Question

Once the dependent variable is determined when building a bivariate or multiple-regression model, what is the...

Once the dependent variable is determined when building a bivariate or multiple-regression model, what is the next step?

Multiple Choice

  • Determine what factors contribute to the change in the dependent variable.

  • Define the data series for the model.

  • Specify the correlation between the dependent variables.

  • Identify the other dependent variables.

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Once the dependent variable is determined when building a bivariate or multiple-regression model then the next step is

Determine what factors contribute to the change in the dependent variable

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