole or Kasarani – at least 10 percent of the Nairobi refugee families reside in each of these areas. Nationals living outside these areas are considered part of the ‘wider’ host community in Nairobi. The samples for both host communities were drawn using a 2-stage cluster design. In the first stage, eligible enumeration areas (EA) were drawn from the list of EAs covering Nairobi taken from the 2019 Population and Housing Census. In the second stage a listing of all host community households was established through a household census within all selected EAs, ensuring that refugee households were excluded to prevent overlap with the refugee sampling frame. 12 households and 6 replacements were drawn per EA. Our total sample consists of 2,433 host community households, 1,221 core hosts and 1,212 wider hosts.
The three sub-samples – refugees, core hosts, and wider hosts – are reflected in the ‘strata’ variable. The EAs which form the primary sampling units for the two host samples are anonymized and included in the ‘psu’ variable. Please note that the ‘psu’ variable clusters refugees under one numeric code (888).
To make the sample representative of the refugee and host community living in Nairobi, cross-sectional weights are constructed in two steps:
Step 1: Construct raw weights combining the two national samples
For both the core and wider host community, the base selection probability of household k is calculated as the product of the probability of selecting EA h of household k and the probability of selecting household k among all the households listed in EA h. The raw weight is calculated as the inverse of the base selection probability. For refugees the raw weight is the inverse of the probability of being sampled from the proGres database.
Step 2: Apply re-weighting
(I) Non-response adjustment
(II) Post-stratification
(I) For refugees we adjust for non-response through a propensity score-based method following 5 steps:
(II) After the non-response adjustment is applied to the raw weights from step 1, we scale weights to population proportions in each stratum. Information on true population sizes for both host communities is obtained from the 2019 Kenya Population and Housing Census conducted by the KNBS (2019 Kenya Population and Housing Census, Volume II: Distribution of Population by Administrative Units, December 2019, Kenya National Bureau of Statistics, https://www.knbs.or.ke/?wpdmpro=2019-kenya-population-and-housing-census-volume-ii-distribution-of-population-by-administrative-units). Population totals for refugees are obtained from UNHCR’s proGres database. The household-level weight variable after post-stratification is ‘weight’ which should be used in the analysis.
The Questionnaire is provided as external resources in pdf format. Questionnaires were produced through the World Bank developed Survey Solutions software. The survey was implemented in English,Swahili and Somali.
Start | End | Cycle |
---|---|---|
2021-05-22 | 2021-07-21 | Wave 1 |
Name |
---|
Altai Consulting (Registered as Lhassa Consulting) |
Trends and Insights for Africa |
PRE-LOADED INFORMATION: Basic household information from the host community household listing (hosts) and UNHCR’s proGres database (refugees) was pre-loaded in survey solutions for each enumerator. The information, for example the household's location, household head name, phone numbers etc, was used to help enumerators identify the target households.
RESPONDENTS: The survey had one main respondent per household. The respondent was any knowledgeable adult aged 18 years or older. For the women empowerment module one woman aged 15-49 was randomly selected from each household and thus the respondent may differ from the main household respondent.
Name |
---|
World Bank |
Name | Affiliation |
---|---|
Precious Zikhali | World Bank |
Nistha Sinha | World Bank |
Antonia Delius | World Bank |
Nduati Maina Kariuki | World Bank |
Use of the dataset must be acknowledged using a citation which would include:
Example:
Nistha Sinha (World Bank), Precious Zikhali (World Bank), Antonia Johanna Sophie Delius (World Bank), Nduati Maina Kariu (World Bank). Kenya - Refugee and Host Household Survey in Nairobi, 2021 (RHHS 2021). Ref: KEN_2021_RHHS_v01_M. Downloaded from [uri] on [date].
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.
Name | Affiliation | |
---|---|---|
Precious Zikhali | World Bank | pzikhali@worldbank.org |
Nistha Sinha | World Bank | nsinha@worldbank.org |
Antonia Delius | World Bank | adelius@worldbank.org |
Nduati Maina Kariuki | World Bank | nkariuki@worldbank.org |
DDI_KEN_2021_RHHS_v01_M_WB
Name | Affiliation | Role |
---|---|---|
Development Data Group | World Bank | Documentation of the study |
2023-10-10
Version 01 (2023-10-10)
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