If you specify values for more than one hyperparameter, then the models in
  the evaluation table depend on whether you evaluate the complete combinations
  of the hyperparameters. 
 
 
  - If you select 
	 Evaluate complete parameter
				  combinations,
	 then the algorithm evaluates every combination of the hyperparameters. This
	 option generally takes longer to calculate. 
  
 
 
  - Otherwise, the algorithm
	 evaluates the hyperparameters in this order: 
	 
 
		- Learning
				  rate
		  
		
 
 
		- Subsample
				  fraction
		  
		
 
 
		- Individual tree complexity
				  parameter
		  
		
 
 
	 
 
	 For example, suppose that the algorithm receives the following
		hyperparameters: 
	 
 
		- Learning rates: 0.001,
		  0.01, 0.1 
		
 
 
		- Subsample fractions: 0.4,
		  0.5, 0.7 
		
 
 
		- Maximum numbers of
		  terminal nodes: 4, 6 
		
 
 
	 
 
	  
		- The algorithm sets the
		  subsample proportion to 0.4 and the maximum number of terminal nodes to 4.
		  Then, the algorithm evaluates the learning rates in order from least to
		  greatest: 0.001, 0.01, 0.1. 
		
 
 
		- Suppose the algorithm
		  identifies 0.01 as the best learning rate. Then the algorithm sets the learning
		  rate to 0.01 and the maximum number of terminal nodes to 4. Then, the algorithm
		  evaluates the subsample proportions of 0.4, 0.5, and 0.7. 
		
 
 
		- Suppose that the algorithm
		  identifies 0.5 as the best subsample proportion. Then the algorithm sets the
		  learning rate to 0.01, the subsample proportion to 0.5. Then, the algorithm
		  evaluates the maximum numbers of nodes of 4 and 6. 
		
 
 
		- Suppose that the algorithm
		  identifies 6 as the best maximum number of terminal nodes. Then Minitab
		  produces the evaluation table and the results for the model with learning rate
		  = 0.01, subsample proportion 0.5, and maximum number of terminal nodes 6. 
		
 
 
	 
 
	   
   
 
 
In this example, the analysis that does not evaluate the complete set of
  parameter combinations includes 8 models in the evaluation table. An analysis
  of all the parameter combinations has 3 × 3 × 2 = 18 combinations and takes
  longer to calculate. 
 
For details on the calculation of the accuracy criteria for an individual
  model, go to 
  Methods and formulas for the model summary in Fit Model and Discover Key Predictors with TreeNet® Classification.