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NORMAL
DISTRIBUTION
The
Prepared by:
Maam Camille Joy G. Ramos
Mathematics Teacher
Learning Objectives:
The learner will be able to:
Illustrate a normal random variable and its properties;
Construct a normal curve; and
Identify regions under the normal curve corresponding
to different standard normal variables.
2
Normal
The normal distribution, also known as
Gaussian Distribution, has the following
formula:
3
Distribution
The
๐‘ท ๐’™ =
๐Ÿ
๐ˆ ๐Ÿ๐…
๐’†
โˆ’
๐’™โˆ’๐ ๐Ÿ
๐Ÿ๐ˆ ๐Ÿ
Normal Distribution
๐’™
๐’‡(๐’™)
๐
๐ˆ
Changing ๐ shifts the
distribution left or right.
Changing ๐ˆ increases
or decreases the
spread.
The
๐Ÿ”๐Ÿ–%
๐Ÿ—๐Ÿ“%
๐Ÿ—๐Ÿ—. ๐Ÿ•%
๐Ÿ”๐Ÿ– โˆ’ ๐Ÿ—๐Ÿ“ โˆ’ ๐Ÿ—๐Ÿ—. ๐Ÿ• Rule
The
Normal Distribution
The
7
Normal Distribution
The
Characteristics
All normal distributions have the same shape.
Perfectly symmetric, mound-shaped distribution.
Also known as normal curve, or bell-curve.
Describes continuous random variable.
Distribution continues infinitely in both directions: both
sides of the curve are approaching zero, but they never
reach zero 0 .
8
The
Characteristics
Center
Located at the highest point over the mean ๐œ‡.
Mean, median, and mode are all equal.
Splits the data into two (2) equal parts.
Spread
Measured with standard deviation ๐œŽ.
Larger standard deviations mean that the data is spread
farther from the center.
9
The
Characteristics
Inflection Point
Curve changes shape at the inflection points: in other words,
the curve changes concavity.
A curve that is concave up looks like a u-shape.
A curve that is concave down looks like a n-shape.
The two inflection points occur ยฑ1 standard deviation away
from the mean ๐œ‡ โˆ’ ๐œŽ ๐‘Ž๐‘›๐‘‘ ๐œ‡ + ๐œŽ .
10
The
Standard
If the mean ๐ is zero and the standard
deviation ๐ˆ is ๐Ÿ, then the normal
distribution is a standard normal
distribution.
11
Distribution
The
Normal
Areas Under
Areas under the standard normal curve
can be found using the Areas under the
Standard Normal Curve table. These
areas are regions under the normal
curve.
12
the Normal
Curve
Areas Under
Example 1:
Find the area between ๐‘ง = 0 and
๐‘ง = 1.54.
13
the Normal
Curve
STEP 1: Sketch the normal curve.
STEP 2: Locate the area.
Areas Under
Example 2:
Find the area between ๐‘ง = 1.52 and ๐‘ง = 2.5.
14
the Normal
Curve
Example 3:
Find the area to the right of ๐‘ง = 1.56
Example 4:
Find the area between ๐‘ง = 0 and ๐‘ง = โˆ’1.65.
Areas Under
Example 5:
Find the area between ๐‘ง = โˆ’1.5 and ๐‘ง = โˆ’2.5.
15
the Normal
Curve
Example 6:
Find the between ๐‘ง = โˆ’1.35 and ๐‘ง = 2.95.
Example 7:
Find the area to the left of ๐‘ง = 2.32.
Areas Under
Example 8:
Find the area to the right of ๐‘ง = โˆ’1.8.
16
the Normal
Curve
Example 9:
Find the area to the left of ๐‘ง = โˆ’1.52.
Areas Under the
Exercise 1:
What percent of the area under the normal curve is between ๐‘ง =
0.85 and ๐‘ง = 2.5?
17
Normal Curve
Exercises:
Exercise 2:
What percent of the area under the normal curve is between ๐‘ง =
โˆ’ 1.00 and ๐‘ง = 1.00?
Areas Under the
Exercise 3:
What percent of the area under the normal curve is between ๐‘ง =
โˆ’ 2.10 and ๐‘ง = 2.10?
18
Normal Curve
Exercises:
Exercise 4:
What percent of the area under the normal curve is between ๐‘ง =
โˆ’ 1.10 and ๐‘ง = โˆ’2.43?
STANDARD
SCORES
Learning Objectives:
The learner will be able to:
Convert a normal random variable to a standard
normal variable and vice versa; and
Compute probabilities and percentiles using the
standard normal table.
20
The standard score or z-score measures how many
standard deviation a given value (๐‘ฅ) is above or below the
mean.
The z-scores are useful in comparing observed values.
21
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
A positive z-score indicates that the score or observed value
is above the mean, whereas a negative z-score indicates that
the score or observed value is below the mean.
The standard score or z-score (For Sample)
22
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
๐‘ง =
๐‘ฅโˆ’ ๐‘ฅ
๐‘ 
where:
๐‘ง: standard score
x: raw score or observed value
๐‘ฅ: sample mean
๐‘ : sample standard deviation
The standard score or z-score (For Population)
23
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
๐‘ง =
๐‘ฅโˆ’๐œ‡
๐œŽ
where:
๐‘ง: standard score
x: raw score or observed value
๐œ‡: population mean
๐œŽ: population standard deviation
Example 1:
On a final examination in Biology, the mean was 75 and
the standard deviation was 12. Determine the standard
score of a student who received a score of 60 assuming
that the scores are normally distributed.
24
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Example 2:
On the first periodic exam in Statistics, the population
mean was 70 and the population standard deviation was
9. Determine the standard score of a student who got a
score of 88 assuming that the scores are normally
distributed.
25
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Example 3:
Luz scored 90 in an English test and 70 in a Physics test.
Scores in the English test have a mean of 80 and a
standard deviation of 10. Scores in the Physics test have
a mean of 60 and a standard deviation of 8. In which
subject was her standing better assuming that the scores
in her English and Physics class are normally distributed?
26
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Example 4:
In a Science test, the mean score is 42 and the standard
deviation is 5. Assuming that the scores are normally
distributed, what percent of the score is
greater than 48?
less than 50?
between 30 and 48? 27
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Example 5:
The mean height of grade nine students at a certain high
school is 164 centimeters and the standard deviation is
10 centimeters. Assuming that the heights are normally
distributed, what percent of the heights is greater than
168 centimeters?
28
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Example 6:
In a Math test, the mean score is 45 and the standard
deviation is 4. Assuming normality, what is the probability
that a score picked at random will lie
above score 50?
below score 38?
29
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Exercise 1:
In a given normal distribution, the sample mean is 75 and
the sample standard deviation is 4. Find the
corresponding score of the following values:
1. 69 3. 70
2. 85 4. 65 30
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Exercises:
Exercise 2:
In a given normal distribution, the population mean is 80
and the population standard deviation is 2.5. Find the
corresponding score of the following values:
1. 69 3. 70
2. 85 4. 65 31
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Exercises:
Exercise 3:
On a test in Statistics, the mean is 65 and the standard
deviation is 3. Assuming normality, what is the standard
score of a student who receives a score of 60?
32
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Exercises:
Exercise 4:
On a final examination in Mathematics, the mean was 76
and the standard deviation was 5. Determine the
standard score of a student who received a score of 88
assuming the scores are normally distributed.
33
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Exercises:
Exercise 5:
In an English test, the mean is 60 and the standard
deviation is 6. Assuming the scores are normally
distributed, what percent of the scores is:
greater than 65? between 50 and 65?
less than 70? 34
Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’)
The
Exercises:
SKEWNESS
Skewness
A distribution is said to be symmetric
if the mean, median, and mode occur at
the same point. The curve is bell-
shaped.
36
Skewness
Skewness is the degree of departure
from the symmetry of a distribution.
37
Skewness
If the mean, median, and mode are
not at the same point, then the
frequency distribution is asymmetrical.
A distribution of this sort graphed has a
longer tail on one side than the other
side.
38
SkewnessA distribution with longer tail on the
left is said to be skewed to the left or
negatively skewed.
A distribution with longer tail on the
right than the left is said to be skewed to
the right or positively skewed.
39
40
Thatโ€™s all, folks!
Any questions?
Ask now or youโ€™ll regret this for the rest of your life!
SAMPLINGand
SAMPLING
DISTRIBUTIONS
Learning Objectives:
The learner will be able to:
Illustrate a random sampling.
42
Random
A researcher always wishes to achieve
unbiased results in his or her study. One
of the best ways to fulfill this through the
use of random sampling.
43
Sampling
There are four (๐Ÿ’) types of random
sampling techniques.
Random
44
Sampling
1. Simple Random Sampling (SRS)
2. Systematic Sampling
3. Stratified Sampling
4.Cluster or Area Sampling
Types of
Random Sampling
45
This is the most basic sampling technique.
In this sampling technique, every member of the population
has an equal chance of being chosen to be part of the sample.
Ways to do simple random sampling:
1. Table of Random Numbers
2. Lottery Method
Also known as Simple Random Sampling without Replacement
(SRSWOR) and Simple Random Sampling with Replacement
(SRSWR)
Simple
Table of
Random
Numbers
Random
46
Sampling
Simple
DEFINITION OF SIMPLE RANDOM SAMPLING
A simple random sampling is a sampling
technique in which every element of the
population has the same probability of being
selected for inclusion in the sample.
47
Random Sampling
This is a random sampling technique in which every ๐‘˜ ๐‘กโ„Ž
element of
the population is selected until the desired number of elements in
the sample is obtained. The value of ๐‘˜ is calculated by dividing the
number of elements in the population by the number of elements in
the desired sample. The value of ๐‘˜ is the sampling interval.
๐’Œ =
๐’๐’–๐’Ž๐’ƒ๐’†๐’“ ๐’๐’‡ ๐’†๐’๐’†๐’Ž๐’†๐’๐’•๐’” ๐’Š๐’ ๐’•๐’‰๐’† ๐’‘๐’๐’‘๐’–๐’๐’‚๐’•๐’Š๐’๐’
๐’๐’–๐’Ž๐’ƒ๐’†๐’“ ๐’๐’‡ ๐’†๐’๐’†๐’Ž๐’†๐’๐’•๐’” ๐’Š๐’ ๐’•๐’‰๐’† ๐’”๐’‚๐’Ž๐’‘๐’๐’†
๐’Œ =
๐‘ต
๐’
Systematic
๐‘คโ„Ž๐‘’๐‘Ÿ๐‘’: ๐‘˜ = ๐‘ ๐‘Ž๐‘š๐‘๐‘™๐‘’ ๐‘–๐‘›๐‘ก๐‘’๐‘Ÿ๐‘ฃ๐‘Ž๐‘™
๐‘ = ๐‘๐‘œ๐‘๐‘ข๐‘™๐‘Ž๐‘ก๐‘–๐‘œ๐‘› ๐‘ ๐‘–๐‘ง๐‘’
๐‘› = ๐‘ ๐‘Ž๐‘š๐‘๐‘™๐‘’ ๐‘ ๐‘–๐‘ง๐‘’
48
Random Sampling
A systematic sampling is a random sampling
technique in which a list of elements of the
population is used as sampling frame and the
elements to be included in the desired sample
are selected by skipping through the list at
regular intervals.
Systematic
DEFINITION OF SYSTEMATIC RANDOM SAMPLING
49
In stratified sampling, the population is partitioned
into several subgroups called strata, based on some
characteristics like year level, gender, age, ethnicity,
etc.
Random Sampling
Stratified
50
Stratified Sampling is a random sampling technique in
which the population is first divided into strata and
then samples are randomly selected separately from
each stratum.
Random Sampling
Stratified
DEFINITION OF STRATIFIED RANDOM SAMPLING
51
Cluster or area sampling is a random sampling technique in
which the entire population is broken into small groups or
clusters, and then, some of the clusters are randomly
selected. The data from the randomly selected clusters are
the ones that are analyzed.
Random Sampling
Cluster or Area
DEFINITION OF CLUSTER OR AREA RANDOM SAMPLING
52
The difference of cluster sampling from a stratified sampling
is that the sample consists of elements from the selected
clusters only while in stratified sampling, the sample consist
of elements from all the strata.
Random Sampling
Cluster or Area
DEFINITION OF CLUSTER OR AREA RANDOM SAMPLING
53
The difference of cluster sampling from a stratified sampling
is that the sample consists of elements from the selected
clusters only while in stratified sampling, the sample consist
of elements from all the strata.
Random Sampling
Cluster or Area
DEFINITION OF CLUSTER OR AREA RANDOM SAMPLING
54
1. The office clerk gave the researcher a list of 500 Grade 10
students. The researcher selected every 20 ๐‘กโ„Ž
name on the
list.
2. In a recent research that was conducted in a private
school, the subjects of the study were selected by using the
Table of Random Numbers.
Random Sampling
Identify what type of
Instruction: Identify the type of sampling technique used by the
researcher in each of the following situations.
SYSTEMATIC RANDOM SAMPLING
SIMPLE RANDOM SAMPLING
55
3. A researcher interviewed people from each town in the
province of Albay for his research on population.
4. A researcher is doing a research work on the studentsโ€™
reaction to the newly implemented curriculum in
Mathematics and interviewed every 10 ๐‘กโ„Ž student entering
gate of the school.
Random Sampling
Identify what type of
Instruction: Identify the type of sampling technique used by the
researcher in each of the following situations.
CLUSTER OR AREA RANDOM SAMPLING
SYSTEMATIC RANDOM SAMPLING
56
5. A researcher who is studying the effects of educational
attainment on promotion conducted a survey of 50 randomly
selected workers from each of these categories: high school
graduate, with undergraduate degrees, with masterโ€™s
degree, and with doctoral degree.
Random Sampling
Identify what type of
Instruction: Identify the type of sampling technique used by the
researcher in each of the following situations.
STRATIFIED RANDOM SAMPLING
57
6. A researcher selected a sample of ๐‘› = 120 from a
population of 850 by using the Table of Random Numbers.
7. A researcher interviewed all top 10 Grade 11 students in
each of 15 randomly selected private schools in Metro
Manila.
Random Sampling
Identify what type of
Instruction: Identify the type of sampling technique used by the
researcher in each of the following situations.
SIMPLE RANDOM SAMPLING
CLUSTER OR AREA RANDOM SAMPLING
58
8. A teacher asked her students to fall in line. He instructed
one of them to select every 5 ๐‘กโ„Ž
student on the line.
9. A researcher surveyed all diabetic patients in each of the
25 randomly selected hospitals in Metro Manila.
Random Sampling
Identify what type of
Instruction: Identify the type of sampling technique used by the
researcher in each of the following situations.
SYSTEMATIC RANDOM SAMPLING
CLUSTER OR AREA RANDOM SAMPLING
59
10. A teacher who is conducting a research on the effects of
using calculators in teaching Mathematics decided to divide
her students into male and female and then she selected
students from each gender group.
Random Sampling
Identify what type of
Instruction: Identify the type of sampling technique used by the
researcher in each of the following situations.
STRATIFIED RANDOM SAMPLING

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Normal distribution

  • 1. NORMAL DISTRIBUTION The Prepared by: Maam Camille Joy G. Ramos Mathematics Teacher
  • 2. Learning Objectives: The learner will be able to: Illustrate a normal random variable and its properties; Construct a normal curve; and Identify regions under the normal curve corresponding to different standard normal variables. 2
  • 3. Normal The normal distribution, also known as Gaussian Distribution, has the following formula: 3 Distribution The ๐‘ท ๐’™ = ๐Ÿ ๐ˆ ๐Ÿ๐… ๐’† โˆ’ ๐’™โˆ’๐ ๐Ÿ ๐Ÿ๐ˆ ๐Ÿ
  • 4. Normal Distribution ๐’™ ๐’‡(๐’™) ๐ ๐ˆ Changing ๐ shifts the distribution left or right. Changing ๐ˆ increases or decreases the spread. The
  • 5. ๐Ÿ”๐Ÿ–% ๐Ÿ—๐Ÿ“% ๐Ÿ—๐Ÿ—. ๐Ÿ•% ๐Ÿ”๐Ÿ– โˆ’ ๐Ÿ—๐Ÿ“ โˆ’ ๐Ÿ—๐Ÿ—. ๐Ÿ• Rule The
  • 8. Characteristics All normal distributions have the same shape. Perfectly symmetric, mound-shaped distribution. Also known as normal curve, or bell-curve. Describes continuous random variable. Distribution continues infinitely in both directions: both sides of the curve are approaching zero, but they never reach zero 0 . 8 The
  • 9. Characteristics Center Located at the highest point over the mean ๐œ‡. Mean, median, and mode are all equal. Splits the data into two (2) equal parts. Spread Measured with standard deviation ๐œŽ. Larger standard deviations mean that the data is spread farther from the center. 9 The
  • 10. Characteristics Inflection Point Curve changes shape at the inflection points: in other words, the curve changes concavity. A curve that is concave up looks like a u-shape. A curve that is concave down looks like a n-shape. The two inflection points occur ยฑ1 standard deviation away from the mean ๐œ‡ โˆ’ ๐œŽ ๐‘Ž๐‘›๐‘‘ ๐œ‡ + ๐œŽ . 10 The
  • 11. Standard If the mean ๐ is zero and the standard deviation ๐ˆ is ๐Ÿ, then the normal distribution is a standard normal distribution. 11 Distribution The Normal
  • 12. Areas Under Areas under the standard normal curve can be found using the Areas under the Standard Normal Curve table. These areas are regions under the normal curve. 12 the Normal Curve
  • 13. Areas Under Example 1: Find the area between ๐‘ง = 0 and ๐‘ง = 1.54. 13 the Normal Curve STEP 1: Sketch the normal curve. STEP 2: Locate the area.
  • 14. Areas Under Example 2: Find the area between ๐‘ง = 1.52 and ๐‘ง = 2.5. 14 the Normal Curve Example 3: Find the area to the right of ๐‘ง = 1.56 Example 4: Find the area between ๐‘ง = 0 and ๐‘ง = โˆ’1.65.
  • 15. Areas Under Example 5: Find the area between ๐‘ง = โˆ’1.5 and ๐‘ง = โˆ’2.5. 15 the Normal Curve Example 6: Find the between ๐‘ง = โˆ’1.35 and ๐‘ง = 2.95. Example 7: Find the area to the left of ๐‘ง = 2.32.
  • 16. Areas Under Example 8: Find the area to the right of ๐‘ง = โˆ’1.8. 16 the Normal Curve Example 9: Find the area to the left of ๐‘ง = โˆ’1.52.
  • 17. Areas Under the Exercise 1: What percent of the area under the normal curve is between ๐‘ง = 0.85 and ๐‘ง = 2.5? 17 Normal Curve Exercises: Exercise 2: What percent of the area under the normal curve is between ๐‘ง = โˆ’ 1.00 and ๐‘ง = 1.00?
  • 18. Areas Under the Exercise 3: What percent of the area under the normal curve is between ๐‘ง = โˆ’ 2.10 and ๐‘ง = 2.10? 18 Normal Curve Exercises: Exercise 4: What percent of the area under the normal curve is between ๐‘ง = โˆ’ 1.10 and ๐‘ง = โˆ’2.43?
  • 20. Learning Objectives: The learner will be able to: Convert a normal random variable to a standard normal variable and vice versa; and Compute probabilities and percentiles using the standard normal table. 20
  • 21. The standard score or z-score measures how many standard deviation a given value (๐‘ฅ) is above or below the mean. The z-scores are useful in comparing observed values. 21 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The A positive z-score indicates that the score or observed value is above the mean, whereas a negative z-score indicates that the score or observed value is below the mean.
  • 22. The standard score or z-score (For Sample) 22 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The ๐‘ง = ๐‘ฅโˆ’ ๐‘ฅ ๐‘  where: ๐‘ง: standard score x: raw score or observed value ๐‘ฅ: sample mean ๐‘ : sample standard deviation
  • 23. The standard score or z-score (For Population) 23 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The ๐‘ง = ๐‘ฅโˆ’๐œ‡ ๐œŽ where: ๐‘ง: standard score x: raw score or observed value ๐œ‡: population mean ๐œŽ: population standard deviation
  • 24. Example 1: On a final examination in Biology, the mean was 75 and the standard deviation was 12. Determine the standard score of a student who received a score of 60 assuming that the scores are normally distributed. 24 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The
  • 25. Example 2: On the first periodic exam in Statistics, the population mean was 70 and the population standard deviation was 9. Determine the standard score of a student who got a score of 88 assuming that the scores are normally distributed. 25 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The
  • 26. Example 3: Luz scored 90 in an English test and 70 in a Physics test. Scores in the English test have a mean of 80 and a standard deviation of 10. Scores in the Physics test have a mean of 60 and a standard deviation of 8. In which subject was her standing better assuming that the scores in her English and Physics class are normally distributed? 26 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The
  • 27. Example 4: In a Science test, the mean score is 42 and the standard deviation is 5. Assuming that the scores are normally distributed, what percent of the score is greater than 48? less than 50? between 30 and 48? 27 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The
  • 28. Example 5: The mean height of grade nine students at a certain high school is 164 centimeters and the standard deviation is 10 centimeters. Assuming that the heights are normally distributed, what percent of the heights is greater than 168 centimeters? 28 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The
  • 29. Example 6: In a Math test, the mean score is 45 and the standard deviation is 4. Assuming normality, what is the probability that a score picked at random will lie above score 50? below score 38? 29 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The
  • 30. Exercise 1: In a given normal distribution, the sample mean is 75 and the sample standard deviation is 4. Find the corresponding score of the following values: 1. 69 3. 70 2. 85 4. 65 30 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The Exercises:
  • 31. Exercise 2: In a given normal distribution, the population mean is 80 and the population standard deviation is 2.5. Find the corresponding score of the following values: 1. 69 3. 70 2. 85 4. 65 31 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The Exercises:
  • 32. Exercise 3: On a test in Statistics, the mean is 65 and the standard deviation is 3. Assuming normality, what is the standard score of a student who receives a score of 60? 32 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The Exercises:
  • 33. Exercise 4: On a final examination in Mathematics, the mean was 76 and the standard deviation was 5. Determine the standard score of a student who received a score of 88 assuming the scores are normally distributed. 33 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The Exercises:
  • 34. Exercise 5: In an English test, the mean is 60 and the standard deviation is 6. Assuming the scores are normally distributed, what percent of the scores is: greater than 65? between 50 and 65? less than 70? 34 Standard Score (๐‘ง โˆ’ ๐‘ ๐‘๐‘œ๐‘Ÿ๐‘’) The Exercises:
  • 36. Skewness A distribution is said to be symmetric if the mean, median, and mode occur at the same point. The curve is bell- shaped. 36
  • 37. Skewness Skewness is the degree of departure from the symmetry of a distribution. 37
  • 38. Skewness If the mean, median, and mode are not at the same point, then the frequency distribution is asymmetrical. A distribution of this sort graphed has a longer tail on one side than the other side. 38
  • 39. SkewnessA distribution with longer tail on the left is said to be skewed to the left or negatively skewed. A distribution with longer tail on the right than the left is said to be skewed to the right or positively skewed. 39
  • 40. 40 Thatโ€™s all, folks! Any questions? Ask now or youโ€™ll regret this for the rest of your life!
  • 42. Learning Objectives: The learner will be able to: Illustrate a random sampling. 42
  • 43. Random A researcher always wishes to achieve unbiased results in his or her study. One of the best ways to fulfill this through the use of random sampling. 43 Sampling There are four (๐Ÿ’) types of random sampling techniques.
  • 44. Random 44 Sampling 1. Simple Random Sampling (SRS) 2. Systematic Sampling 3. Stratified Sampling 4.Cluster or Area Sampling Types of
  • 45. Random Sampling 45 This is the most basic sampling technique. In this sampling technique, every member of the population has an equal chance of being chosen to be part of the sample. Ways to do simple random sampling: 1. Table of Random Numbers 2. Lottery Method Also known as Simple Random Sampling without Replacement (SRSWOR) and Simple Random Sampling with Replacement (SRSWR) Simple Table of Random Numbers
  • 46. Random 46 Sampling Simple DEFINITION OF SIMPLE RANDOM SAMPLING A simple random sampling is a sampling technique in which every element of the population has the same probability of being selected for inclusion in the sample.
  • 47. 47 Random Sampling This is a random sampling technique in which every ๐‘˜ ๐‘กโ„Ž element of the population is selected until the desired number of elements in the sample is obtained. The value of ๐‘˜ is calculated by dividing the number of elements in the population by the number of elements in the desired sample. The value of ๐‘˜ is the sampling interval. ๐’Œ = ๐’๐’–๐’Ž๐’ƒ๐’†๐’“ ๐’๐’‡ ๐’†๐’๐’†๐’Ž๐’†๐’๐’•๐’” ๐’Š๐’ ๐’•๐’‰๐’† ๐’‘๐’๐’‘๐’–๐’๐’‚๐’•๐’Š๐’๐’ ๐’๐’–๐’Ž๐’ƒ๐’†๐’“ ๐’๐’‡ ๐’†๐’๐’†๐’Ž๐’†๐’๐’•๐’” ๐’Š๐’ ๐’•๐’‰๐’† ๐’”๐’‚๐’Ž๐’‘๐’๐’† ๐’Œ = ๐‘ต ๐’ Systematic ๐‘คโ„Ž๐‘’๐‘Ÿ๐‘’: ๐‘˜ = ๐‘ ๐‘Ž๐‘š๐‘๐‘™๐‘’ ๐‘–๐‘›๐‘ก๐‘’๐‘Ÿ๐‘ฃ๐‘Ž๐‘™ ๐‘ = ๐‘๐‘œ๐‘๐‘ข๐‘™๐‘Ž๐‘ก๐‘–๐‘œ๐‘› ๐‘ ๐‘–๐‘ง๐‘’ ๐‘› = ๐‘ ๐‘Ž๐‘š๐‘๐‘™๐‘’ ๐‘ ๐‘–๐‘ง๐‘’
  • 48. 48 Random Sampling A systematic sampling is a random sampling technique in which a list of elements of the population is used as sampling frame and the elements to be included in the desired sample are selected by skipping through the list at regular intervals. Systematic DEFINITION OF SYSTEMATIC RANDOM SAMPLING
  • 49. 49 In stratified sampling, the population is partitioned into several subgroups called strata, based on some characteristics like year level, gender, age, ethnicity, etc. Random Sampling Stratified
  • 50. 50 Stratified Sampling is a random sampling technique in which the population is first divided into strata and then samples are randomly selected separately from each stratum. Random Sampling Stratified DEFINITION OF STRATIFIED RANDOM SAMPLING
  • 51. 51 Cluster or area sampling is a random sampling technique in which the entire population is broken into small groups or clusters, and then, some of the clusters are randomly selected. The data from the randomly selected clusters are the ones that are analyzed. Random Sampling Cluster or Area DEFINITION OF CLUSTER OR AREA RANDOM SAMPLING
  • 52. 52 The difference of cluster sampling from a stratified sampling is that the sample consists of elements from the selected clusters only while in stratified sampling, the sample consist of elements from all the strata. Random Sampling Cluster or Area DEFINITION OF CLUSTER OR AREA RANDOM SAMPLING
  • 53. 53 The difference of cluster sampling from a stratified sampling is that the sample consists of elements from the selected clusters only while in stratified sampling, the sample consist of elements from all the strata. Random Sampling Cluster or Area DEFINITION OF CLUSTER OR AREA RANDOM SAMPLING
  • 54. 54 1. The office clerk gave the researcher a list of 500 Grade 10 students. The researcher selected every 20 ๐‘กโ„Ž name on the list. 2. In a recent research that was conducted in a private school, the subjects of the study were selected by using the Table of Random Numbers. Random Sampling Identify what type of Instruction: Identify the type of sampling technique used by the researcher in each of the following situations. SYSTEMATIC RANDOM SAMPLING SIMPLE RANDOM SAMPLING
  • 55. 55 3. A researcher interviewed people from each town in the province of Albay for his research on population. 4. A researcher is doing a research work on the studentsโ€™ reaction to the newly implemented curriculum in Mathematics and interviewed every 10 ๐‘กโ„Ž student entering gate of the school. Random Sampling Identify what type of Instruction: Identify the type of sampling technique used by the researcher in each of the following situations. CLUSTER OR AREA RANDOM SAMPLING SYSTEMATIC RANDOM SAMPLING
  • 56. 56 5. A researcher who is studying the effects of educational attainment on promotion conducted a survey of 50 randomly selected workers from each of these categories: high school graduate, with undergraduate degrees, with masterโ€™s degree, and with doctoral degree. Random Sampling Identify what type of Instruction: Identify the type of sampling technique used by the researcher in each of the following situations. STRATIFIED RANDOM SAMPLING
  • 57. 57 6. A researcher selected a sample of ๐‘› = 120 from a population of 850 by using the Table of Random Numbers. 7. A researcher interviewed all top 10 Grade 11 students in each of 15 randomly selected private schools in Metro Manila. Random Sampling Identify what type of Instruction: Identify the type of sampling technique used by the researcher in each of the following situations. SIMPLE RANDOM SAMPLING CLUSTER OR AREA RANDOM SAMPLING
  • 58. 58 8. A teacher asked her students to fall in line. He instructed one of them to select every 5 ๐‘กโ„Ž student on the line. 9. A researcher surveyed all diabetic patients in each of the 25 randomly selected hospitals in Metro Manila. Random Sampling Identify what type of Instruction: Identify the type of sampling technique used by the researcher in each of the following situations. SYSTEMATIC RANDOM SAMPLING CLUSTER OR AREA RANDOM SAMPLING
  • 59. 59 10. A teacher who is conducting a research on the effects of using calculators in teaching Mathematics decided to divide her students into male and female and then she selected students from each gender group. Random Sampling Identify what type of Instruction: Identify the type of sampling technique used by the researcher in each of the following situations. STRATIFIED RANDOM SAMPLING