2. Mean ?
Set I
Group A: 50, 50, 50, 50
Group B: 20, 80, 40, 60
Set II
Group A: 50, 50, 50, 50, 50
Group B: 20, 80, 40, 60, 50
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3. Mean
Set I
Group A: 50, 50, 50, 50
Group B: 20, 80, 40, 60
Set II
Group A: 50, 50, 50, 50, 50
Group B: 20, 80, 40, 60, 50
Mean
Group A: 50
Group B: 50
Mean
Group A: 50
Group B: 50
Is it means Group A = Group B ?
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4. Measures of Variability
Set I
Group A: 50, 50, 50, 50
Group B: 20, 80, 40, 60
Set II
Group A: 50, 50, 50, 50, 50
Group B: 20, 80, 40, 60, 50
Mean
Group A: 50
Group B: 50
Mean
Group A: 50
Group B: 50
Group A ¹ Group B
Here, both groups have the same average scores of 50,
but a result of examination revels that the two sets of scores differ widely from one another.
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5. • Dispersion (also known as
Scatter, Spread or Variation)
is the state of getting
dispersed or spread.
• It measures the degree of
variation.
• Statistical dispersion means
the extent to which numerical
data is likely to vary about an
average value.
Set of data has a small value:
1, 2, 2, 3, 3, 4
…and this set has a wider one:
0, 1, 20, 30, 40, 100
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9. Measures of Dispersion
In statistics,
the measures of dispersion
help to interpret the
variability of data
i.e. to know how much
homogenous or heterogenous
the data is.
In simple terms,
it shows
how squeezed or
scattered the variable is.
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11. Absolute
Measure of
Dispersion
Based on
Selected Items
Range
Inter Quartile
Range
Based on
all Items
Mean
Deviation
Standard
Deviation
The measures
which express the
scattering of
observation in
terms of distances
i.e., range,
quartile deviation.
The measure
which expresses
the variations in
terms of the
average of
deviations of
observations like
MD & SD
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13. C.D. in terms of Coefficient of dispersion
Range C.D. = (Xmax – Xmin) ⁄ (Xmax + Xmin)
Quartile Deviation C.D. = (Q3 – Q1) ⁄ (Q3 + Q1)
Standard Deviation (S.D.) C.D. = S.D. ⁄ Mean
Mean Deviation C.D. = Mean deviation/Average
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14. Range
A range is the most common and easily understandable
measure of dispersion.
It is the difference between two extreme observations of
the data set.
If X max and X min are the two extreme
observations then
Range = X max – X min
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16. Raw Data - Examples
Set 1:
23, 35, 45, 56, 65, 67, 78, 87, 90,
Set 2:
5, 7, 9, 15, 17, 19
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17. Raw Data - Examples
Set 1:
23, 35, 45, 56, 65, 67, 78, 87, 90,
Range =90 - 23 = 67
Set 2:
5, 7, 9, 15, 17, 19
Range = 19 - 5 = 14
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18. Quartile Deviation
The quartiles divide a data set into quarters.
The first quartile, (Q1) is the middle number between the
smallest number and the median of the data.
The second quartile, (Q2) is the median of the data set.
The third quartile, (Q3) is the middle number between
the median and the largest number.
Quartile deviation or
semi-inter-quartile deviation is
Q = ½ × (Q3 – Q1)
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19. ( ) score
N
Q
th
÷
ø
ö
ç
è
æ +
=
4
1
3
3
score
N
Q
mdn
th
÷
ø
ö
ç
è
æ +
=
2
1
)
( 2
score
N
Q
th
÷
ø
ö
ç
è
æ +
=
4
1
1
The value of Q3 can be obtained by the formula
Calculating median we use the formula
The value of Q1 can be obtained by the formula
2
1
3 Q
Q -
QD =
Quartile Deviation from the ungrouped data Formula
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21. Find the Quartile Deviation 40, 70, 35, 80, 55, 65, 82
Arrange in a decending order or ascending order
82
80 - Q3
70
65
55
40 - Q1
35
N = 7
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22. Average Deviation / Mean Deviation
Average deviation is one of the measures
of dispersion dealing with all items.
AD is defined as the average distance of
the scores from the mean of the
distribution. It is also called as a mean
distribution of MD.
Mean deviation is average of the
deviation from all the individual scores
from their mean.
Where
X = Individual Scores
M = Mean
N = Number of scores
Where
x = (X-M) deviation of scores from the Mean
M = Mean
N = Number of scores
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23. Scores Deviation (Raw Score – Mean) x IxI
10 10 – 30 -20 20
20 20 - 30 -10 10
30 30 – 30 0 0
40 40 – 30 10 10
50 50 - 30 20 20
∑X = 150 ∑IxI = 60
Raw Data: Example:
Calculate A.D. from the following Scores: 10, 20, 30, 40, 50
Where
x = (X-M) deviation of scores from the Mean
M = Mean
N = Number of scores
18 30 42
12 12
M
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24. Standard Deviation
Karl Pearson first introduced the concept of
standard deviation on 1893.
It provides a standard unit for measuring
distances of various scores from their mean.
Standard deviation, the most stable index of
variability is denoted usually by a letter
sigma s, the Greek alphabet
The standard deviation is defines as the
positive squares root of the arithmetic mean
of the squares of deviation of the
observations from the arithmetic mean.
When the deviations are squared positive and
negative signs become positive.
Standard deviation is the square root of the
mean of the squares of the deviations of
individual items from their arithmetic mean
In short it is considered as
‘Root – Mean – Square Deviation from Mean’
Where
x = (X-M) deviation of scores from the Mean
M = Mean
N = Number of scores
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