chapter 8 section 1 distributions of the sample mean
TRANSCRIPT
Chapter 8Section 1
Distributions of theSample Mean
Chapter 8 – Section 1
• Learning objectives– Understand the concept of a sampling distribution– Describe the distribution of the sample mean for
samples obtained from normal populations– Describe the distribution of the sample mean for
samples obtained from a population that is not normal
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2
3
Chapter 8 – Section 1
• Learning objectives– Understand the concept of a sampling distribution– Describe the distribution of the sample mean for
samples obtained from normal populations– Describe the distribution of the sample mean for
samples obtained from a population that is not normal
1
2
3
4
Chapter 8 – Section 1
• Lets look at a small population.
2,4,6 8,4,3,7
Find the mean. Is this mu or x bar?
Now lets take all the possible samples of 2 from this population.
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2,4,6 8,4,3,7
2,2 4,4 6,6 8,8 4,4
2,4 4,6 6,8 8,4 4,3
2,6 4,8 6,4 8,3 4,7
2,8 4,4 6,3 8,7
2,4 4,3 6,7 3.3
2,3 4,7 3,7
2,7
7,7
6
2,4,6 8,4,3,7
2,2 4,4 6,6 8,8 4,4
2,4 4,6 6,8 8,4 4,3
2,6 4,8 6,4 8,3 4,7
2,8 4,4 6,3 8,7
2,4 4,3 6,7 3.3
2,3 4,7 3,7
2,7
7,7
x
x x x x x
• Often the population is too large to perform a census … so we take a sample
• How do the results of the sample apply to the population?– What’s the relationship between the sample mean and the
population mean?
– What’s the relationship between the sample standard deviation and the population standard deviation?
• This is statistical inference
Chapter 8 – Section 1
Chapter 8 – Section 1
• We want to use the sample mean x to estimate the population mean μ
• If we want to estimate the heights of eight year old girls, we can proceed as follows– Randomly select 100 eight year old girls– Compute the sample mean of the 100 heights– Use that as our estimate
• This is using the sample mean to estimate the population mean
• However, if we take a series of different random samples– Sample 1 – we compute sample mean x1
– Sample 2 – we compute sample mean x2
– Sample 3 – we compute sample mean x3
– Etc.
• Each time we sample, we may get a different result
• The sample mean x is a random variable!
Chapter 8 – Section 1
Chapter 8 – Section 1
• Because the sample mean is a random variable– The sample mean has a mean– The sample mean has a standard deviation– The sample mean has a probability distribution
• This is called the sampling distribution of the sample mean
CENTRAL LIMIT THEOREM
• The Central Limit Theorem is about the distribution of sample means. x
The Central Limit Theorem is what we will base most or the statistical concepts on for the rest of this course.
Sampling Distribution of the mean is the probability distribution of
sample means, with all samples
having the same sample size n.
Definition
Central Limit Theorem
1. The random variable x has a distribution (which may or may not be normal) with mean µ and
standard deviation .
2. Samples all of the same size n are randomly
selected from the population of x values.
http://onlinestatbook.com/stat_sim/sampling_dist/index.html
Given:
Central Limit Theorem
Conclusions:
Central Limit Theorem
1. The distribution of sample x will, as the sample size increases, approaches a normal distribution.
Conclusions:
Central Limit Theorem
1. The distribution of sample x will, as the sample size increases, approach a normal distribution.
2. The mean of the sample means will be the population mean µ.
Conclusions:
Central Limit Theorem
1. The distribution of sample x will, as the sample size increases, approach a normal distribution.
2. The mean of the sample means will be the population mean µ.
3. The standard deviation of the sample means
will approach
n
Conclusions:
Practical Rules Commonly Used:
1. For samples of size n larger than 30, the distribution of the sample means can be approximated reasonably well by a normal distribution. The approximation gets better
as the sample size n becomes larger.
2. If the original population is itself normally distributed, then the sample means will be normally distributed for
any sample size n (not just the values of n larger than 30).
http://onlinestatbook.com/stat_sim/sampling_dist/index.html
Notation
Notationthe mean of the sample means
µx = µ
Notationthe mean of the sample means
the standard deviation of sample mean
µx = µ
x = n
Notationthe mean of the sample means
the standard deviation of sample mean
(often called standard error of the mean)
µx = µ
x = n
As the sample size increases, the sampling distribution of sample
means approaches a normal distribution.
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb, a.) if one woman is randomly selected, find the probability
that her weight is greater than 150 lb.b.) if 36 different women are randomly selected, find the
probability that their mean weight is greater than 150 lb.
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb, a.) if one woman is randomly selected, find the probability
that her weight is greater than 150 lb.
= 143 150= 29
0 0.24
0.5948
z = 150-143 = 0.24 29 P(x>150) = P(z>.24)
= 1 - 0.5948 = 0.4052
P(z>.24) = 1 - 0.5948 = 0.4052
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb, b.) if 36 different women are randomly selected, find the probability that their mean weight is greater than 150 lb.
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb, b.) if 36 different women are randomly selected, find the probability that their mean weight is greater than 150 lb.
x = 143 150x= 29 = 4.83333
36
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb, b.) if 36 different women are randomly selected, find the probability that their mean weight is greater than 150 lb.
x = 143 150x= 4.83333
0 1.45
0.9265
z = 150-143 = 1.45 29
36
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb, b.) if 36 different women are randomly selected, find the probability that their mean weight is greater than 150 lb.
x = 143 150x= 4.83333
0 1.45
0.9265
= 0.0735
z = 150-143 = 1.45 29
36
P(x 150) P(z )
( . )
1 0.9265
0.0735
36150 143
2936
P z 145
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb, b.) if 36 different women are randomly selected, the probability that their mean weight is greater than 150 lb is 0.0735.
x = 143 150x= 4.83333
0 1.45
0.4265
1 - 0.9265 = 0.0735
z = 150-143 = 1.45 29
36
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb,
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb,
a.) if one woman is randomly selected, find the probability that her weight is greater than 150 lb.
P(x > 150) = 0.4052
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb,
a.) if one woman is randomly selected, find the probability that her weight is greater than 150 lb.
P(x > 150) = 0.4052b.) if 36 different women are randomly selected, their mean
weight is greater than 150 lb.
P(x> 150) = 0.0735
Example: Given the population of women has normally distributed weights with a mean of 143 lb and a standard deviation of 29 lb,
a.) if one woman is randomly selected, find the probability that her weight is greater than 150 lb.
P(x > 150) = 0.4052
b.) if 36 different women are randomly selected, their mean weight is greater than 150 lb.
P(x36 > 150) = 0.0735
It is much easier for an individual to deviate from the mean than it is for a group of 36 to deviate from the mean.
Sampling Without Replacement
If n > 0.05 N
Sampling Without Replacement
If n > 0.05 N
N - nx
= n
N - 1
Sampling Without Replacement
If n > 0.05 N
N - nx
= n
N - 1
finite populationcorrection factor
38
0
10
0 1 2 3 4 5 6 7 8 9
Distribution of 50 Sample Means for 50 Students
Fre
qu
ency
Figure 5-20
5
15