Using the assumptions of linearity, constant variance, and independence, along with the fact that A and B can each be expressed as a linear function of the Yis, derive the sampling variances of A and B in simple regression. [Hint: V(B) =
The formula for the sampling variance of B in simple regression,
shows that, to estimate β precisely, it helps to have spread out xs. Explain why this result is intuitively sensible, illustrating your explanation with a graph. What happens to V(B) when there is no variation in X?
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