KEN_2013_MICS-BC_v01_M
Multiple Indicator Cluster Survey 2013-2014
Bungoma County
Name | Country code |
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Kenya | KEN |
multiple Indicator Cluster Survey - Round 5 [hh/mics-5]
The Multiple Indicator Cluster Survey (MICS5) 2013 was conducted at county level to provide comprehensive and disaggregated data to partly fill the existing data gaps at this level. This survey is the second of its kind to be conducted at the devolved level after MICS4 was conducted in the six counties of the Nyanza region in 2011. MICS3 was conducted in all the 13 districts of the then Eastern Province in 2008.
MICS5 covered Bungoma, Kakamega and Turkana Counties as part of the fifth global round of Multiple Indicator Cluster Survey series conducted worldwide to provide up-to-date information on the situation of children and women.
Sample survey data [ssd]
The scope of the Bungoma County Multiple Indicator Cluster Survey includes:
HOUSEHOLD QUESTIONNAIRE
INDIVIDUAL WOMEN QUESTIONNAIRE
CHILDREN UNDER 5 QUESTIONNAIRE
National
The survey covered all de jure household members (usual residents), all women aged between 15-49 years and all children under 5 living in the household.
Name | Affiliation |
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Kenya National Bureau of Statistics | |
Population Studies and Research Institute | University of Nairobi |
Name | Role |
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Kenyan Core Technical team | Implementing the MICS |
Name | Role |
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United Nations Children’s Fund | Financial and technical support |
The primary objective of the sample design for the Bungoma County MICS was to produce statistically reliable estimates of indicators, at county level. The urban and rural areas in Bungoma County were the sampling strata. A multi-stage, stratified cluster sampling approach was used for the selection of the survey sample.
MICS5 utilized the recently created fifth National Sample Survey and Evaluation Program (NASSEP V) frame which is a household based master sampling frame developed and maintained by KNBS. The frame was implemented using a multi-tiered structure, in which a set of 4 sub-samples (C1, C2, C3, C4) were developed. It is based on the list of enumeration areas (EAs) from the 2009 Kenya Population and Housing Census. The frame is stratified according to County and further into rural and urban. Each of the sub-samples is representative at county level and at national (i.e. Urban/rural) level and contains 1,340 clusters.
The Primary Sampling Units (PSUs) for the survey were clusters drawn from the NASSEP V sampling frame, so the first component of the probabilities and weights are based on that master sample. Within each stratum the PSUs for the MICS were selected independently from one of the subsamples of the master sample using Equal Probability Selection Method (EPSEM). A total of 50 clusters were selected from the master sample in this way.
Out of the 50 sample clusters selected for Bungoma County, it was established that 30 had been listed more than six months prior to the start of the survey. These listing for these clusters was updated prior to selection of households. For this purpose, listing teams visited each cluster, and listed all occupied households. For the remaining 20 sample clusters a more recent listing was available, so it was used for selecting the sample households.
Information was collected from a total of 1,246 households representing 95 percent response rate. The composition of these households was 5,983 household members comprising 2,797 males and 3,186 females. The mean household size was 4.8 persons. About 48 percent of the sampled households' population is below 15 years, 48 percent are between age 15-64 years and four percent are age 65 years and above.
Due to data quality issues, data relating to mortality and anthropometric measures were not analyzed and reported. Anthropometric data suffered digit preference for both weight and height, while for mortality, deaths especially among children under-five years were under reported. KDHS 2014 had similar shortcomings.
The MICS5 sample was not self-weighting and thus a weighting process was required to provide estimates representative of the target population. Two main sampling weights were calculated: household weights and individual (women and children) weights. The base weights incorporated the probabilities of selection of the clusters from the census EAs database into the NASSEP V sample frame, the probabilities of selection of the MICS clusters from NASSEP V frame and the probabilities of selection of the households from each of the NASSEP V frame clusters.
Base weights were then adjusted for cluster and household non-response by multiplying them by the inverse of the clusters and households response rates. The individual weight of a woman or child was calculated as the household weight multiplied by the inverse of the individual response rate. Given that the MICS5 sample was a two-stage stratified cluster sample, sampling probabilities were calculated separately for each sampling stage.
A set of three questionnaires was used in the survey:
Start | End |
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2013-11-01 | 2014-02-03 |
Name | Affiliation |
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Kenya National Bureau of Statistics | |
Population Studies and Research Institute | University of Nairobi |
Data were entered into the computers using the Census and Surveys Processing System (CSPro) software package, Version 5.0. Data entry was done by a trained team of 14 data entry operators, one archivist/system administrator and one data entry supervisor. For quality assurance purposes, all questionnaires were double-entered and internal consistency checks performed.
Procedures and standard programs developed under the global MICS program and adapted to the Bungoma County MICS questionnaire were used throughout. Data processing began simultaneously with data collection in November 2013 and was completed in February 2014. Data were analyzed using the Statistical Package for Social Sciences (SPSS) software, Version 21. Model syntax and tabulation plans developed by UNICEF were customized and used for this purpose.
The sample of respondents selected in the Bungoma County MICS is only one of the samples that could have been selected from the same population, using the same design and size. Each of these samples would yield results that differ somewhat from the results of the actual sample selected. Sampling errors are a measure of the variability between the estimates from all possible samples. The extent of variability is not known exactly, but can be estimated statistically from the survey data.
The following sampling error measures are presented in this appendix for each of the selected indicators:
For the calculation of sampling errors from the MICS data, programs developed in CSPro Version 5.0, SPSS Version 21 Complex Samples module and CMRJack116 have been used. The results are shown in the tables that follow. In addition to the sampling error measures described above, the tables also include weighted and unweighted counts of denominators for each indicator. Given the use of normalized weights, by comparing the weighted and unweighted counts it is possible to determine whether a particular domain has been under-sampled or over-sampled compared to the average sampling rate. If the weighted count is smaller than the unweighted count, this means that the particular domain had been over-sampled. As explained later in the footnote of Table SE.1, there is an exception in the case of indicators 4.1 and 4.3, for which the unweighted count represents the number of sample households, and the weighted counts reflect the total population.
Sampling errors are calculated for indicators of primary interest, at the county level, and for urban and rural areas within Bungoma County. Three of the selected indicators are based on household's members, eight are based on women, and two are based on children under 5. Table SE.1 shows the list of indicators for which sampling errors are calculated, including the base population (denominator) for each indicator. Tables SE.2 to SE.4 show the calculated sampling errors for selected domains.
Name |
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United Nations Children's Fund |
Is signing of a confidentiality declaration required? | Confidentiality declaration text |
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yes | Users of the data agree to keep confidential all data contained in these datasets and to make no attempt to identify, trace or contact any individual whose data is included in these datasets. |
Survey datasets are distributed at no cost for legitimate research, with the condition that we receive a description of the objectives of any research project that will be using the data prior to authorizing their distribution.
Use of the dataset must be acknowledged using a citation which would include:
Example:
United Nations Children's Fund, Kenya National Bureau of Statistics. Kenya Multiple Indicator Cluster Survey (MICS) 2013, Ref. KEN_2013_MICS-MC_v01_M. Dataset downloaded from [url] 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 | URL | |
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General Inquiries | UNICEF | childinfo@unicef.org | http://www.childinfo.org |
MICS Program Manager | UNICEF | mics@unicef.org | http://www.childinfo.org |
DDI_KEN_2013_MICS-BC_v01_M_WB
Name | Affiliation | Role |
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Development Data Group | The World Bank | Documentation of the DDI |
2016-07-21
v01 (July 2016)
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