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Asymptotic Methods in Statistical Inference - Statistics Centre

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220<br />

The restricted MLE ˆθ is obta<strong>in</strong>ed by first f<strong>in</strong>d<strong>in</strong>g<br />

the LSE <strong>in</strong> the restricted model:<br />

ˆβ (1) =argm<strong>in</strong>||y − η ³ β (1) 0´<br />

|| 2 <br />

The MLE of 2 <strong>in</strong> the restricted model is<br />

and then<br />

ˆ 2 =<br />

<br />

<br />

µˆθ<br />

<br />

µˆβ<br />

<br />

<br />

= <br />

<br />

µ<br />

log ˆ 2 <br />

+1 <br />

= − 2<br />

The likelihood ratio statistic is<br />

2∆ = 2<br />

µ ³ˆθ´ <br />

− <br />

µˆθ = log <br />

Ã<br />

<br />

= log 1+ <br />

!<br />

− <br />

which is an <strong>in</strong>creas<strong>in</strong>g function of . In l<strong>in</strong>ear<br />

models is exactly distributed as − ,andas<br />

2 as →∞.<br />

• Wald’s test and the Scores test of a l<strong>in</strong>ear hypothesis<br />

co<strong>in</strong>cide with the LR test <strong>in</strong> l<strong>in</strong>ear regression<br />

models; they differ for nonl<strong>in</strong>ear regression.

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