By Okite Moses
By Okite Moses
By Okite Moses
AND SAMPLING
TECHNIQUES
By
Okite Moses
Session flow
• Introduction
• Study Population
• The concept of sampling
• External validity
• Sample size
• Sampling techniques
Introduction
N=Population
Classification of Sampling
Methods
Sampling
Methods
Probability Non-
Samples probability
Simple
Cluster Judgment Quota
Random
Types of Representative
/Probabilistic Sampling
Simple Random Sampling.
• Each individual in the population of interest has an
equal likelihood and or chance of selection.
• Each possible sample of a given size(n) has a
known and equal probability of being the sample
actually selected.
• Every element is selected independently of every
other elements
• It can be done in two ways by use of lottery
method (with or without replacement) or use of
random numbers
Simple Random Sampling Cont’d
Advantage of Simple Random Sampling.
• Its simple and convenient.
• Saves time.
Disadvantages of simple random sampling
• Bias in selection is common
• Some samples may be over or under
represented.
• There is a high non response error i.e same
of the selected elements may not be traced
Systematic Random sampling
The sample is chosen by selecting a random
starting point and then picking every i th element in
succession from the sampling frame.
The sampling interval, (i) is determined by dividing
the population size(N) by the sample size (n) and
rounding to the nearest, if it not a full number e.g
you want to study 50 teachers out of 500. 500/50=
10. ten becomes your interval. Every tenth teacher
will be selected.
This technique is used when the target population
is relatively large.
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Stratified Sampling
• This involves dividing your population into
homogenous subgroups (strata) and take a
simple random in each sub group.
• Steps
1.Identify and define the population.
2.Determine the desired sample size.
3.Identify the sub group (strata)
4.Classify all members of the population as
members of the identified sub groups
5.Randomly select the sample (can use SRS)
Cont’d
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Types of Stratified random sampling
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Cluster random sampling
• This is a sampling methodology in which
elements of a population are grouped into
clusters and random sampling technique is
then performed on clusters.
• Clustering is similar to stratification in that
both involve partitioning the population into
subgroups.
• It is different in that the sampling cluster is
heterogeneous.
• Mostly used in geographical instances where
the population is scattered.
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Types of Non-representative/non
probabilistic samples
• Quota Sampling
• In this type of sampling the researcher is given
definite instructions about the section of the public
he is to question,
• However the final choice of the actual persons is
left to his own convenience and is not
predetermined
Judgmental sampling
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