Title: 62: Estimating a Population Mean: Large Samples
16-2 Estimating a Population Mean Large
Samples
- Objective
- Given a large (more than 30) collection of sample
values, develop an estimate of the population
mean. - Assumptions being
- Sample size gt 30
- The sample is a simple random sample
- All selections have an equal chance of being
selected.
2Definitions
- Estimator a formula or process for using sample
data to estimate a population parameter. - Estimate a specific value or range of values
used to approximate a population parameter. - Point estimate a single value used to
approximate a population parameter. - (The sample mean x-bar is the best point estimate
of the population mean.)
3Definitions
- Estimate
- Confidence Interval the range or interval of
values used to estimate the true value of the
population mean. - (56, 65), or 56 lt ? lt 65
- Alpha region the region under the probability
curve not included in the level of confidence. - Degree / Level of confidence the probability
that the confidence interval actually does
contain the population parameter. ( 1 - ? )
4Definitions
?/2 region
5Degree / Level of Confidence
- 3 most common are
- ? 0.1 1-0.1 0.9 90 level of confidence.
- ? 0.05 1-0.05 0.95 95 level of
confidence. - ? 0.01 1-0.01 0.99 99 level of confidence.
- Example
- The .95 or 95 level of confidence interval
estimate of the population mean is (98.08,
98.32) - What is ? for a 95 level of confidence?
6Interpretation (98.08, 98.32)
- Correct We are 95 confident that the interval
(98.08, 98.32) actually does contain the true
value of ?, the population mean. - If we were to select many different samples of
the same size and construct the confidence
intervals, 95 of them would actually contain the
value of ?. - Incorrect There is a 95 chance that the true
value of ? actually falls in the interval (98.08,
98.32)
7Confidence Intervals from 20 Different Samples
Figure 6-1
8Definition Critical Value
- The number on the borderline (designated ? z?/2)
separating sample statistics that are likely to
occur from those that are unlikely to occur. The
number z?/2 is a critical value that is a z-score
with the property that it separates an area of
in the right tail of the standard normal
distribution.
9 The Critical Value
z??2
??2
??2
z??2
-z??2
z0
Found from Table A-2 (corresponds to area of 0.5
- ??2 )
Figure 6-2
10Find the critical values corresponding to a __
degree of confidence.
11Margin of Error (?)
- the maximum likely difference between the
observed sample mean and the population mean.
12 13Calculating ? when ? is unknown(most likely
scenerio)
- If n gt 30 we can replace ? in Formula 6-1 with s,
the sample standard deviation. - If n ? 30, the population must have a normal
distribution, and we must know ? to use Formula
6-1.
14Confidence Interval (or Interval Estimate) for
Population Mean µ(Based on Large Samples n gt30)
15Rounding rules
- When using the original set of data, round the
confidence interval limits to one more decimal
place than used in the original set of data. - When the original set of dat is unknown and only
the summary statistics are used, round the CI
limits to the same number of decimal places used
for the sample mean.
16Procedure for Constructing a Confidence Interval
for µ( Based on a Large Sample n gt 30 )
17Procedure for Constructing a Confidence Interval
for µ( Based on a Large Sample n gt 30 )
- 1. Find the critical value z??2 that corresponds
to the desired degree of confidence.
18Procedure for Constructing a Confidence Interval
for µ( Based on a Large Sample n gt 30 )
- 1. Find the critical value z??2 that corresponds
to the desired degree of confidence.
2. Evaluate the margin of error ? z??2 ? /
n .
If the population standard deviation ? is
unknown, use the value of the sample standard
deviation s provided that n gt 30.
19Procedure for Constructing a Confidence Interval
for µ( Based on a Large Sample n gt 30 )
- 1. Find the critical value z??2 that corresponds
to the desired degree of confidence.
2. Evaluate the margin of error E z??2 ? /
n .
If the population standard deviation ? is
unknown, use the value of the sample standard
deviation s provided that n gt 30.
3. Find the values of x - E and x E.
Substitute those
values in the general format of the confidence
interval
20Procedure for Constructing a Confidence Interval
for µ( Based on a Large Sample n gt 30 )
- 1. Find the critical value z??2 that corresponds
to the desired degree of confidence.
2. Evaluate the margin of error E z??2 ? /
n .
If the population standard deviation ? is
unknown, use the value of the sample standard
deviation s provided that n gt 30.
3. Find the values of x - E and x E.
Substitute those
values in the general format of the confidence
interval
4. Round using the confidence intervals roundoff
rules.
21Example A study found the body temperatures of
106 healthy adults. The sample mean was 98.2
degrees and the sample standard deviation was
0.62 degrees. Find the margin of error E and the
95 confidence interval.
22Example A study found the body temperatures of
106 healthy adults. The sample mean was 98.2
degrees and the sample standard deviation was
0.62 degrees. Find the margin of error E and the
95 confidence interval.
- n 106
- x 98.2o
- s 0.62o
- ? 0.05
- ??/2 0.025
- z ?/ 2 1.96
23Example A study found the body temperatures of
106 healthy adults. The sample mean was 98.2
degrees and the sample standard deviation was
0.62 degrees. Find the margin of error E and the
95 confidence interval.
- n 106
- x 98.20o
- s 0.62o
- ? 0.05
- ??/2 0.025
- z ?/ 2 1.96
24Example A study found the body temperatures of
106 healthy adults. The sample mean was 98.2
degrees and the sample standard deviation was
0.62 degrees. Find the margin of error E and the
95 confidence interval.
- n 106
- x 98.20o
- s 0.62o
- ? 0.05
- ??/2 0.025
- z ?/ 2 1.96
25Example A study found the body temperatures of
106 healthy adults. The sample mean was 98.2
degrees and the sample standard deviation was
0.62 degrees. Find the margin of error E and the
95 confidence interval.
- n 106
- x 98.20o
- s 0.62o
- ? 0.05
- ??/2 0.025
- z ?/ 2 1.96
E z ?/ 2 ? 1.96 0.62 0.12
n
106
x - E lt ? lt x E
98.20o - 0.12 lt ? lt 98.20o 0.12
26Example A study found the body temperatures of
106 healthy adults. The sample mean was 98.2
degrees and the sample standard deviation was
0.62 degrees. Find the margin of error E and the
95 confidence interval.
- n 106
- x 98.20o
- s 0.62o
- ? 0.05
- ??/2 0.025
- z ?/ 2 1.96
E z ?/ 2 ? 1.96 0.62 0.12
n
106
x - E lt ? lt x E
98.20o - 0.12 lt ? lt 98.20o 0.12
98.08o lt ? lt 98.32o
27Example A study found the body temperatures of
106 healthy adults. The sample mean was 98.2
degrees and the sample standard deviation was
0.62 degrees. Find the margin of error E and the
95 confidence interval.
- n 106
- x 98.20o
- s 0.62o
- ? 0.05
- ??/2 0.025
- z ?/ 2 1.96
E z ?/ 2 ? 1.96 0.62 0.12
n
106
x - E lt ? lt x E
98.08o lt ? lt 98.32o
Based on the sample provided, the confidence
interval for the population mean is 98.08o lt ?
lt 98.32o. If we were to select many different
samples of the same size, 95 of the confidence
intervals would actually contain the population
mean ?.
28Example The drive through service times were
recorded for 52 randomly selected customers at a
Burger King Restaurant. Those times had a mean
of 181.3 sec and a s.d. of 82.2 sec. Construct a
95 confidence interval estimate of the
population mean.
- n 52
- x 181.3
- s 82.2
- ? 0.05
- ??/2 0.025
- z ?/ 2 1.96
29Example The drive through service times were
recorded for 52 randomly selected customers at a
Burger King Restaurant. Those times had a mean
of 181.3 sec and a s.d. of 82.2 sec. Construct a
95 confidence interval estimate of the
population mean. n 52 x 181.3 s 82.2 ?
0.05 ??/2 0.025 z ?/ 2 1.96
E z ?/ 2 ? 1.96 82.2 22.3
x - E lt ? lt x E
159.0 lt ? lt 203.6
Based on the sample provided, the confidence
interval for the population mean is 159.0 lt ? lt
203.6. If we were to select many different
samples of the same size, 95 of the confidence
intervals would actually contain the population
mean ?.
30Finding the Point Estimate and E from a
Confidence Interval
Point estimate of µ x (upper confidence
interval limit) (lower confidence interval
limit) 2
31Finding the Point Estimate and E from a
Confidence Interval
Point estimate of µ x (upper confidence
interval limit) (lower confidence interval
limit) 2
Margin of Error E (upper confidence interval
limit) - (lower confidence interval limit)
2
32Finding the Point Estimate and E from a
Confidence Interval
- Find the point estimate of the mean and the
margin of error for the following confidence
intervals - (254.6, 305.1)
- ? E
33Finding the Point Estimate and E from a
Confidence Interval
- Find the point estimate of the mean and the
margin of error for the following confidence
intervals - (254.6, 305.1)
- ? E