Robert_V._Hogg,_Joseph_W._McKean,_Allen_T._Craig

(Jacob Rumans) #1
224 Some Special Distributions

3.7.10.For the Burr distribution, show that

E(Xk)=
1
βk/τ

Γ

(
α−
k
τ

)
Γ

(
k
τ

+1

)/
Γ(α),

providedk<ατ.


3.7.11.Let the numberXof accidents have a Poisson distribution with meanλθ.
Supposeλ, the liability to have an accident, has, givenθ, a gamma pdf with pa-
rametersα=handβ=h−^1 ;andθ, an accident proneness factor, has a generalized
Pareto pdf with parametersα,λ=h,andk. Show that the unconditional pdf of
Xis


Γ(α+k)Γ(α+h)Γ(α+h+k)Γ(h+k)Γ(k+x)
Γ(α)Γ(α+k+h)Γ(h)Γ(k)Γ(α+h+k+x)x!

,x=0, 1 , 2 ,...,

sometimes called thegeneralized Waringpmf.

3.7.12.LetXhave a conditional Burr distribution with fixed parametersβandτ,
given parameterα.


(a)Ifαhas the geometric pmfp(1−p)α,α=0, 1 , 2 ,..., show that the uncondi-
tional distribution ofXis a Burr distribution.

(b)Ifαhas the exponential pdfβ−^1 e−α/β,α>0, find the unconditional pdf of
X.

3.7.13.LetXhave the conditional Weibull pdf


f(x|θ)=θτxτ−^1 e−θx

τ
, 0 <x<∞,

and let the pdf (weighting function)g(θ) be gamma with parametersαandβ. Show
that the compound (marginal) pdf ofXis that of Burr.

3.7.14.IfXhas a Pareto distribution with parametersαandβand ifcis a positive
constant, show thatY=cXhas a Pareto distribution with parametersαandβ/c.

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