Final answer:
We expect β5 ≤ 0 because higher-ranked law schools tend to yield higher salaries. Other parameters are expected to be positive, with a one-point increase in GPA leading to a 24.8% salary increase and a 1% increase in library volumes leading to a 0.095% salary increase. A 20-rank decrease in law school rank would decrease salary by 0.066%.
Step-by-step explanation:
When analyzing the regression equation log(salary) = β0 + β1LSAT + β2GPA + β3log(libvol) + β4log(cost) + β5rank + u, we anticipate that β5 ≤ 0 because a higher rank (closer to 1) is generally associated with better law schools, which in turn tend to lead to higher salaries. Thus, as rank increases (indicating a lower rank), we expect salaries to decrease, signifying a negative relationship.
For the other slope parameters, positive signs are expected. Higher LSAT scores (β1 > 0) and GPAs (β2 > 0) generally indicate better academic performance, which could result in higher salaries. The volume of the library (libvol) is also expected to have a positive coefficient (β3 > 0), as larger libraries might indicate better resources for students, potentially leading to better career prospects. Lastly, the cost of attendance (β4 > 0) is often higher at prestigious schools, which may lead to higher salaries.
The estimated equation provided and the coefficient on GPA (0.248) indicate that a one-point increase in median GPA is predicted to increase the starting salary by 24.8% ceteris paribus.
The coefficient of log(libvol), which is 0.095, suggests that a 1% increase in the number of volumes in the law school library is associated with a 0.095% increase in the predicted salary.
As the coefficient of rank is -0.0033, we can infer that attending a higher-ranked law school correlates with a higher starting salary. A 20-rank increase, ceteris paribus, would decrease the predicted salary by approximately 0.066%, given the negative coefficient on rank.