GEO_2005_HIS_v01_M
Household Integrated Survey 2005
Name | Country code |
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Georgia | GEO |
Income/Expenditure/Household Survey [hh/ies]
A survey on household incomes and expenditures was introduced in Georgia in the second half of 1996 and has been carried out each year since then (on a quarterly basis). The survey was revised significantly in 2002. National Statistics Office of Georgia following to a large extent unchanged poverty measurement methodology established in 1997, has regularly calculated and published poverty measurement results.
The Household Integrated Survey (HIS) in Georgia has been conducted regularly from 1996 and has served to assess the level of consumption-based poverty since then. The HIS represents quarterly panel data. The survey covers 13,404 households over the year. Each month 1/12 of the sample is refreshed (about 228 households are changed in 25 census units).
Sample survey data [ssd]
The scope of the Household Integrated Survey includes:
National
The survey covers 13,404 households over the year. Each month 1/12 of the sample is refreshed (about 228 households are changed in 25 census units).
The survey covers all household members, excluding persons fully supported by the state, for example persons staying in homes for the elderly and the disabled, children in public care institutions, prisoners, etc.
Name |
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National Statistics Office of Georgia |
Name |
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National Statistics Office of Georgia |
The survey consists in quarterly interviewing households in Tbilisi and nine regions of Georgia:
The 1989 Population Census served as a sampling frame of the household survey untill 2002. A new census was conducted in early 2002, which enabled development of new sampling design. Transiton to the new sampling design began in April 2002.
In the new design of the survey, stratification of each reagion was mainly carried out by settlement type and settlement altitude. Three types of settled areas according to the structure of employment and incomes were identified: (a) large cities (with population over 50,000); (b) small cities (with population under 50,000); and (c) villages. By altitude, the settlements can be divided into two groups: (1) highland settled areas; and (2) lowland settled areas.
The households are selected according to the same principle as in the old design, but using information from 2002 Population Census.
When the data of the sample survey are expanded to the total population, each household included in the sample is given a statistical weighting which characterizes the total number of households represented by the selected household. The average value of basic weighting is 600 i.e. Each selected household is a representation of about 600 households.
The following factors are used for constructing a basic weighting:
Probability of selecting each big city, small town and village council.
Probability of selecting each constituency in big cities/small towns and the zone in village councils.
Probability of selecting each household within the constituency and the zone included in the sample.
The inverse value of the product of the three probabilities is the basic weighting of a household:
1
WB_k = -------------------- ,
p1_k p2_k p3_k
where
k is the number of a household.
The total of all basic weightings gives the estimate of the number of all household of the country and is constant during the whole year:
sum_(i= 1 to n ) WB_k = N ,
where
n is the size of sample;
n is the estimate of the total population.
The earlier described method of constructing a household sample did not take into account that some households will not be surveyed for one or the other reason such as impossibility to get the household at home despite numerous attempts, illness, categorical refusal to provide information or for other reasons. If the estimate comprises only the households that agreed to be surveyed, the results of the survey will be understated.
There are different methods of making adjustments for missing answers. One of them is the adjustment of basic weighting i.E. Statistical re-weighting which is based on overstating the weighting of respondents having certain characteristics which are peculiar for those who refused from participating in the survey.
Based on checking the data the variables are selected which will be then used for statistical re-weighting such as :
region.
Place of residence (big city, small town, village).
Type of accommodation (individual apartment, individual house, communal flat, part of a house, hostel).
Size of the household (single individuals and households consisting of 2, 3, 4 and more people).
ADJUSTMENT OF BASIC WEIGHTING FOR NON-RESIDENTIAL APARTMENTS - During the baseline interview there might be a situation when the selected apartment is non-residential (it can be used as a shop, office premises and etc.). As the addresses of such apartments were accounted for when forming a sample (i.E. They influenced the probability of selecting other addresses), it is needed to adjust basic weightings to eliminate distortions. To enhance the accuracy of calculations, all selected households are divided into groups depending on regional location. These groups are called weighting units. Basic weightings are thus adjusted in accordance with the formula:
sum_(j= 1 to L_k )WB_k_j + sum_(j= 1 to M_k )WB_k_j
WV_k, = --------------------------------------------------------------------------------- ,
sum_(j= 1 to M_k )WB_k_j
where
k = 1,7 is the number of the region;
WV_k_i is the weighting of the “i” household of the “k” region adjusted for non-residential apartments;
WB_k_i is the basic weighting of the “i” household of the “k” region;
L_k is the number of non-residential apartments in the “k” region;
M_k is the number of the rest of the households in the “k” region.
ADJUSTMENT FOR NON-ANSWERS DURING THE BASELINE INTERVIEW - To make an adjustment for non-answers in the baseline interview, the weighting units are formed based on the following characteristics:
the region, 7 values (the Brest region, ..., the Mogilev region); type of settlement, 3 values (big city, small town, village); type of accommodation, 2 values (individual accommodation (an individual apartment in big cities and small towns and an individual house in villages) or other type of accommodation (communal flat, part of a house, hostel); size of a household, 4 values (1 person, 2 persons, 3 persons, 4 and more persons). After the units are formed, the distribution of households is analyzed in a way that one unit should contain at least 20 households. The new weightings are then calculated based on the modified units. For the “i” household included in the “k” unit, the weighting WBL_ki adjusted for non-answers in the baseline interview can be
sum_(j= 1 to M_k )WV_kj + sum_(j= 1 to N_k )WV_kj
WBL_ki = ----------------------------------------------------------------------- * WV_ki ,
sum_(j= 1 to N_k )WV_kj
where
WV_k_i is the weighting of the “i” household included in the “k” weighting unit adjusted for non-residential apartments;
M_k is the number of non-answers per a baseline interview in the “k” unit;
N_k is the number of answers per a baseline interview in the “k” unit.
In 1996 after an adjustment for non-answers in the baseline interview the average weighting increased to 692.
ADJUSTMENTS IN QUARTERLY INTERVIEWS - The units for an adjustment for non-answers in quarterly interviews are formed based on the same characteristics which are used for the baseline interview. For the “i” household included in the “k” unit formed for the quarter, the weighting WQ_alpha_ki adjusted for non-answers in the quarterly interview is calculated in as follows:
sum(j= 1 to M_k )WQ_a - 1kj + sum(j= 1 to N_k )WQ_a - 1_kj
WQ_a_k_i = ---------------------------------------------------------------------------------------------- * WQ_a - 1ki ,
sum(j= 1 to N_k )WQ_a-1_kj ,
where
a= 1,2,3,4 is the number of the quarter;
WQ_a-1_k_i is the weighting adjusted for non-answers in the quarterly interview for the quarter a-1 for the “j” household included in the “k” unit formed for quarter a and WQ_0_ki ;
M_k is the number of non-answers in the quarterly interview in the “k” unit for quarter a;
N_k is the number of answers in the quarterly interview in the “k” unit for quarter a.
After the baseline interview the average weighting has slightly increased due to high percentage of answers after the first interview. The average weightings are equal to 708, 716, 723 and 726 accordingly for 4 quarters in 1995. It should be noted that the households who miss one interview are withdrawn from the survey. Thus the households who answered the questions of the last interview had also answered the questions of all previous interviews. Therefore, the weighting calculated for the last interview can be used for the households who answered the questions during the whole year. The annual report uses the data on the households who answered the questions during the whole year re-weighted by means of using the last quarter weighting.
The questionnaire consists of eight sections:
Shinda01: general information about living conditions, housing, durables, etc. This section remained unchanged since the household survey was introduced in 1996.
Shinda02: household composition. This section also remained unchanged since the survey inception.
Shinda03: diary expenditure form. This section includes all diary expenditures during one week and it is filled out four times during the households' period of survey.
Shinda04: quarterly expenditures and agricultural activity form. This section covers quarterly expenditures on durables, energy supplies, health care, education, and other services. The questionnaire also collects information about harvest and processing of agricultural products produced by the household, sale and income from selling these products. The questionnaire is filled out four times, simultaneously with diary expenditures form. This section also features "reminder questions", which help households remember their expenditures.
Shinda05: Information about public and private transfers, as well as on changes in household financial and demographic conditions is collected in the section. The substance of the questions was not changed; however their phrasing was adjusted to make them more understandable for respondents.
Shinda05-1: includes information on employment and incomes from employment of adult household members.
Shinda07: refusal form. This section covers information on non-response or non-eligibility. This form helps correct the weights before data processing.
Shinda09: monitoring of poverty in Georgia.
"Shinda" is a Georgian abbreviation for "observation of households."
Start | End | Cycle |
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2005 | 2005 | Quarterly |
Name |
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National Statistics Office of Georgia |
The use of the datasets must be acknowledged using a citation which would include:
Example:
National Statistics Office of Georgia. Georgia Household Integrated Survey (HIS) 2005, Ref. GEO_2005_HIS_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 | URL | |
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National Statistics Office of Georgia | info@geostat.ge | http://www.geostat.ge/ |
DDI_GEO_2005_HIS_v01_M
Name | Affiliation | Role |
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Julia Dukhno | The World Bank | Documentation of the study |
Development Data Group | The World Bank | Review of metadata |
2011-03-24
Version 01