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SWP32RES RESEARCH FOR SOCIAL WORK PRACTICE B

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Title: SWP32RES RESEARCH FOR SOCIAL WORK PRACTICE B


1
SWP32RES RESEARCH FOR SOCIAL WORK PRACTICE B
  • LECTURE FIVE - Sampling

2
The next key point to be addressed in
undertaking a piece of research is
  • Who is that information to be collected from?
  • What particular part of the general population is
    it going to come from?
  • How is that particular part of the population to
    be selected and in what sort of numbers?
  • These are the essential questions to be answered
    in sampling.

3
  • You need to make a decision about exactly which
    individuals, families, groups, organisations,
    communities or events you will examine.
  • In other words, what sample will you choose?

4
  • Researchers tend to select a portion of that
    population for study, that is a sample, and
    either
  • 1) study and describe that sample in some depth
    or
  • 2) attempt to generalise from these findings from
    the sample to the population.

5
  • A well-chosen sample can result in useful
    findings, whereas a carelessly chosen or
    inappropriate sample can negate the value of
    findings in a research study that may otherwise
    be well implemented.

6
  • For sampling purposes, a population is the entire
    collection of people or elements that share some
    defined characteristics.
  • For example, all social workers working in
    community health centres for less than two years
    or elderly parents (more than 65 years of age) of
    intellectually disabled adults.

7
  • A further sub-category of the population is the
    sampling frame which varies from the population,
    in that it is an actual listing of sampling
    elements or cases from which a sample is drawn.
  • The sampling frame is an available list that the
    researcher hopes will be a reasonable
    approximation of the defined population.

8
  • A sample is a subset of individuals selected for
    study from persons or objects within a defined
    population.
  • A case or element is the basic unit of analysis
    in a research study such as each actual person in
    a sample of individuals. Collectively, the
    persons selected for the study constitute the
    sample. Individually, each person is a case or
    element of the sample.

9
  • A representative sample is one that is very
    similar to the population from which it is drawn,
    which is usually ensured by random sampling
    whereby a sample is drawn from a population so
    that every member of the population has an equal
    chance of being selected in the sample.

10
TYPES of SAMPLES
  • There are two general types of samples
  • 1) PROBABILITY and
  • 2) NON-PROBABILITY.

11
PROBABILITY SAMPLING
  • 1) SIMPLE RANDOM SAMPLING
  • 2) SYSTEMATIC RANDOM SAMPLING
  • 3) STRATIFIED RANDOM SAMPLING
  • PROPORTIONAL
  • NON-PROPORTIONAL OR DISPROPORTIONATE

12
  • 4) MULTISTAGE CLUSTER SAMPLING

13
NON PROBABILITY SAMPLING
  • 1) ACCIDENTAL
  • 2) QUOTA
  • 3) PURPOSIVE
  • 4) SNOWBALL

14
  • 5) THEORETICAL

15
  • Probability samples are those that use random
    sampling in at least one stage of the sampling
    process
  • Random does not mean haphazard it means that
    every element in the population has the same
    known probability of being selected for inclusion
    in the sample.

16
  • Nonprobability samples are those that do not use
    random sampling and where some elements of the
    population have a greater or lesser chance of
    being selected.

17
1. Simple random sampling is a sample
in which every element or unit of the target
population has an equal chance of being selected
in the sample. It basically involves randomly
selecting some predetermined number of persons
from the sampling frame.
18
5 steps in selecting a simple random sample
  • 1. Obtain a complete sampling frame
  • 2. Give each case a unique number starting at
    one
  • 3. Decide on the required sample size
  • 4. Select that many numbers by whatever method
  • 5. Select the cases that correspond to the
    randomly chosen numbers.

19
  • 2. Systematic random sampling is a simpler,
    less costly alternative to simple random
    sampling. It involves no random generation of
    numbers

20
  • It involves the researcher determining the number
    in the sampling frame and the sample size, using
    the sampling fraction method (k), where the
    formula is K N/n where N the population and n
    sample..
  • For example, if the sampling frame was 200 and
    the sample size 50, the required sampling
    fraction 200 divided by 50 4. Therefore every
    fourth case in the sampling frame is selected.

21
  • 3. Stratified random sampling improves on a
    simple random sample and a systematic random
    sample by ensuring representation of
    particular subgroups in the population eg.
    male students undertaking a social work course.

22
  • The target population is divided into a number of
    strata and a sample drawn from each stratum.
    Existing knowledge of the population is used to
    increase the representativeness of the sample by
    dividing it into stratifying variables (a
    characteristic on which we want to ensure correct
    representation in the sample.)

23
Stratified random sampling can be further divided
into
  • a) proportional stratified sampling and
  • b) non-proportional or disproportionate
    stratified sampling.

24
  • 4. Another form of probability sampling is
    multistage cluster sampling. This occurs when
    a comprehensive sampling frame does not
    exist and it is not possible to construct one.

25
Cluster random sampling takes place when the
population is divided into clusters or units,
then successively smaller subunits. At each
level, units and subunits are randomly
selected. So cases or a random sample of all
elements within each of the selected clusters
is studied.
26
  • 2) Nonprobability sampling is done when random
    sampling would be inappropriate such as such as
    in an exploratory study when in-depth
    information is required or when a population
    has not fully described or identified or in
    qualitative studies.

27
Nonprobability sampling is divided into
  • 1) Accidental or incidental or convenience or
    availability sampling
  • 2) Quota sampling
  • 3) Purposive sampling or judgemental sampling

28
4) Snowball sampling 5) Theoretical sampling
29
How large should my sample be? (sample size)
  • 2 rules
  • 1) the greater the number the better for
    generalisation
  • 2) how homogenous is your population (how
    alike). If less homogeneous, you will need
    more and a range of strata.

30
Sample Size
  • Depends on
  • 1) resources available for getting the sample
  • 2) the nature of the study and
  • 3) the type of statistical analysis to be used
    in the study.

31
SAMPLING - SOME COMMON TERMS
  • POPULATION
  • SAMPLING FRAME
  • SAMPLE
  • CASE OR ELEMENT

32
  • PROBABILITY SAMPLING
  • RANDOM SAMPLING
  • REPRESENTATIVENESS
  • NON-PROBABILITY SAMPLE
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