STATISTICS
containingRof theM parameters.) IfH 0 is true then it follows from our
discussion in subsection 31.5.6 (although we shall not prove it) that, when the
sample sizeNis large, the quantity−2lntfollows approximately achi-squared
distribution of orderR.
31.7.5 Student’st-testStudent’st-test is just a special case of the generalised likelihood ratio test applied
to a samplex 1 ,x 2 ,...,xNdrawn independently from a Gaussian distribution for
whichboththe meanμand varianceσ^2 are unknown, and for which one wishes
to distinguish between the hypotheses
H 0 :μ=μ 0 , 0 <σ^2 <∞, and H 1 :μ=μ 0 , 0 <σ^2 <∞,whereμ 0 is a given number. Here, the parameter spaceAis the half-plane
−∞<μ<∞,0<σ^2 <∞, whereas the subspaceScharacterised by the null
hypothesisH 0 is the lineμ=μ 0 ,0<σ^2 <∞.
The likelihood function for this situation is given byL(x;μ, σ^2 )=1
(2πσ^2 )N/^2exp[
−∑
i(xi−μ)22 σ^2]
.On the one hand, as shown in subsection 31.5.1, the values ofμandσ^2 that
maximiseLinAareμ=x ̄andσ^2 =s^2 ,wherex ̄is the sample mean ands^2 is
the sample variance. On the other hand, to maximiseLin the subspaceSwe set
μ=μ 0 , and the only remaining parameter isσ^2 ; the value ofσ^2 that maximises
Lis then easily found to be
σ̂^2 =^1
N∑Ni=1(xi−μ 0 )^2.To retain, in due course, the standard notation for Student’st-test, in this section
we will denote the generalised likelihood ratio byλ(rather thant); it is thus
given by
λ(x)=L(x;μ 0 ,σ̂^2 )
L(x;x, s ̄^2 )=[(2π/N)∑
i(xi−μ^0 )(^2) ]−N/ (^2) exp(−N/2)
[(2π/N)
∑
i(xi− ̄x)
(^2) ]−N/ (^2) exp(−N/2)=
[∑
i(xi− ̄x)
2
∑
i(xi−μ^0 )^2
]N/ 2
. (31.112)
Normally, our next step would be to find the sampling distribution ofλunder
the assumption thatH 0 were true. It is more conventional, however, to work in
terms of a related test statistict, which was first devised by William Gossett, who
wrote under the pen name of ‘Student’.