Stepwise method
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Select the method for stepwise selection of predictors.
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Missing data deletion
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Missing data can be deleted casewise or substituted by the respective predictor means.
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F To enter
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Specifies the F-to-enter value for forward or backward selection of predictors.
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F to remove
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Specifies the F-to-remove value for forward or backward selection of predictors.
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Maximum number of steps
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Maximum number of steps for stepwise selection of predictors.
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Tolerance value
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Specifies the tolerance value for detecting redundancy among the predictor variables. The tolerance of a variable is defined as 1 minus the squared multiple correlation of this variable with all other predictors in the model. The smaller the tolerance of a variable, the more redundant is its contribution to the model.
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A priori class. probabilities
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Specifies how to compute a priori classification probabilities; a priori classification probabilities can either be computed proportional to the observed class (group) sizes or they can be the same for all groups.
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Generates data source, if N for input less than
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Generates a data source for further analyses with other Data Miner nodes if the input data source has fewer than k observations, as specified in this edit field; note that parameter k (number of observations) will be evaluated against the number of observations in the input data source, not the number of valid or selected observations.
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