Linear regression is a common statistical technique for classifying records based on the
values of numeric input fields. Linear regression fits a straight line or surface that minimizes the
discrepancies between predicted and actual output values.
Requirements. Only numeric fields can be used in a linear
regression model. You must have exactly one target field (with the role set to
Target) and one or more predictors (with the role set to
Input). Fields with a role of Both or
None are ignored, as are non-numeric fields. (If necessary, non-numeric
fields can be recoded using a Derive node.)
Strengths. Linear regression models are relatively simple and give
an easily interpreted mathematical formula for generating predictions. Because linear regression is
a long-established statistical procedure, the properties of these models are well understood. Linear
models are also typically very fast to train. The Linear node provides methods for automatic field
selection in order to eliminate nonsignificant input fields from the equation.
Tip: In cases where the target field is categorical rather than a continuous range, such
as yes/no or churn/don't churn, logistic regression
can be used as an alternative. Logistic regression also provides support for non-numeric inputs,
removing the need to recode these fields.
Note: When first creating a flow, you select which runtime to use. By default,
flows use the IBM SPSS Modeler runtime. If you want to use native Spark
algorithms instead of SPSS algorithms, select the Spark runtime. Properties
for this node will vary depending on which runtime option you choose.
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