Sampling Methods
Sampling Methods - Types and
Techniques :
When you conduct research about a
group of people, it’s rarely possible to collect data from every person in that
group. Instead, you select a sample. The sample is the group of individuals who
will actually participate in the research.
To draw valid conclusions from
your results, you have to carefully decide how you will select a sample that is
representative of the group as a whole. There are two types of sampling
methods:
- Probability sampling involves random
selection, allowing you to make strong statistical inferences about the
whole group.
- Non-probability sampling involves
non-random selection based on convenience or other criteria, allowing you
to easily collect data.
You should clearly explain how
you selected your sample in the methodology section of your paper or
thesis.
Population vs sample
First, you need to understand the
difference between a population and a sample, and identify the target
population of your research.
- The population is the entire group
that you want to draw conclusions about.
- The sample is the specific group
of individuals that you will collect data from.
The population can be defined in
terms of geographical location, age, income, and many other characteristics.
It can be very broad or quite
narrow: maybe you want to make inferences about the whole adult population of
your country; maybe your research focuses on customers of a certain company,
patients with a specific health condition, or students in a single school.
It is important to carefully
define your target population according to the purpose and practicalities
of your project.
If the population is very large,
demographically mixed, and geographically dispersed, it might be difficult to
gain access to a representative sample.
Sampling frame
The sampling frame is the actual
list of individuals that the sample will be drawn from. Ideally, it should
include the entire target population (and nobody who is not part of that
population).
Sample size
The number of individuals you
should include in your sample depends on various factors, including the size
and variability of the population and your research design.
There are different sample size calculators and formulas depending on
what you want to achieve with statistical analysis.
Probability sampling methods
Probability sampling means that
every member of the population has a chance of being selected. It is mainly
used in quantitative research. If you want to produce results that are
representative of the whole population, probability sampling techniques are the
most valid choice.
There are four main types of
probability sample.
1. Simple random sampling
In a simple random sample,
every member of the population has an equal chance of being selected. Your
sampling frame should include the whole population.
To conduct this type of sampling,
you can use tools like random number generators or other techniques that are
based entirely on chance.
Example: Simple random samplingYou want to select a
simple random sample of 100 employees of Company X. You assign a number to
every employee in the company database from 1 to 1000, and use a random number
generator to select 100 numbers.
2. Systematic sampling
Systematic sampling is
similar to simple random sampling, but it is usually slightly easier to
conduct. Every member of the population is listed with a number, but instead of
randomly generating numbers, individuals are chosen at regular intervals.
Example: Systematic sampling- All employees of the company
are listed in alphabetical order. From the first 10 numbers, you randomly
select a starting point: number 6. From number 6 onwards, every 10th person on
the list is selected (6, 16, 26, 36, and so on), and you end up with a sample
of 100 people.
If you use this technique, it is
important to make sure that there is no hidden pattern in the list that might
skew the sample. For example, if the HR database groups employees by team, and
team members are listed in order of seniority, there is a risk that your
interval might skip over people in junior roles, resulting in a sample that is
skewed towards senior employees.
3. Stratified sampling
Stratified sampling involves
dividing the population into subpopulations that may differ in important ways.
It allows you draw more precise conclusions by ensuring that every subgroup is
properly represented in the sample.
To use this sampling method, you
divide the population into subgroups (called strata) based on the relevant
characteristic (e.g. gender, age range, income bracket, job role).
Based on the overall proportions
of the population, you calculate how many people should be sampled from each
subgroup. Then you use random or systematic sampling to select a
sample from each subgroup.
Example: Stratified samplingThe company has 800 female
employees and 200 male employees. You want to ensure that the sample reflects
the gender balance of the company, so you sort the population into two strata
based on gender. Then you use random sampling on each group, selecting 80 women
and 20 men, which gives you a representative sample of 100 people.
4. Cluster sampling
Cluster sampling also
involves dividing the population into subgroups, but each subgroup should have
similar characteristics to the whole sample. Instead of sampling individuals
from each subgroup, you randomly select entire subgroups.
If it is practically possible,
you might include every individual from each sampled cluster. If the clusters
themselves are large, you can also sample individuals from within each cluster
using one of the techniques above. This is called multistage sampling.
This method is good for dealing
with large and dispersed populations, but there is more risk of error in the
sample, as there could be substantial differences between clusters. It’s
difficult to guarantee that the sampled clusters are really representative of
the whole population.
Example: Cluster sampling company has offices in 10
cities across the country (all with roughly the same number of employees in
similar roles). You don’t have the capacity to travel to every office to
collect your data, so you use random sampling to select 3 offices – these are
your clusters.
Non-probability sampling
methods
In a non-probability sample,
individuals are selected based on non-random criteria, and not every individual
has a chance of being included.
This type of sample is easier and
cheaper to access, but it has a higher risk of sampling bias. That means
the inferences you can make about the population are weaker than with
probability samples, and your conclusions may be more limited. If you use a
non-probability sample, you should still aim to make it as representative of
the population as possible.
Non-probability sampling
techniques are often used in exploratory and qualitative
research. In these types of research, the aim is not to test a hypothesis about
a broad population, but to develop an initial understanding of a small or
under-researched population.
1. Convenience sampling
A convenience sample simply
includes the individuals who happen to be most accessible to the researcher.
This is an easy and inexpensive
way to gather initial data, but there is no way to tell if the sample is
representative of the population, so it can’t produce generalizable results.
Example: Convenience sampling-You are researching
opinions about student support services in your university, so after each of
your classes, you ask your fellow students to complete a survey on
the topic. This is a convenient way to gather data, but as you only surveyed
students taking the same classes as you at the same level, the sample is not
representative of all the students at your university.
2. Voluntary response sampling
Similar to a convenience sample,
a voluntary response sample is mainly based on ease of access. Instead of the
researcher choosing participants and directly contacting them, people volunteer
themselves (e.g. by responding to a public online survey).
Voluntary response samples are
always at least somewhat biased, as some people will inherently be more likely
to volunteer than others.
Example: Voluntary response sampling- You send out the
survey to all students at your university and a lot of students decide to
complete it. This can certainly give you some insight into the topic, but the
people who responded are more likely to be those who have strong opinions about
the student support services, so you can’t be sure that their opinions are
representative of all students.
3. Purposive sampling
This type of sampling, also known
as judgement sampling, involves the researcher using their expertise to select
a sample that is most useful to the purposes of the research.
It is often used in qualitative
research, where the researcher wants to gain detailed knowledge about a
specific phenomenon rather than make statistical inferences, or where the
population is very small and specific. An effective purposive sample must have
clear criteria and rationale for inclusion.
Example: Purposive sampling- you want to know more about
the opinions and experiences of disabled students at your university, so you
purposefully select a number of students with different support needs in order
to gather a varied range of data on their experiences with student services.
4. Snowball sampling
If the population is hard to
access, snowball sampling can be used to recruit participants via other participants.
The number of people you have access to “snowballs” as you get in contact with
more people.
Example: Snowball sampling- you are researching experiences of
homelessness in your city. Since there is no list of all homeless people in the
city, probability sampling isn’t possible. You meet one person who agrees to
participate in the research, and she puts you in contact with other homeless
people that she knows in the area.
5 Comments
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