Interpreting the regression line constants, explanatory and response variables
Home > Interpreting the regression line constants, explanatory and response variables
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In this video I show you how to interpret the values of a and b in the regression line y=a+bx in the context of the problem. I also explain what we mean by independent (explanatory) and dependent (response) variables.