The Normal Distribution
Outline
1 Introduction: Continuous Random Variables (3.6)
2 Introduction: Normal Distribution (4.1-4.2)
3 Areas Under a Normal Curve (4.3)Standard Normal Table: Computing ProbabilitiesStandard Normal Table: Finding QuantilesGeneral Normal DistributionUsing the ComputerA Case Study
4 Assessing Normality (4.4)
Outline
1 Introduction: Continuous Random Variables (3.6)
2 Introduction: Normal Distribution (4.1-4.2)
3 Areas Under a Normal Curve (4.3)Standard Normal Table: Computing ProbabilitiesStandard Normal Table: Finding QuantilesGeneral Normal DistributionUsing the ComputerA Case Study
4 Assessing Normality (4.4)
Recall: Discrete Random Variables
We can describe a discrete random variable with a table.For example:
k 0 1 5 10Pr {X = k} 0.1 0.5 0.1 0.3
But a continuous random variable can take any value in ainterval; we could never list all of these values in a table
Continuous Distributions
A continuous random variable has possible values over acontinuum.
The total probability of one is not in discrete chunks atspecific locations, but rather is ground up like a very finedust and sprinkled on the number line.
We cannot represent the distribution with a table ofpossible values and the probability of each.
Continuous Distributions (continued)
Instead, we represent the distribution with a probabilitydensity function which measures the thickness of theprobability dust.
Probability is measured over intervals as the area underthe curve.A legal probability density f :
1 is never negative (f (x) ≥ 0 for −∞ < x < ∞).2 has a total area under the curve of one (
∫∞−∞ f (x)dx = 1).
For You
Read 3.6 in your book
Outline
1 Introduction: Continuous Random Variables (3.6)
2 Introduction: Normal Distribution (4.1-4.2)
3 Areas Under a Normal Curve (4.3)Standard Normal Table: Computing ProbabilitiesStandard Normal Table: Finding QuantilesGeneral Normal DistributionUsing the ComputerA Case Study
4 Assessing Normality (4.4)
The Normal DistributionThe Normal Distribution is the most important distributionof continuous random variables.The normal density curve is the famous symmetric,bell-shaped curve.The central limit theorem is the reason that the normalcurve is so important. Essentially, many statistics that wecalculate from large random samples will haveapproximate normal distributions (or distributions derivedfrom normal distributions), even if the distributions of theunderlying variables are not normally distributed.This fact is the basis of most of the methods of statisticalinference we will study in the last half of the course.Chapter 4 introduces the normal distribution as aprobability distribution.Chapter 5 culminates in the central limit theorem, theprimary theoretical justification for most of the methods ofstatistical inference in the remainder of the textbook.
The famous bell curve
Used everywhere: very useful description for lots of biological(and other) random variables.
Body weight,
Crop yield,
Protein content in soybean,
Density of blood components
Y ∼ N (µ, σ)
values can, inprinciple, go toinfinity, both ways.
µ − 4σ µ − 2σ µ µ + 2σ µ + 4σ
σ σ
The Normal Density
Normal curves have the following bell-shaped, symmetricdensity.
f (x) =1√2πσ
e− 1
2
(x−µ
σ
)2
, (−∞ < x < ∞)
Parameters: The parameters of a normal curve are themean µ and the standard deviation σ.
Notation: a random variable is normal with mean µ andstandard deviation σ,
Y ∼ N (µ, σ)
Standard Normal. We often consider µ = 0 and σ = 1.
Z ∼ N (0, 1)
Recall: Empirical Rule
The 68–95–99.7 Rule.
For every normal curve:1 ≈ 68% of the area is within one SD of the mean2 ≈ 95% of the area is within two SDs of the mean3 ≈ 99.7% of the area is within three SDs of the mean
Standard Normal Density
Standard Normal Density
Possible Values
Den
sity
−3 −2 −1 0 1 2 3
Area within 1 = 0.68
Area within 2 = 0.95
Area within 3 = 0.997
Outline
1 Introduction: Continuous Random Variables (3.6)
2 Introduction: Normal Distribution (4.1-4.2)
3 Areas Under a Normal Curve (4.3)Standard Normal Table: Computing ProbabilitiesStandard Normal Table: Finding QuantilesGeneral Normal DistributionUsing the ComputerA Case Study
4 Assessing Normality (4.4)
Recall: the Normal Density
f (x) =1√2πσ
e− 1
2
(x−µ
σ
)2
, (−∞ < x < ∞)
(can you integrate that?)
Compute areas
There is no formula to calculate general areas under thenormal curve.
(The integral of the density has no closed form solution.)
We will learn to use normal tables for this.
We will also learn how to use R.
However, you will have to use normal tables on the exams.
The Standard Normal Table
We have tables for N (0, 1)
The standard normal table lists the area to the left of zunder the standard normal curve for each value from−3.49 to 3.49 by 0.01 increments.The normal table is located:
1 inside front cover of your textbook.2 Table 3 (p. 675-676)
Numbers in the margins represent z.
Numbers in the middle of the table are areas to the left of z.
Warning!
Learn the normal table today.
Make it part of your being.
Standard Normal Table: Computing Probabilities
The standard normal Z ∼ N (0, 1)
−4 −2 0 1 2 3 4
Whole area = 1 (total probability rule)Pr {Z ≤ 0} =
.5
by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} =
0.8413− 0.5 = .3413
Pr {−1 ≤ Z ≤ 1} =
2 ∗ 0.3413 = .6826
Pr {Z > 1.5} =
1− Pr {Z ≤ −1.5}= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 −2 0 1 2 3 4
Whole area = 1 (total probability rule)Pr {Z ≤ 0} =
.5
by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} =
0.8413− 0.5 = .3413
Pr {−1 ≤ Z ≤ 1} =
2 ∗ 0.3413 = .6826
Pr {Z > 1.5} =
1− Pr {Z ≤ −1.5}= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 −2 0 1 2 3 4
Whole area = 1 (total probability rule)Pr {Z ≤ 0} =
.5
by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} =
0.8413− 0.5 = .3413
Pr {−1 ≤ Z ≤ 1} =
2 ∗ 0.3413 = .6826
Pr {Z > 1.5} =
1− Pr {Z ≤ −1.5}= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 −2 0 1 2 3 4
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} =
0.8413− 0.5 = .3413
Pr {−1 ≤ Z ≤ 1} =
2 ∗ 0.3413 = .6826
Pr {Z > 1.5} =
1− Pr {Z ≤ −1.5}= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 −2 0 2 4−5 1
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} =
0.8413− 0.5 = .3413
Pr {−1 ≤ Z ≤ 1} =
2 ∗ 0.3413 = .6826
Pr {Z > 1.5} =
1− Pr {Z ≤ −1.5}= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 −2 0 2 40 1
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} =
0.8413− 0.5 = .3413
Pr {−1 ≤ Z ≤ 1} =
2 ∗ 0.3413 = .6826
Pr {Z > 1.5} =
1− Pr {Z ≤ −1.5}= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 −2 0 2 40 1
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} = 0.8413− 0.5 = .3413Pr {−1 ≤ Z ≤ 1} =
2 ∗ 0.3413 = .6826
Pr {Z > 1.5} =
1− Pr {Z ≤ −1.5}= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 −2 0 2 4−1 1
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} = 0.8413− 0.5 = .3413Pr {−1 ≤ Z ≤ 1} =
2 ∗ 0.3413 = .6826
Pr {Z > 1.5} =
1− Pr {Z ≤ −1.5}= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 −2 0 2 4−1 1
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} = 0.8413− 0.5 = .3413Pr {−1 ≤ Z ≤ 1} = 2 ∗ 0.3413 = .6826Pr {Z > 1.5} =
1− Pr {Z ≤ −1.5}= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 0 41.5 5
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} = 0.8413− 0.5 = .3413Pr {−1 ≤ Z ≤ 1} = 2 ∗ 0.3413 = .6826Pr {Z > 1.5} =
1− Pr {Z ≤ −1.5}= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 0 41.5 5
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} = 0.8413− 0.5 = .3413Pr {−1 ≤ Z ≤ 1} = 2 ∗ 0.3413 = .6826Pr {Z > 1.5} = 1− Pr {Z ≤ −1.5}
= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 0 4−1.5 1.5
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} = 0.8413− 0.5 = .3413Pr {−1 ≤ Z ≤ 1} = 2 ∗ 0.3413 = .6826Pr {Z > 1.5} = 1− Pr {Z ≤ −1.5}
= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} =
Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 4−0.50.3
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} = 0.8413− 0.5 = .3413Pr {−1 ≤ Z ≤ 1} = 2 ∗ 0.3413 = .6826Pr {Z > 1.5} = 1− Pr {Z ≤ −1.5}
= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} = Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}
= .6179− .3085 = .3094
The standard normal Z ∼ N (0, 1)
−4 4−0.50.3
Whole area = 1 (total probability rule)Pr {Z ≤ 0} = .5 by symmetryPr {Z = 0} = 0Pr {Z < 1} = .8413 (table, front cover)Pr {0 ≤ Z ≤ 1} = 0.8413− 0.5 = .3413Pr {−1 ≤ Z ≤ 1} = 2 ∗ 0.3413 = .6826Pr {Z > 1.5} = 1− Pr {Z ≤ −1.5}
= 1− 0.9332 = .0668
Draw a picture and make use of symmetry.
Pr {−0.5 ≤ Z ≤ 0.3} = Pr {Z ≤ 0.3} − Pr {Z ≤ −0.5}= .6179− .3085 = .3094
Standard Normal Table: Finding Quantiles
Basic Idea
This is the inverse problem.
Before. Question: here is the interval; Answer: Probabilityof the interval
Now. Question: Here is the probability. Answer: What isthe interval that matches with the probability.
Problem: many intervals have the same area.
We ask for a certain type of interval.
The Reverse Question: Finding quantiles
Pr {Z ≤?} = .975
? = 1.96
the value ? is a quantile .Use Table 3 (or front cover) backward
Pr {Z ≤?} = 0.20
? = −0.84
Pr {Z ≥?} = 0.80
? = −0.84
−3 0 3?
−3 0 3?
The Reverse Question: Finding quantiles
Pr {Z ≤?} = .975 ? = 1.96the value ? is a quantile .Use Table 3 (or front cover) backward
Pr {Z ≤?} = 0.20
? = −0.84
Pr {Z ≥?} = 0.80
? = −0.84
−3 0 3?
−3 0 3?
The Reverse Question: Finding quantiles
Pr {Z ≤?} = .975 ? = 1.96the value ? is a quantile .Use Table 3 (or front cover) backward
Pr {Z ≤?} = 0.20 ? = −0.84Pr {Z ≥?} = 0.80
? = −0.84
−3 0 3?
−3 0 3?
The Reverse Question: Finding quantiles
Pr {Z ≤?} = .975 ? = 1.96the value ? is a quantile .Use Table 3 (or front cover) backward
Pr {Z ≤?} = 0.20 ? = −0.84Pr {Z ≥?} = 0.80 ? = −0.84
−3 0 3?
−3 0 3?
zα Notation
Instead of ? we introduce a fancy notation.
Let zα be the number such that
Pr {Z < zα} = 1− α
Draw Figure 4.19 (α to the right; 1− α to the left)
Example. z.025 = 1.96
Draw a picture!
(Note: your book uses a capital, Zα)
General Normal Distribution
General Normal?
We are good if Y ∼ N (0, 1)
What if Y ∼ N (10, 5) or N (11, 3), or ...
(Directions from “Home”)
Standardization
All normal curves have the same shape, and are simplyrescaled versions of the standard normal density.
Consequently, every area under a general normal curvecorresponds to an area under the standard normal curve.
The key standardization formula is
z =x − µ
σ
Solving for x yieldsx = µ + zσ
which says algebraically that x is z standard deviationsabove the mean.
Probability Example
If X ∼ N(100, 2), find Pr {X > 97.5}.Solution:
Pr {X > 97.5} = Pr(
X − 1002
>97.5− 100
2
)= Pr {Z > −1.25}= 1− Pr {Z < −1.25}= ?
Quantile Example
If X ∼ N(100, 2), find the cutoff values for the middle 70%of the distribution.
Solution: The cutoff points will be the 0.15 and 0.85quantiles.
From the table, 1.03 < z < 1.04 and z = 1.04 is closest.
Thus, the cutoff points are the mean plus or minus 1.04standard deviations.
100− 1.04(2) = 97.92, 100 + 1.04(2) = 102.08
General form N (µ, σ)
All normal distributions have the same shape.
Transformation
Z =Y − µ
σ∼ N (0, 1)
Systolic blood pressure in healthy adults has a normaldistribution with mean 112 mmHg and standard deviation 10mmHg, i.e. Y ∼ N (112, 10).
One day, I have 92 mmHg.
Pr {Y ≤ 92} = Pr{
Y − 11210
≤ 92− 11210
}= Pr {Z ≤ −2} = 0.0227
General form N (µ, σ)
µ = 112 mmHg, σ = 10 mmHg.
Pr {102 ≤ Y ≤ 122} = Pr{
102− 11210
≤ Y − 11210
≤ 122− 11210
}= Pr {−1 ≤ Z ≤ 1} = .6826
68.3% of healthy adults have systolic blood pressure between102 and 122 mmHg.A patient’s systolic blood pressure is 137 mmHg.
Pr {Y ≥ 137} = Pr{
Y − 11210
≥ 137− 11210
}= Pr {Z ≥ 2.5} = 1− .9938 = 0.0062
This patient’s blood pressure is very high...
General form N (µ, σ)µ = 112 mmHg, σ = 10 mmHg.What is “High blood pressure”? For instance, it could be thevalue BP∗ such that
Pr {Y ≤ BP∗} = .95
We need z∗ such that Pr {Z ≤ z∗} = .95. Table in back cover(last line): z∗ = 1.645. Thus BP∗ lies 1.645 standard deviationsabove the mean:
BP∗ = 112 + 1.645 ∗ 10 = 112 + 16.45 = 128.45 mmHg
Formal approach:
.95 = Pr {Y ≤ BP∗} = Pr{
Y − 11210
≤ BP∗ − 11210
}= Pr {Z ≤ z∗}
with z∗ =BP∗ − 112
10i.e. BP∗ = 112 + 10 z∗
Using the Computer
Other Options
Remember you need the tables for the exam.
Statistical software (e.g. R)
Online Calculators. See course website, handouts.
Calculators for Various Statistical Problems
Doing calculations with R
> pnorm(1)[1] 0.8413447> pnorm(2)-pnorm(-2)[1] 0.9544997> pnorm(3)-pnorm(-3)[1] 0.9973002> 1- pnorm(137, mean=112, sd=10)[1] 0.006209665> qnorm(.95, mean=112, sd=10)[1] 128.4485> pbinom(1, size=6, prob=1/6)[1] 0.7367755> dbinom(0:6, size=6, prob=1/6)[1] 0.335 0.402 0.201 0.054 0.008 0.001 0.000
norm normal distributionbinom binomialp probability: Pr {Y ≤ . . .}q quantiled density, or probability mass
function: Pr {Y = . . .}
A Case Study
Exam Hint
This how exam questions will often look.
I give you some question in the context of a scientific area;you figure out the probabilty calculations to use.
(word problems)
Case Study
ExampleBody temperature varies within individuals over time (it can behigher when one is ill with a fever, or during or after physicalexertion). However, if we measure the body temperature of asingle healthy person when at rest, these measurements varylittle from day to day, and we can associate with each person anindividual resting body temperture. There is, however, variationamong individuals of resting body temperture.
The Question
ExampleIn the population, suppose that:
the mean resting body temperature is 98.25 degreesFahrenheit;
the standard deviation is 0.73 degrees Fahrenheit;
resting body temperatures are normally distributed.
Let X be the resting body temperature of a randomly chosenindividual. Find:
1 Pr {X < 98}, the proportion of individuals with temperatureless than 98.
2 Pr {98 < X < 100}, the proportion of individuals withtemperature between 98 and 100.
3 The 0.90 quantile of the distribution.4 The cutoff values for the middle 50% of the distribution.
Outline
1 Introduction: Continuous Random Variables (3.6)
2 Introduction: Normal Distribution (4.1-4.2)
3 Areas Under a Normal Curve (4.3)Standard Normal Table: Computing ProbabilitiesStandard Normal Table: Finding QuantilesGeneral Normal DistributionUsing the ComputerA Case Study
4 Assessing Normality (4.4)
Normal Probability Plots
A standard question begins, “Assuming that variable Y hasa normal distribution,. . . ”. But how do we know thedistribution is approximately normal?
Sometimes we can rely on the central limit theorem.
If given data, there are tests for normality, but there arereasons not to do these.
It is generally better to make a plot that sheds light on thequestion, “Is the data so far from normality as to bias amethod that assumes normality?”
There is no easy answer to the question, but a normalprobability plot is much more informative than the result ofa test.
What is a Normal Probability Plot?
A normal probability plot is a plot of the sorted sample dataversus something close to the expected z-score for thecorresponding rank of a random normal sample of thesame size.
For example, the expected z-score of the minumum from arandom sample of size 10 from a normal population isabout −1.54.
If the plotted points are close to a straight line, there isevidence that the distribution is close to normal.
If the plotted points are far from a straight line, there isevidence of non-normality.
The Basic Idea
A normal probability plot plots the ordered observations onthe y-axis (y(1), . . . , y(n)) against some standard “normalscores” x1, . . . , xn on the x-axis.
If the data were truly from a normal distribution it would lieon a “straight” line.
Why a straight line? Y = µ + σZ
Normal Example: All three plots are normal (n = 50)
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−2 −1 0 1 2
−2
02
Normal Q−Q Plot
Theoretical Quantiles
Sam
ple
Qua
ntile
s
Histogram of x
x
Fre
quen
cy
−3 −2 −1 0 1 2 3
05
1015
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−2 −1 0 1 2
−2
02
Normal Q−Q Plot
Theoretical QuantilesS
ampl
e Q
uant
iles
Histogram of x
x
Fre
quen
cy
−3 −2 −1 0 1 2 3
05
15
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−2 −1 0 1 2
−1
12
Normal Q−Q Plot
Theoretical Quantiles
Sam
ple
Qua
ntile
s
Histogram of x
x
Fre
quen
cy
−2 −1 0 1 2
04
812
Normal Example: All three plots are normal (n = 500)
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−3 −2 −1 0 1 2 3
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−1
13
Normal Q−Q Plot
Theoretical Quantiles
Sam
ple
Qua
ntile
s
Histogram of x
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Fre
quen
cy
−3 −1 0 1 2 3
040
80
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−3 −2 −1 0 1 2 3
−3
−1
13
Normal Q−Q Plot
Theoretical QuantilesS
ampl
e Q
uant
iles
Histogram of x
x
Fre
quen
cy
−3 −2 −1 0 1 2 3
040
80
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−3 −2 −1 0 1 2 3
−3
02
Normal Q−Q Plot
Theoretical Quantiles
Sam
ple
Qua
ntile
s
Histogram of x
x
Fre
quen
cy
−3 −1 0 1 2 3
040
80
Non-normal Example: One plot is not normal(n = 100)
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02
46
8
Normal Q−Q Plot
Theoretical Quantiles
Sam
ple
Qua
ntile
s
Histogram of x
x
Fre
quen
cy
0 2 4 6 8
020
40
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−2
02
Normal Q−Q Plot
Theoretical QuantilesS
ampl
e Q
uant
iles
Histogram of x
x
Fre
quen
cy
−2 −1 0 1 2 3
05
15
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−2
01
2
Normal Q−Q Plot
Theoretical Quantiles
Sam
ple
Qua
ntile
s
Histogram of x
x
Fre
quen
cy
−2 −1 0 1 2
05
15
For You
Look at Figures 4.26 - 4.32 (p.136 - 139)
See how different shaped histograms lead to differentnormal probability plots
Warning!
Learn the normal table today.
Make it part of your being.