MANE 3332.05
Lecture 22
Agenda
- Continue Chapter 8 lecture
- Chapter 8, Case 1 Quiz (assigned 11/11/2025, due 11/13/2025)
- Chapter 8, Case 2 Practice Problems (assigned 11/11/2025, due 11/13/2025)
- New: Chapter 8, Case 2 Quiz (assigned 11/13/2025, due 11/18/2025)
- New: Chapter 8, Case 3 Practice Problems (assigned 11/13/2025, due 11/18/2025)
- Attendance
- Questions?
Handouts
| Week | Tuesday Lecture | Thursday Lecture |
|---|---|---|
| 11 | 11/11 - Chapter 8 (part 2) | 11/13 - Chapter 8 (part 3) |
| 12 | 11/18 - Chapter 8 (part 4) | 11/25 - Chapter 9 (part 1) |
| 13 | 11/25 - Chapter 9 (part 2) | 11/27 - Thanksgiving Holiday (no class) |
| 14 | 12/2 - Chapter 9 (part 3) | 12/4 - Linear Regression |
| 15 | 12/9 - Review Session | 12/11 - Study Day (no class) |
The final exam for MANE 3332.01 is Thursday December 18, 2025 at 10:15 AM - 12:00 PM.

Confidence Interval for \(\sigma^2\) and \(\sigma\) (Case 3)
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Section 8-3 presents a CI for \(\sigma^2\) or \(\sigma\)
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Requires the \(\chi^2\) (chi-squared) distribution
Let \(X_1,X_2,\ldots,X_n\) be a random sample from a normal distribution with mean \(\mu\) and variance \(\sigma^2\) and let \(S^2\) be the sample variance. Then the random variable
has a chi-square (\(\chi^2\)) distribution with \(n-1\) degrees of freedom
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A table of the upper percentage points of the \(\chi^2\) distribution are given in Table 4 in the appendix
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Figure 8-9 on page 183 explains the percentage points of the \(\chi^2\) distribution


Confidence Intervals for \(\sigma^2\) and \(\sigma\)
If \(s^2\) is the sample variance from a random sample of \(n\) observations from a normal distribution with unknown variance \(\sigma^2\), then a \(100(1-\alpha)\%\) confidence interval on \(\sigma^2\) is
where \(\chi^2_{\alpha/2,n-1}\) and \(\chi^2_{1-\alpha/2,n-1}\) are the upper and lower \(100\alpha/2\) percentage points of the \(\chi^2\)-distribution with \(n-1\) degrees of freedom
Problem 8-36 (6th edition)


One-sided confidence bounds
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Are easy to construct
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Use only the appropriate upper or lower bound
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Change \(\chi^2_{\alpha/2,n-1}\) to \(\chi^2_{\alpha,n-1}\) or \(\chi^2_{1-\alpha/2,n-1}\) to \(\chi^2_{1-\alpha,n-1}\)
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See eqn (8-20) on page 184
Chapter 8, Case 3 Practice Problems
Large-Sample CI for a Population Proportion (Case 4)
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Recall from chapter 4, that the sampling distribution of \(\widehat{P}\) is approximately normal with mean \(p\) and variance \(p(1-p)/p\), if \(n\) is not too close to either 0 or 1 and if \(n\) is relatively large.
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Typically, we require both \(np\geq 5\) and \(n(1-p)\geq 5\)
f \(n\) is large, the distribution of
is approximately standard normal.
If \(\hat{p}\) is the proportion of observations in a random sample of size \(n\) that belongs to a class of interest, an approximate \(100(1-\alpha)\%\) confidence interval on the proportion \(p\) of the population that belongs to this class is
where \(z_{\alpha/2}\) is the upper \(\alpha/2\) percentage point of the standard normal distribution
Other Considerations
- We can select a sample so that we are \(100(1-\alpha)\%\) confident that error \(E=|p-\widehat{P}|\) using
- An upper bound on is given by
- One-sided confidence bounds are given in eqn (8-26) on page 187
Guidelines for Constructing Confidence Intervals
- Review excellent guide given in Table 8-1
Other Interval Estimates
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When we want to predict the value of a single value in the future, a prediction interval is used
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A tolerance interval captures \(100(1-\alpha)\%\) of observations from a distribution
Prediction Interval for a Normal Distribution
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Excellent discussion on pages 189 - 190
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A \(100(1-\alpha)\%\) PI on a single future observation from a normal distribution is given by
Tolerance Intervals for a Normal Distribution
- A tolerance interval to contain at least \(\gamma\%\) of the values in a normal population with confidence level \(100(1-\alpha)\%\) is
where \(k\) is a tolerance interval factor for the normal distribution found in appendix A Table XII. Values are given for \(1-\alpha\)=0.9, 0.95 and 0.99 confidence levels and for \(\gamma=.90,\,.95,\,\mbox{and }.99\%\) probability of coverage
- One-sided tolerance bounds can also be computed. The factors are also in Table XII