Specify the options to use to analyze your response surface design.
In Weights, enter a numeric column of weights to perform weighted regression. Weighted regression is a method that can be used when the least squares assumption of constant variance in the residuals is violated (also called heteroscedasticity). With the correct weights, this procedure minimizes the sum of weighted squared residuals to produce standardized residuals with a constant variance (also called homoscedasticity). For more information about determining the appropriate weight, go to Weighted regression.
The weights must be greater than or equal to zero. The weights column must have the same number of rows as the response column.
Enter the level of confidence for the confidence intervals for the coefficients and the fitted values.
Usually, a confidence level of 95% works well. A 95% confidence level indicates that, if you took 100 random samples from the population, the confidence intervals for approximately 95 of the samples would contain the mean response. For a given set of data, a lower confidence level produces a narrower interval, and a higher confidence level produces a wider interval.
To display the confidence intervals, go to the Results sub-dialog box, and from Display of results, select Expanded tables.
Select the type of confidence interval or bound that you want to display.