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Data collection for demographic

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Title: Data collection for demographic


1
Data collection for demographic vital statistics
  • (Session 01)

2
Module Objectives
  • At the end of this module, you will be able to
  • Explain basic concepts of routine demographic and
    epidemiological data collection procedures
  • Describe and correctly use several commonly
    occurring data summary measures
  • Discuss the value of various techniques for
    organising specialised studies in demography
    epidemiology
  • Undertake some data summarisation and description
    tasks, and
  • Understand, and look critically at, reports of
    demographic and epidemiological studies

3
Learning Objectives
  • At the end of this session, you will be able to
  • Recognise the broad scope of demography, and its
    dependence on basic measures
  • Explain stock and flow measurement
  • Critically discuss some data collection quality
    issues, and
  • List some of the definitional difficulties faced
    in demographic studies

4
What is demography?
  • Demography is the scientific study of human
    populations, primarily with respect to their
    size, their structure and their development (UN
    Multinational Demographic Dictionary 1958).
  • Major themes birth/fertility, death/mortality, as
    well as marriage, social mobility, geographic
    distribution migration.
  • Numerical summaries, but also social scientific
    theories to answer questions like, When and why
    do birth rates fall?

5
Demographic data sources
  • Population census
  • Measures population STOCK.
  • Often decennial aims to count entire popul.n
    plus some inform.n about each member. Large
    size means study must be kept very simple many
    temporary enumerators, everyone able to answer
    the questions.
  • e.g. often replaces household by people who
    slept here on 30th June
  • Find and look at form for your last Census.

6
Demographic data sources
  • 2. Vital registration
  • Measures population FLOW/CHANGE.
  • Usually continuous vital registration covers
    births, marriages and deaths. Often problems as
    to completeness.
  • International migration data often collected by
    different bodies few countries can routinely
    keep track of internal population movements.
  • How good is vital registration where you live?
    What encourages/discourages compliance?

7
Demographic data sources
  • 3. Special studies usually surveys.
  • Measure stocks or flows in more specialised
    circumstances that are inadequately covered in
    routine data collection systems
  • Usually more complex questions, so need very well
    trained interviewers.
  • Thus usually relatively small sample sizes.
  • Sometimes hard to ascertain if individuals
    qualify as part of special population being
    sampled suggest some examples.

8
Nature of demographic data
  • Age some count variables used e.g. no of live
    births a woman aged x has had.
  • Very many demographic statistics use binary data
    e.g. individual died while aged x i.e. 0 or
    lived from exact age x to exact age (x 1) i.e.
    1. A binary datum contains the least amount of
    information that we can measure it is
    hydrogen atom of data collection needs a big
    sample size to provide weight of evidence.
  • Suggest demographic examples of variables of each
    type.

9
Large samples
  • Nationally, a census or even a demographic survey
    usually has very big sample size, so sampling
    error/standard deviation of national estimate is
    often so small it can be ignored. National
    estimates often published with no measure of
    accuracy for this reason.
  • However non-sampling errors may be substantial
    and serious. Three main categories are frame
    errors, non-response errors, and measurement
    errors.

10
Frame Errors
  • Example an out-of-date urban-biased sampling
    frame
  • Omits a disproportionate number of relatively new
    households undocumented in-migrants homeless,
    nomadic and peripheral (e.g. forest dependent)
    people
  • What might this do to estimates of
  • (i) population age distribution? (ii) access to
    health services data? (iii) length-of-stay data?

11
Non-response Errors
  • Example when interviewer leaves an item blank
    it could mean
  • he forgot to ask this question
  • the response was zero
  • the respondent refused to answer
  • the respondent could not understand or could
    not convey an answer that the interviewer
    understood.
  • How should this be avoided?

12
Measurement Error
  • Example Q. How many family members are
    disabled?
  • This is weakly conceptualised who counts as a
    family member e.g. orphans taken in?
  • What constitutes disabled e.g. temporary
    incapacity?
  • Bad questions usually occur along with poor
    training of enumerators, and careless completion.
    All leads to useless data!
  • Discuss how you would improve on above Q.

13
The term demographics
  • Many surveys collect data such as individuals
    age and sex. Set of data classifying a sample
    unit referred to as the demographics.
  • The term is used more widely e.g. in business
    survey basic characteristics such as turnover,
    number of employees, number of sales outlets may
    be referred to in this way.
  • Often these define rows and columns in tables
    e.g. tables by age and sex.
  • Suggest other variables, not very interesting in
    themselves, but needed to subdivide results.

14
Primary importance of demographics
  • The demographic variables that are in use
    constantly - to define almost every output table
    - are very important. They must not be missing,
    and must be accurate.
  • Example in a business survey, respondents may
    not know, or willingly tell, some size measure.
    If that is used in all tables, the rest of the
    responses will never be used in a case where the
    size is missing!
  • Discuss problems with marital status Qs.

15
Difficult concepts
  • Much of demography (and related social science)
    centres on the household or the family. Either
    must be very carefully defined having regard to
    local social patterns and study needs e.g.
    someone employed as daytime primary carer of
    household children may be close or distant
    relative how to count? Some temporary
    migrants would be household and family members,
    but are away include or not?
  • Find out about/discuss variants used in NSS.

16
Difficult information to elicit
  • Example asking 45-year-old woman her complete
    fertility history including all pregnancies,
    spontaneous and induced abortions, still- and
    live-births, multiple births e.g. twins, one
    stillborn, and survival of live-born children.
  • She may need event calendar prompts to remember
    all events and dates may be emotionally
    difficult complex to record accurately.
  • Think of/discuss other difficulties like this.

17
Practical work follows to ensure learning
objectives are achieved
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