In many manufacturing processes, it is necessary to control the amount that the process varies. For example, an automobile part manufacturer must produce thousands of parts that can be used in the manufacturing process. It is imperative that the parts vary little or not at all. How might the manufacturer measure and, consequently, control the amount of variation in the car parts? A chi-square distribution can be used to construct a confidence interval for this variance.
The chi-square distribution with a
The chi-square distribution is a family of curves, each determined by the degrees of freedom. To form a confidence interval for the population variance, use the chi-square distribution with degrees of freedom equal to one less than the sample size:
There are two critical values for each level of confidence:
- The value of
${ X }_{ R }^{ 2 }$ represents the right-tail critical value. - The value of
${ X }_{ L }^{ 2 }$ represents the left-tail critical value.
Constructing a Confidence Interval
As example, imagine you randomly select and weigh 30 samples of an allergy medication. The sample standard deviation is 1.2 milligrams. Assuming the weights are normally distributed, construct 99% confidence intervals for the population variance and standard deviation.
The areas to the left and right of
Area to the right of
Area to the left of
Using the values
Using these critical values and
Right endpoint:
Left endpoint:
So, with 99% confidence, we can say that the population variance is between 0.798 and 3.183.