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Overview of the Linear Regression Model
A
linear regression
attempts to predict the value of a measure
response variable
as a
linear function
of one or more effects. The
linear regression model
uses the
least squares method
to determine the model. The
least squares
method creates a line of
best fit
by minimizing the
residual sum of squares
for every
observation
in the
input data set
. The residual
sum of squares
is the vertical distance between an observation and the line of best fit. The least squares method requires no assumptions about the distribution of the input data.
The linear regression model requires a measure response variable and at least one effect variable or
interaction term
.
Copyright © SAS Institute Inc. All Rights Reserved.
Last updated: January 8, 2019
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