Explain how the coefficients of Simple Linear Regression can be interpreted in terms of correlation.
- Coefficients Are Independent of Correlation
- Coefficients Determine Correlation
- Coefficients Indicate No Correlation
- Coefficients Represent the Strength and Direction of the Relationship
The coefficients in Simple Linear Regression represent the strength and direction of the relationship between the dependent and independent variables, and they provide information on how changes in one variable are associated with changes in the other.
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