Standard deviation is a measure used in statistics to understand how spread out or dispersed a set of values is from their average or mean. It helps us grasp the variability within a dataset, showing the extent to which individual values differ from the average. It is mostly abbreviated as SD and .
It provides a way to quantify the amount of variation or diversity within a group of numbers. A smaller standard deviation suggests that most values are close to the mean, while a larger one indicates more significant differences between the values and the mean.
The goal of this article is to cover the following important concepts of Standard Deviation:
SD Definition.
Formulas to Compute SD.
Procedure to calculate the Standard Deviation.
Standard Deviations significance.
Solved Problems related to Standard Deviation.
STD Definition:
Standard deviation is a measure of how much the individual values in a dataset vary from the mean (average) of the dataset. "It serves as a method to measure the extent of data distribution or variability.
Key points:
Low standard deviation means the data points tend to be clustered closely around the mean, indicating less variability.
High standard deviation means the data points are spread over a wider range, indicating more variability.
It is calculated as the √ (Sqrt) of the variance, which is the average of the squared differences from the mean
Formulas to compute STD:
There exist 2 kinds of data groups:
Population:
The total collection of objects we want to learn from. This can be people, objects, events, or anything relevant to our study.
Sample:
A subset of the population is chosen to represent the whole. It serves as a smaller, more manageable version to gather information about the larger population.
The formulas compute the standard deviation for populations and samples show slight variations.
For Population: SD Population = √ [∑ (x – ) / (N – 1)]
For Sample: SD sample = √ [∑ (x – x) / N]
x = The value in the data distribution.
= The Population Mean.
x = The Sample Mean.
N = Total count of data entries
Procedure to calculate Standard Deviation:
The standard deviation mostly rises to the population of SD and here is the procedure to compute standard deviation of a group of values.
Determine the type of data you have: population or sample data
Select the suitable formula.
Compute the average of the data:
Population mean = = ∑x / N
Sample mean = x = ∑x / n
Subtract the x from every data value to take the deviations from the mean.
Square each deviation to eliminate negative values and emphasize larger deviations.
Sum the squared deviations.
Divide by N (for population) or n-1 (for sample) and this step gives variance.
Take the Square root (√) of the answer of Step 7(variance).
Standard Deviations importance:
There are too many reasons that make the standard deviation significant. Some noteworthy are given below.
The results become more understandable when the data exhibits increased dispersion.
The standard deviation of a distribution or dataset will be higher when the dataset is more evenly dispersed.
Corporate executives use standard deviation in Excel for financial analysis to understand risk management and make smarter investment decisions.
It helps calculate the margins of error commonly seen in survey findings.
Solved Problems related to the Standard Deviation:
These examples demonstrate how we can calculate the SD of the sample and population data.
Problem 1:
Compute the standard deviation of a population dataset with values
{12, 15, 18, 21, 24}.
Solution:
Step 1:
The data set is in population so the formula:
SD Population = √ [∑ (x – ) / (N – 1)]
Step 2:
Compute the average of the data. Population mean = = ∑x / N
= 12 + 15 + 18 + 21 + 24 / 5 = 90 / 5 = 18
Step 3: Subtract the x from every data value to take the deviations from the mean.
Xi
Xi - X
12
(12 - 18) = 6
15
(15 - 18) = 3
18
(18 - 18) = 0
21
(21 - 18) = 3
24
(24 - 18) = 4
--
--
Step 4: Square each deviation.
(Xi - X)2
36
9
0
9
36
∑ (Xi - X)2 = 90
Step 5: Divide by N (for population)
2(Variance) = 90 / 5 = 18
Step 6: Take the Sqrt root (√) of the answer of Step 5(variance).
(SD)= √ 18 = 4.24.
Problem 2:
A sample of 20 students has scores {70, 75, 80, 85, 90}. Determine the SD for this sample.
Solution:
To Compute the SD of the given sample.
Step 1: Calculate the Sample Mean (x) = 80
Step 2: Find the Deviations from the Mean
Xi
Xi - X
70
-10
75
-5
80
0
85
5
90
10
--
--
Step 3: Square the Deviations
(Xi - X)2
100
25
0
25
100
∑ (Xi - X)2 = 250
Step 4: Submit calculating values in the formula.
SD sample = √ [∑ (x – x) / (N – 1)] = 7.91
Conclusion:
In this article, we delved into the world of Standard Deviation, exploring its definition, formulas, calculation procedures, significance, and even practicing with some solved problems. We saw how SD quantifies the spread of data, revealing its inherent diversity.
Understanding this important statistic empowers us to interpret data more effectively, whether analyzing survey results, managing investments, or conducting scientific experiments.
0 Comment(s)