In any case however using territorial markers
tagging is important (and to certain extent – the
only reliable) approach that can provide acceptably relevant estimate of the absolute number of
the population in question (and not just shares
as poverty rates and unemployment rates). The
absolute number is crucial for needs assessment
and hence for defining numeric targets. If targets
(and resources) are determined on the basis of
census data, the real needs will be inevitably
underestimated.
3. Ethnic minority boosters in
sample surveys
Household budget surveys (HBS) and labour
force surveys (LFS) are the most important
surveys when looking at issues of poverty, unemployment and social exclusion and the respective
policies to address those issues. Unfortunately,
these surveys in most countries fail to include a
representative sample of ethnic minorities (especially when a minority is small or lives segregated
from the majority) or when it is solely based
on census data. To overcome this sampling
problem and use HBS/LFS as a regular and precise data collection mechanism for minorities,
sampling boosters of the respective minorities
(i.e. increasing the sample size of minorities) or
separate minority samples would be necessary.
However, this is very costly and impossible when
several minorities exist in one country.
Constructing the random sample boosters may
be a problem, mostly because of the unclear
number of the ethnic population. One possible
compromise is accepting the self-identification
principle (during the census) and constructing
a random sample based on the population selfidentified or having declared a respective mother
tongue (ideally both). In this case a minority
booster would bear the “genetic” features (and
problems) of the PIN-based methods for statistical data disaggregation and shares both its
benefits and detriments. An alternative could be
constructing a sample on the basis of territorial
mapping of the ethnic population – assuming
that such mapping is in place. Similar to the latter
is using GIS (Geographic Information System)based sampling, which to large extent is a variety
of territorial tagging.
4. Custom surveys among social
services recipients
This approach entails anonymous questionnaires
(usually brief, consisting of just few questions)
filled in by recipients of social services on voluntary basis. For example, unemployed person
registering at the labour office is invited to fill in
a questionnaire in addition to the regular forms.
The questionnaire may include the field “ethnicity” and is dropped in a sealed box to make
linking of the questionnaire with the standard
application impossible.
Such approach can be a good source of information, both for the ethnic profile of the recipients
of social services and for the way in which their
providers work (for example, are there any
ethnic-based prejudices?). In the best case
scenario (assuming there is no duplication of
questionnaires and their number is close to that
of the recipients of social services) such survey
could be representative just for the recipients,
not for the whole ethnic group.
5. Community-based monitoring
Community-level data is particularly important with regard to monitoring social exclusion
and poverty. Such a system could provide basic
information on the communities in question
based on standard questionnaires completed
on regular basis by a designated member of the
community after receiving training on basic data
collection and reporting techniques. The system
would provide:
Quantitative information on the community
status (number of households, their housing
conditions, number of children attending
school, their age and grade, number of
drop-outs, number of new-born, number of
vaccinated children etc.).
Chapter 9: Data Collection Tools
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