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Question 15 3 pts Suppose that you estimate a multiple regression model using OLS using a sample of 120 observations. The ske
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2 JB n (Skewness) mes 6 + Kurtoiss - 3)2 24 + (K-3) as t 2 120 (0.5) - 6 24 - 120 + 0.25 6 24 120 It 24 120 x 2 to 5 10 n =

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