Some properties of averaging simulated optimization methods 229
It is straightforward to compute the information ratio defined as ασˆ/.ˆ Notice
that in this problem all terms depend essentially on a single term ( a γ β 2 / γ ) or
functions of it.
10.3 Remark 1
A related formulation of the above problem is the following: min1/2
( ω b ) Ω ( ω b ) subject to ( ω b ) i 0 and ( ω b ) μ π. Here, the
Lagrangian is given by:
Lbb bi b ^12 ()()() (() )ωωθω θωμπΩ 12
resulting in the first-order conditions:
∂ ∂ ∂ ∂ ∂ ∂
L
bi
L
bi
L
b
ω
ωθθμ
θ
ω
θ
ωμπ
Ω()
()
()
12
1
2
0
0
0
Solving, we have ω b θ 1 Ω ^1 i θ 2 Ω ^1 μ with θ 1 ( β π / a γ β 2 ) and
θ 2 ( γ π / a γ β 2 ).
Thus ,
ˆ
ˆˆˆ
ω
πγ
γβ
μ
β
γ
ωπω
b
a
i
b
2
⎛ΩΩ 11
⎝
⎜⎜
⎜⎜
⎞
⎠
⎟⎟
⎟⎟
and consequently,
ˆˆˆ ˆˆ
ˆ
σπωω
σ
πγ
γβ
22
2
2
2
Ω
a
Comparing with Equation (10.2), we see immediately that π 1/ λ ( a β 2 / γ ).
This second problem is simply the computation of the minimum variance
frontier. It differs from the earlier version in that it explicitly specifies π , the
expected rate of return, rather than λ , the risk aversion coefficient.