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5. Consider the following regression: where EUX] = 0 (remember that this is a stronger assumption than our usual assumption t

(a) What is PY 1X? (b) What is Var[U|X]? Is it reasonable to assume that U is homoskedastic? (c) Is it possible for the fitte
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Answer #1

(a) P(Y = 1|X) = E(Y|X) or, Var(X3-UX)=, (X,β)(1-X3) or, Var(U|x) (X) (1-XB) Since Var(UX) is not independent of X so homos

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