Standard Deviation
The
concept of standard deviation was first introduced by Karl Pearson in
1893.
Let’s
first understand the significance of standard deviation:
When
we look at the data for a population often the first thing we do is
look at the mean. But even if we know that the distribution is
perfectly normal, the mean isn't enough to tell us what we know to
understand what the mean is telling us about the population. We also
need to know something about how the data is spread out around the
mean - that is, how wide the bell curve is around the mean. Yes,
there is the basic measure comes i.e standard deviation.
Standard
deviation is a widely used measure of variability or measure of
dispersion. It shows how much variation or "dispersion"
exists from the mean or expected value.
A
low standard deviation means that most of the numbers are very close
to mean. A high standard deviation means that the numbers are spread
out.
One
can also say a smaller standard deviation means the variation is
small in the data and a large standard deviation means the variation
is large in the data.
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Fig. Standard Deviation
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A
step-by-step method for calculating the standard deviation:
(1)
Find out the mean of the data set.
(2)
Subtract this mean from each data point to find out deviation from
the mean. It could be either positive or negative.
(3)
Square up these deviations to find out squared deviation. Naturally,
squared deviations will be all positive.
(4)
Find out the mean of squared deviations. This is called variance.
(5)
Find out the square root of the variance. That's the standard
deviation.
Different
examples to understand the standard deviation in an easy manner:
Some
examples in which standard deviation might help to
understand the value of the data:
1.
A class of students took a math test. Their teacher found that the
mean score on the test was 85%. The teacher then calculated the
standard deviation of the other test scores and found a very small
standard deviation which suggested that most students scored very
close to 85%.
2.
A market researcher is analyzing the results of a recent customer
survey. He wants to have some measure of the reliability of the
answers received in the survey in order to predict how a larger group
of people might answer the same questions. A low standard deviation
shows that the answers are very projectable to a larger group of
people.
3.
An employer wants to determine if the salaries in one department seem
fair for all employees, or if there is a great disparity. He finds
the average of the salaries in that department and then calculates
the variance, and then the standard deviation. The employer finds
that the standard deviation is slightly higher than he expected, so
he examines the data further and finds that while most employees fall
within a similar pay bracket, three loyal employees who have been in
the department for 20 years or more, far longer than the others, are
making far more due to their longevity with the company. Doing the
analysis helped the employer to understand the range of salaries of
the people in the department.
Let’s
understand how to Standardize data?
The
data is standardized by subtracting the mean and then dividing by the
standard deviation which ensures that all of your variables have mean
zero and variance/standard deviation of 1. Standardization of the
data is very much important as we can compare them on a similar
scale.
I
hope you enjoyed this post. The tutorial is very helpful to get the
overall idea of standard deviation. The tutorial also highlights how
to standardize data. Good Luck!
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