a. strong direct relationship
b. no relationship
c. moderate inverse relationship
d. weak inverse relationship
Here, R Square = 0.752725
r = √0.752725
r = 0.8676
This implies there exist a strong positive correlation between the height of the employees and their salaries.
Therefore, Option a is correct.
a. Strong direct relationship.
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