+ All Categories
Home > Documents > Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution...

Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution...

Date post: 28-Feb-2021
Category:
Upload: others
View: 2 times
Download: 0 times
Share this document with a friend
15
Chapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability of getting 3 tails, 5 tails, and 9 tails? In other words: P(3T), P(5T), P(9T)? Using Statcrunch the probability distribution is: P(3T)= 0.117 P(5T)= 0.246 P(9T)= 0.010 Chapter 7.1 Uniform and Normal Distribution Objective A: Uniform Distribution A1. Introduction Recall: Discrete random variable probability distribution Special case: Binomial distribution Finding the probability of obtaining success in independent trials of a binomial experiment is calculated by plugging the value of into the binomial formula as shown below: Continuous Random variable For a continued random variable the probability of observing one particular value is zero. 1
Transcript
Page 1: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

Chapter 7 The Normal Probability Distribution

First an example from Chapter 6:A coin is tossed 10 times. What is the probability of getting 3 tails, 5 tails, and 9 tails? In other words: P(3T), P(5T), P(9T)? Using Statcrunch the probability distribution is:

P(3T)= 0.117P(5T)= 0.246P(9T)= 0.010Chapter 7.1 Uniform and Normal DistributionObjective A: Uniform DistributionA1. IntroductionRecall: Discrete random variable probability distribution Special case: Binomial distribution

Finding the probability of obtaining success in independent trials of a binomial experiment is calculated by plugging the value of into the binomial formula as shown below:

Continuous Random variable

For a continued random variable the probability of observing one particular value is zero.

i.e.

Continuous Probability Distribution

We can only compute probability over an interval of values. Since and for a continuous variable,

1

Page 2: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

To find probabilities for continuous random variables, we use probability density functions.

Area under curve: 100% or 1

Area shaded: 50% or 0.5

Two common types of continuous random variable probability distribution: 1) Uniform distribution.

2) Normal distribution.

A2. Uniform distribution

1

(b−a) = Height (for a uniform distribution)

Example 1: A continuous random variable is uniformly distributed with . (a) Draw a graph of the uniform density function.

2

a b

ab 1

a b

Page 3: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

140

(b) What is ? Diagram: = Area under curve = length x width = (30-20)(1/40) = 10(1/40) = 10/40 = ¼ = 0.25 or 25%

(c) What is ? Diagram: = Area under curve = length x width = (15 – 10)(1/40) = 5(1/40) = 5/40 = 1/8 = 0.125 or 12.5%

Objective B: Normal distribution – Bell-shaped Curve

3

Page 4: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

430330 530 630 730X

1 1 2 2

Example 1: Graph of a normal curve is given. Use the graph to identify the value of (mean of a population) and (standard deviation of a

population .

= 530, =630-530 = 100

(Recall symbols: for a sample mean x, sample standard deviation s, population mean , population standard deviation )

Example 2: The lives of refrigerator are normally distributed with mean years and

standard deviation years. (a) Draw a normal curve and the parameters labeled.

4

Page 5: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

(b) Shade the region that represents the proportion of refrigerator that lasts for more than 17 years.

(c) Suppose the area under the normal curve to the right is . Provide two interpretations of this result.

11.51% of all refrigerators last more than 17 years. The probability that a randomly selected refrigerator will last more than 17 years is

11.51%

Chapter 7.2 Applications of the Normal Distribution Objective A: Area under the Standard Normal Distribution

The standard normal distribution – Bell shaped curve – =0 and =1The random variable for the standard normal distribution is .You can use the Z table (Table V) to find the area under the standard normal distribution. Each value in the body of the table is a cumulative area from the left up to a specific -score.Probability is the area under the curve over an interval.

The total area under the normal curve is 1.

Under the standard normal distribution,

(a) What is the area to the right ? 0.50 or 50%

5

Page 6: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

(b) What is the area to the left ? 0.50 or 50%

Example 1: Draw the standard normal curve with the appropriate shaded area and then use StatCrunch to determine the shaded area.

(a) that lies to the left of -1.38.STAT-CALCULATORS-NORMAL mean: 0 SD: 1 ; P( z ≤ - 1.38) – COMPUTE = 0.08379332So area = P( z ≤ - 1.38) ≈0.0838 or 8.38%

(b) that lies to the right of 0.56. P( z ≥ 0.56) = 0.2877 or 28.77%

(c) that lies in between 1.85 and 2.47. P( 1.85 ≤ z ≤ 2.47) =0.0254 or 2.54%

Objective B: Finding the Z-score for a given probability

6

Page 7: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

5.0Area 5.0Area 5.0Area

Example 1: Draw the standard normal curve and the Z-score such that the area to the left of the Z-score is 0.0418. Use StatCrunch to find the Z-score. (Find z score first.)

This time enter answer in Statcrunch to find the z score: P( z ≤ __ ) = 0.0418 – COMPUTEz = - 1.7301695 ≈ - 1.73

Example 2: Draw the standard normal curve and the Z-score such that the area to the right of the Z-score is 0.18. Use StatCrunch to find the Z-score.Find z score first: P( z ≥ ___) = 0.18 COMPUTE z = 0.915 ≈ 0.92

Example 3: Draw the standard normal curve and two Z-scores such that the middle area of the standard normal curve is 0.70. Use StatCrunch to find the two Z-scores. Choose ‘Between’ in Statcrunch.

z = - 1.04 and z = + 1.04

Objective C: Probability under a Normal DistributionStep 1: Draw a normal curve and shade the desired area.

Step 2: Convert the values to -scores using .Step 3: Use StatCrunch to find the desired area.

7

Page 8: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

Example 1: Assume that the random variable is normally distributed with mean

and a standard deviation .

(Note: this is not the standard normal curve because and .)

(a)

Method 1: Using Statcrunch enter mean μ=50and standard deviation ¿7 ; = ____; compute

≈ 0.873 or 87.3 %

Method 2: Change to a z score using formula = 58−507

=87≈1.14

Using Statcrunch enter mean μ=0; σ=1; P( z ≤ 87 ) = _____ ; compute ≈ 0.873 or 87.3%

(b) Method 1 Using the original values and ‘between’ option on Statcrunch.

≈ 0.731 or 73.1 % (use mean 50 and SD 7)Method 2 Change to z scores

For 45: z45=45−507

≈−0.71 For 63: z63=63−507

≈1.86

8

Page 9: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

Using Statcrunch enter mean μ=0; σ=1; between option

≈ 0.731 or 73.1 % Example 3: GE manufactures a decorative Crystal Clear 60-watt light bulb that it advertises will last 1,500 hours. Suppose that the lifetimes of the light bulbs are approximately

normal distributed, with a mean of 1,550 hours and a standard deviation of 57 hours.

a. µ = _________ σ = ________ b. Interpretation on mean and standard deviation:

A randomly selected light bulb will typically last 1550 ± 57 hours on average, or between 1493 and 1607 hours. c. Use StatCrunch to find what proportion of the light bulbs will last more than 1650 hours. P( x >1650) = _____ ≈ 0.0396822 ≈ 0.0397 d. Write a sentence interpreting what was found in context. On average, 3.97 % of the light bulbs will last more than 1650 hours. e. Is it unusual for a light bulb to last more than 1650 hours?

Changing to a z score: z = 1650−1550

57≈1.8 < 2 SD Not unusual

Since 3.97% < 2.5%, then it is not unusual.

Objective D: Finding the Value of a Normal Random Variable

Step 1: Draw a normal curve and shade the desired area. Step 2: Use StatCrunch to find the appropriate cutoff -score.

Step 3: Obtain from by the formula .Example 1: The reading speed of 6th grade students is approximately normal (bell-shaped) with a mean speed of 125 words per minute and a standard deviation of 24 words per minute.

(a) What is the reading speed of a 6th grader whose reading speed is at the 90th percentile?

First: μ = _125_wpm__ σ = __24_wpm_____

9

Page 10: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

Method 1: using Statcrunch directlyP(x < ___) = 0.90 x ≈ 155.75724 ≈ 156 The reading speed of a 6th grader whose reading at the 90th percentile is 156 words per minute.Method 2 Using μ = 0, σ = 1 P(z < ____ ) = 0.90 using statcrunchZ ≈ 1.28

Plug into the z score formula to solve for x : z = x−12524

1.28 = x−12524

24(1.28) = X- 12530.72 = X – 125

X = 30.72 + 125 = 155.72 ≈ 156

(b) Determine the reading speeds of the middle 95% percentile.

Method 1: P( x1≤¿=¿0.025 x1 = 77.96 ≈ 78Then you can do ‘between’: P(78 < x < ___) = 0.95 x2 ≈ 17295% of 6th grade students’ reading speeds are between 78 and 172 words per minute.

Method 2: Using μ = 0, σ = 1P(z1 <____) = 0.025 z1 = -1.96

- 1.96 = x−12524 solving for x, x = 78

Due to symmetry z2 = 1.96

-1.96 = x−12524 solving for x, x = 172

Chapter 7.3 Normality Plot

Recall: A set of raw data is given, how would we know the data has a normal distribution? Use histogram or stem leaf plot. Histogram is designed for a large set of data.

10

Page 11: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

For a very small set of data it is not feasible to use histogram to determine whether the data has a bell-shaped curve or not.

We will use the normal probability plot to determine whether the data were obtained from a normal distribution or not. If the data were obtained from a normal distribution, the data distribution shape is guaranteed to be approximately bell-shaped for n is less than 30.

Z score

Perfect normal curve. The curve is aligned with the dots.

Almost a normal curve. The dots are within the boundaries.

Not a normal curve. Data is outside the boundaries.

Example 1: Determine whether the normal probability plot indicates that the sample data could have come from a population that is normally distributed.

(a)

11

x

Page 12: Untitled Page [mymission.lamission.edu] · Web viewChapter 7 The Normal Probability Distribution First an example from Chapter 6: A coin is tossed 10 times. What is the probability

The sample data may not have come from a population that was normally distributed because not all points lie within the boundary. Therefore, there is no guarantee that the sample will be normally distributed.

(b)

Yes, the sample data may have come from a population that was normally distributed since all the points are within the boundary. Therefore, the sample is approximately normally distributed.

12


Recommended