Likelihood-based estimation Flashcards
1
Q
Define the likelihood and log likelihood functions
A
pg 15 (actually look)
2
Q
Define MLE
A
Maximum likelihood estimator
L_n(θ^) = max_{θ∈Θ} L_n(θ)
3
Q
What does it mean to say the MLE has the property of invariance?
A
if θ^ is the MLE of θ and g is an arbitrary function of θ, then g(θ^) is an MLE of g(θ)
4
Q
State the score function of θ
A
pg 19
5
Q
Define the Fisher information matrix
A
pg19
6
Q
If X = (X1 , … , Xn) with Xi
i.i.d. random variables, state the Fisher information of X
A
I_n (θ) = n I(θ)
7
Q
State the Cramer-Rao lower bound and Proposition 2.2
A
pg 21 and pg 23