Standardization is helpful when you want to ensure that all of the continuous predictor variables have the same locations and/or scales.Note : When you specify a Test Data Set or when you are running this process through Cross Validation Model Comparison , standardization is performed only on the training data and then the resulting location and scale statistics are used to standardize the test data.
Standardizes values to zero (0) with a scale equivalent to the sum of the values. Standardizes values to zero (0) with a scale equivalent to the Euclidean length. Standardizes values to zero (0) with a scale equivalent to the maximum absolute value. Standardizes values to the biweight 1-step M -estimate with a scale equivalent to the biweight A -estimate.Note : 4.685 is the default numeric tuning constant used in this method. Standardizes values to the Huber 1-step M -estimate with a scale equivalent to the Huber A -estimate.Note : 1.345 is the default numeric tuning constant used in this method. Note : 1 is the default numeric tuning constant used in this method. Note : 0.1 is the default numeric constant giving the proportion of data to be contained in the spacing. Note : 0.1 is the default numeric constant specifying the power to which differences are to be raised in computing an L( p ) or Minkowski metric.Refer to the SAS PROC STDIZE documentation for more information.