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The bell shape curve

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Title: The bell shape curve


1
The bell shape curve
  • Normal distribution FETP India

2
Competency to be gained from this lecture
  • Use the properties of normal distributions to
    estimate the proportion of a population between
    selected values

3
Key issues
  • Normal distribution
  • Properties of the normal distribution
  • Z score

4
Frequency distribution
  • For a continuous variable, the values taken by
    the variable may be listed
  • One can examine how commonly the variable will
    take specific values
  • The relative frequency with which the variable is
    taking selected values is called a frequency
    distribution

Normal distribution
5
Distribution
  • We observe the frequency distribution of values
  • If we smoothen the distribution, we obtain a
    curve
  • If the curve can correspond to a mathematical
    formula, we can apply formula that allow
    predicting a number of parameters

Normal distribution
6
The normal curve presented as an histogram
Normal distribution
7
Observation
  • Many naturally occurring events follow a rough
    pattern with
  • Many observations clustered around the mean
  • Few observations with values away from the mean
  • This bell-shaped curve was named Normal
    distribution by a mathematician called Gauss

Normal distribution
8
The normal distribution
  • Normal distribution
  • The symmetrical clustering of values around a
    central location
  • Normal curve
  • The bell-shaped curve that results when a normal
    distribution is graphed

Normal distribution
9
Properties of the normal distribution of a
continuous variable
  • Symmetric about its mean
  • The median the mode the mean
  • The entire distribution is known if two
    parameters are known
  • The mean
  • The standard deviation

Properties
10
Additional properties of the normal distribution
  • 68 of the values lie between
  • Mean one standard deviation
  • Mean - one standard deviation
  • 95 of the values lie between
  • Mean two standard deviations
  • Mean - two standard deviations
  • gt 99 of the values lie between
  • Mean three standard deviations
  • Mean - three standard deviations

Properties
11
Distribution of the values according to the
standard deviation
12
Characterizing a normal distribution
  • The mean specifies the location
  • The standard deviation specifies the spread
  • Hence
  • For different values of mean or standard
    deviation or both,
  • We get different normal distributions.

Properties
13
Usefulness of the normal distribution
  • Many statistical tests are based on the
    assumption that the variable is normally
    distributed in the population
  • Using the standard deviation it is possible to
  • Describe the normal range between x-standard
    deviations
  • Compare the degree of variability in the
    distribution of a factor
  • Between two populations
  • Between two different variables in the same
    population

Properties
14
Distributions that are approximately normal
  • For distributions that are approximately normal
  • Unimodal (One mode)
  • Symmetrical
  • Having a bell shaped curve
  • The standard deviation and the mean together
    provide sufficient information to describe the
    distribution totally

Properties
15
z-score
  • Every normal distribution can be standardized in
    terms of a quantity called the normal deviate
    (z)
  • The z score is an index of the distance from the
    mean in units of standard deviations

Z-score
16
Standardizing a normal distribution
  • Z is defined as
  • Observation - Mean
  • Z -----------------------------------------
  • Standard deviation
  • The probabilities associated with normal
    distribution are obtained from the knowledge of z

Z-score
17
Representing a normal curve on a standard
deviation scale
Mean
One standard deviation
Minus one standard deviation
The x-axis expresses the data values in a
standardized format
18
Knowing what proportion of the values lies
between two values
Between the mean and 1 standard deviation,
there is 68 / 2 34 of the values
Z-score
19
Area under the curve and Z-score
  • What proportion of the population is between
    between 0 and 1.96?

Z-score
20
First example of use of the normal distribution
Heights
  • We are examining a population of persons with
    heights that are normally distributed
  • Consider the normal distribution of heights
  • Mean height X 65"
  • Standard deviation SD 2"

Z-score
21
What is the proportion of persons whose height
exceeds 68?
  • Normal deviate
  • Z (x-x)/SD (68-65)/2 1.5
  • The area under the curve from Z 1.5 to ?
  • 0.0668
  • 6.68
  • 6.68 of persons have a height that exceeds 68"

Z-score
22
What is the proportion of persons whose height is
less than 60?
  • Normal deviate
  • Z (x-x)/SD (60 - 65 ) / 2 - 2.5
  • The area under the curve from z - ? to z -2.5
    is equal to the one from Z 2.5 to z ?
  • The area under the curve from Z 2.5 to ?
  • 0.0062
  • 0.62
  • 0.62 of persons have a height below 60

Z-score
23
What is the proportion of persons whose height is
between 64 " and 67 (1/2)?
  • Normal deviate for x64
  • Z1 (65-64)/2 - 0.5
  • Area under the curve
  • From Z1 - ? to - 0.5
  • From Z1 0.5 to ?
  • Proportion of the population with height less
    than 64
  • 0.3085
  • 30.8

Z-score
24
What is the proportion of persons whose height is
between 64 " and 67 (2/2)?
  • Normal deviate for X67" Z2 (67-65)/2
  • Area under the curve from Z2 1 to ?
  • 0.1587
  • 15.8 of the population has a height exceeding
    67"
  • Heights between 64" and 67
  • 1 - 0.3085 - 0.1587 0.5328 53.28

Z-score
25
Second example of use of the normal distribution
Cholesterol level
  • We are examining a population of persons with
    cholesterol levels that are normally distributed
  • Consider the normal distribution of cholesterol
    levels
  • Mean cholesterol 242 mg
  • Standard deviation 45 mg

Z-score
26
What is the cholesterol level exceeded by 10 of
men?
Example 2
  • What is the Z corresponding to an area of 10
    (0.1) on the right?
  • The Z value from the table is
  • 1.282
  • Z (x-242)/45 1.3
  • X - 242 1.3 x 45 58.5
  • X 58.5 242 300.5 mg

Z-score
27
What is the cholesterol level that is exceeded by
2.5 of men ?
  • What is the Z corresponding to 2.5 of the area
    (0.025) on the left?
  • From the table,
  • Z corresponding to an upper area of 0.025 1.96
  • By symmetry, the lower value of Z is -1.96
  • (x-x) / SD z
  • (x-242) /45 -1.96
  • (x-242) /45 -1.96
  • X 242 -1.96 x 45 - 88.2
  • X 242 - 88.2 153.8 mg

Z-score
28
How does one know the distribution is normal?
  • Is the distribution symmetrical?
  • A normal distribution is symmetrical
  • Is the distribution skewed?
  • A normal distribution is not skewed
  • What is the kurtosis of the distribution?
  • The normal distribution is neither too sharp nor
    too shallow
  • Computer programmes are available to test the
    normality of the distribution

Z-score
29
Scores and normal curve
Z-score
30
Key messages
  • The symmetrical clustering of values around a
    central location is called a normal distribution
  • Normal distributions are symmetric, have a common
    value for the mean, the median and the mode and
    are solely characterized by their mean and their
    standard deviation
  • Z-scores allow estimating the proportion of the
    population lying between selected values
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