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Limit Number of Attributes in Each Rule: The default is to select this option. The maximum number of attributes in each rule; this number must be an integer between 2 and 20. Higher numbers of rules result in slower builds. The default value is 3. You can change the number of attributes in a rule, or you can specify no limit for the number of attributes in a rule. To specify no limit, unselect this. Specifying a large number of attributes in each rule increases the number of rules considerably. A good practice is to start with the default and increase this number slowly.
Automatic preparation, ON or OFF. ON signifies that Automatic Data Preparation (ADP)is used for normalization and outlier detection. The SVM algorithm automatically handles missing value treatment and the transformation of categorical data. Normalization and outlier detection must be handled by ADP or prepared manually. The default is ON.
Minimum Support: A number between 0 and 100 indicating a percent. Smaller values for support results in slower builds and requires more system resources. The default is 5%.
Minimum Confidence: Confidence in the rules. A number between 0 and 100 indicating a percent. High confidence results in a faster build. The default is 10%.