You can configure the update frequency and other settings that control how an adaptive model operates.
The settings in this tab are grouped into the following categories:
On update model:
Data analysis binning:
This setting operates in conjunction with Grouping minimum cases to control how predictor grouping is established. The fact that a predictor has more groups typically increases the performance, however the model might become less robust.
Predictor selection:
The value is measured as the coefficient of concordance (CoC) of the predictor as compared to the outcome. A higher value results in fewer predictors in the final model. The minimum performance of CoC is 0.5, therefore the value of the performance threshold should always be set to at least 0.5.
Attach audit notes to work object – Select this option if you want adaptive model details captured in the work object's history. This option is disabled by default.
Enabling this setting causes significant performance overhead.