Population and Sample
Population
and Sample
In statistics as well as in quantitative methodology,
the set of data are collected and selected from a statistical population with
the help of some defined procedures. There are two different types of data sets
namely, population and sample. So basically when we calculate
the mean deviation, variance and standard deviation,
it is necessary for us to know if we are referring to the entire population or
to only sample data. Suppose the size of the population is denoted by ‘n’ then
the sample size of that population is denoted by n -1. Let us take a look of population
data sets and sample data sets in detail.
Population
It includes all the elements from the data set and
measurable characteristics of the population such as mean and standard
deviation are known as a parameter. For example, All
people living in India indicates the population of India.
There are different types of population. They are:
- Finite Population
- Infinite Population
- Existent Population
- Hypothetical Population
Let us discuss all
the types one by one.
Finite Population
The finite population is also known as a countable
population in which the population can be counted. In other words, it is
defined as the population of all the individuals or objects that are finite.
For statistical analysis, the finite population is more advantageous than the infinite
population. Examples of finite populations are employees of a company,
potential consumer in a market.
Infinite Population
The infinite population is also known as an
uncountable population in which the counting of units in the population is not
possible. Example of an infinite population is the number of germs in the
patient’s body is uncountable.
Existent Population
The existing population is defined as the population
of concrete individuals. In other words, the population whose unit is available
in solid form is known as existent population. Examples are books, students
etc.
Hypothetical Population
The population in which whose unit is not available
in solid form is known as the hypothetical population. A population consists of
sets of observations, objects etc that are all something in common. In some
situations, the populations are only hypothetical. Examples are an outcome of
rolling the dice, the outcome of tossing a coin.
Sample
It includes one or more observations that are drawn
from the population and the measurable characteristic of a sample is a
statistic. Sampling is the process of selecting the sample from the population.
For example, some people living in India is the sample of the population.
Basically, there are two types of sampling. They are:
- Probability sampling
- Non-probability sampling
Probability Sampling
In probability sampling, the population units cannot
be selected at the discretion of the researcher. This can be dealt with
following certain procedures which will ensure that every unit of the
population consists of one fixed probability being included in the sample. Such
a method is also called random sampling. Some of the techniques used for
probability sampling are:
- Simple random sampling
- Cluster sampling
- Stratified Sampling
- Disproportionate sampling
- Proportionate sampling
- Optimum allocation stratified
sampling
- Multi-stage sampling
Non Probability Sampling
In non-probability sampling, the population units can
be selected at the discretion of the researcher. Those samples will use the
human judgements for selecting units and has no theoretical basis for
estimating the characteristics of the population. Some of the techniques used
for non-probability sampling are
- Quota sampling
- Judgement sampling
- Purposive sampling
Population and Sample Examples
- All the people who have the ID
proofs is the population and a group of people who only have voter id with
them is the sample.
- All the students in the class are
population whereas the top 10 students in the class are the sample.
- All the members of the parliament is
population and the female candidates present there is the sample.
Population and Sample Formulas
We will demonstrate
here the formulas for mean absolute deviation (MAD), variance and standard
deviation based on population and given sample. Suppose n denotes the
size of the population and n-1 denotes the sample size, then the formulas
for mean absolute deviation, variance and standard deviation are given by;
Difference
between Population and Sample
Some of the key
differences between population and sample are clearly given below:
Comparison |
Population |
Sample |
Meaning |
Collection of all the units or elements
that possess common characteristics |
A subgroup of the members of the
population |
Includes |
Each and every element of a group |
Only includes a handful of units of
population |
Characteristics |
Parameter |
Statistic |
Data Collection |
Complete enumeration or census |
Sampling or sample survey |
Focus on |
Identification of the characteristics |
Making inferences about the population |
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