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Asymptotic Methods in Statistical Inference - Statistics Centre

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212<br />

In this example the likelihood and log-likelihood are<br />

with<br />

(θ) =<br />

Y<br />

=1<br />

− <br />

! ·<br />

Y<br />

=1<br />

−(+)( + ) <br />

!<br />

(θ) = − + ¯ log − ( + )<br />

+ ¯ log ( + )+<br />

˙ (θ) = ³ − + ¯<br />

+<br />

−( + )+ ¯<br />

<br />

−¨ (θ) =<br />

Thus ˆθ = ³ˆ ˆ´<br />

µ<br />

0 ¯+ ¯<br />

+<br />

⎛<br />

⎜<br />

⎝<br />

¯<br />

(+) 2<br />

¯<br />

(+) 2<br />

´<br />

+ ¯<br />

+<br />

⎞<br />

(+) 2<br />

¯<br />

(+) 2<br />

¯<br />

2 + ¯<br />

⎟<br />

⎠ <br />

= ³ ¯ − ¯ ¯´. Under all + <br />

observations have Poisson parameter and so ˆθ =<br />

<br />

. The <strong>in</strong>formation matrix is<br />

I (θ) = lim 1 h −¨ (θ) i<br />

=<br />

⎛<br />

⎝<br />

<br />

(+)<br />

<br />

(+)<br />

<br />

⎞<br />

(+)<br />

1−<br />

+ ⎠ <br />

(+)<br />

<br />

µ<br />

0 ˆ<br />

<br />

=

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