148 A COMPARATIVE ANALYSIS OF DEPENDENCE LEVELS
in Chambers, Mallows and Stuck (1996). LetW be a random variable
exponentially distributed with parameterλ=1, andUa random variable
uniformly distributed on [−π 2 ,π 2 ] and letξ=arctan(βtan(πα/2))/αand the
random variable:
Z=
sin (α(ξ+U))
√αcos (αξ) cos (U)
(
cos (αξ+(α−1)U)
W
)^1 −α
α ifα= 1
2
π
(π
2
+βU
)
tan (U)−βln
π
2 WcosU
π
2
+βU
ifα=^1
(7.14)
ThenZ∼S(α,β). To getS(α, β, γ, δ), we invoke the linear transform of
Definition 6.
7.5.4 α-stable intensity-based model
To simulate more heavy tailed random intensities, we are going to replace
the gamma frailty random variable in (7.3) by anα-stable distributed frailty.
As an intensity process is always positive and according to (7.12), we impose
thatα<1,β=1 andδ=0 in order that the support of the frailty is [0,+∞].
We keep the same simple specification as in our first intensity model: for
every obligoriand every timet,
λi(t)=λi=Zλ0,i
Therefore,Z∼S(α,1,γ,0) whereα∈[0, 1]. Indeed, as the frailty variable has
a multiplicative effect on the intensity, its baseline hazard function plays
the role of a scale parameter. Thus, the parameterγis unnecessary. In fact,
we identifyλ0,iby using the Laplace transform of theα-stable distribution
(7.13), which leads to the one-year default probability:
pi= 1 −exp
(
−γαsec
(πα
2
)
γαλα0,i
)
This implies:
λ 0 =
1
γ
ln
(
1
1 −pi
)
sec
(πα
2
)
(^1) α
Hence
λ
d
=λ 0 Z
1
γ
ln
(
1
1 −pi
)
sec
(πα
2
)
(^1) α
γS(α, 1) (7.15)
ln
(
1
1 −pi
)
sec(πα 2 )
1
α
S(α,1)