Optimizing Optimization: The Next Generation of Optimization Applications and Theory (Quantitative Finance)

(Romina) #1

252 Optimizing Optimization


S B , is a bounded distribution that has been called the four-parameter lognormal
distribution; and finally, S U , is an unbounded distribution based on an inverse
hyperbolic sine transform. 8 Each of the three distributions in the Johnson
family employs a transformation of the original variable to yield a standard
Gaussian variate, i.e.,


Z

X



γη

ε
λ

g



⎜⎜



⎟⎟

(11.1)

where Z is a standard normal random variable, γ and η are shape parameters, λ
is a scale parameter, ε is a location parameter, and g (.) is one of the following:


gx

xS
xS
x
x

N
L
()

ln( )
 ln


Normal Family:
Lognormal Family:

1



⎜⎜


⎠⎠

⎟⎟



⎪⎪
⎪⎪

Bounded Family:

Unbounded Family:

S

xx S

B

ln( ) U

(^21)
⎪⎪⎪


⎪⎪
⎪⎪
⎪⎪
⎪⎪
Furthermore, without loss of generality, we assume that η 0 and λ 0 and we
observe the standard convention that λ  1 and ε  0 for S N and λ  1 for S L.
From Equation (11.1), it follows that the probability density function (pdf)
for X is given by:
fx g
X
g
X
() exp


η 
λπ
ε
λ
γη
ε
2 λ
1
2



⎜⎜



⎟⎟



⎜⎜



⎟⎟



⎜⎜
⎜⎜


⎟⎟⎟
⎟⎟










2
(11.2)
∀ x  Ω , where g (.) is the first derivative of the function g(.), given by:
gx
S
xS
xx
N
L
′()
[( ) ]





1
1
1
1
Normal Family:
Lognormal Family:
Bounnded Family:
/ Unbounded Family:
S
xS
B
() U
(^212) + 1


⎪⎪
⎪⎪
⎪⎪

⎪⎪
⎪⎪
⎪⎪⎪ −
and the support of the distribution is:
Ω



(, )
[, ]
[, ]
∞∞

Normal Family:
Lognormal Family:
B
S
S
N
ε L
εε λ oounded Family:
Unbounded Family:
S
S
B
(, )∞∞ U


⎪⎪
⎪⎪
⎪⎪

⎪⎪
⎪⎪
⎪⎪
8 The three-parameter lognormal distribution differs from the more common two-parameter ver-
sion in that the random variable is defined on the interval [ α , ) rather than [0, ).

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