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Fitting a multiple linear regression

Fit a multiple linear regression model to describe the relationship between many quantitative predictor variables and a response variable.

  1. Select a cell in the dataset.
  2. On the Analyse-it ribbon tab, in the Statistical Analyses group, click Fit Model, and then click Multiple Regression.
    The analysis task pane opens.
  3. In the Y drop-down list, select the response variable.
  4. In the Available variables list, select the predictor variables:
    • To select a single variable, click the variable.
    • To select multiple variables, click the first variable then hold down the CTRL key and click each additional variable.
    • To select a range of variables, click the first variable then hold down the SHIFT key and click the last variable in the range.
  5. Click Add Predictor.
  6. Repeat steps 4 through 5 for each additional set of variables.
  7. Optional: To assign a weight to each row for the analysis, in the Weight drop-down list, select the weight variable.
  8. Click Calculate.
Related concepts
Summary of fit
Parameter estimates
Effect of model hypothesis test
Residual plot
Related tasks
Plotting residuals
Identifying outliers and other influential points
Making predictions
Saving variables
Related reference
Dataset layout
Advanced models
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Version 6.15
Published 18-Apr-2023
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Statistical analysis and method validation software for Microsoft Excel.

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