Predictive and Specialized Modeling > Make Validation Column > Overview of the Make Validation Column Platform
Publication date: 07/08/2024

Image shown hereOverview of the Make Validation Column Platform

Validation is the process of using part of a data set to estimate model parameters and using another part to assess the predictive ability of a model. With complex data, this can reduce the risk of model overfitting.

One use for a validation column is to partition the data into two or three parts.

The training set is used to estimate the model parameters.

The validation set is used to help choose a model with good predictive ability.

The testing set checks the model’s predictive ability after a model has been chosen.

Another use for a validation column is to partition the data into four or more folds to use in K-Fold crossvalidation.

A validation column can be used as a validation method in many JMP platforms, but K-Fold crossvalidation through a validation column is supported only by a few platforms. See Validation in JMP Modeling.

The Make Validation Column platform enables you to create training, validation, and test sets using a variety of methods. You can specify stratification, grouping, or cutpoint columns to determine the method used to create the validation column.

Want more information? Have questions? Get answers in the JMP User Community (community.jmp.com).