A method for determining which terms to retain in a model. Forward selection adds variables to the model using the same method as the stepwise procedure. Once added, a variable is never removed. The default forward selection procedure ends when none of the candidate variables have a p-value smaller than the value specified in Alpha to enter.
A method for determining which variables to retain in a model. Backward elimination starts with the model that contains all the terms and then removes terms, one at a time, using the same method as the stepwise procedure. No variable can re-enter the model. The default backward elimination procedure ends when none of the variables included in the model have a p-value greater than the value specified in Alpha to remove.
Performs variable selection by adding or deleting predictors from the existing model based on a chi-square test. Stepwise is a combination of forward selection and backward elimination procedures.
Go to Analysis of Deviance for the calculations of chi-square statistics for a term.
Minitab calculates a chi-square statistic and p-value for each variable in the model.
If the p-value for any variable is greater than the value specified in Alpha to remove, then Minitab removes the variable with the largest p-value from the model, calculates the regression equation, displays the results, and initiates the next step.
If Minitab cannot remove a variable, the procedure attempts to add a variable. Minitab calculates a chi-square statistic and p-value for each variable that is not in the model.
If the p-value corresponding to the chi-square statistic for any variable is smaller than the value specified in Alpha to enter, Minitab adds the variable with the smallest p-value to the model, calculates the regression equation, displays the results, and initiates the next step.
When no more variables can be entered into or removed from the model, the stepwise procedure ends.