Probability maximization via Minkowski functionals: convex representations and tractable resolution
In this paper, we consider the maximizing of the probability P ζ ∣ ζ ∈ K ( x ) over a closed and convex set X , a special case of the chance-constrained optimization problem. Suppose K ( x ) ≜ ζ ∈ K ∣ c ( x , ζ ) ≥ 0 , and ζ is uniformly distributed on a convex and compact set K and c ( x , ζ ) is d...
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Veröffentlicht in: | Mathematical programming 2023-05, Vol.199 (1-2), p.595-637, Article 595 |
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Zusammenfassung: | In this paper, we consider the maximizing of the probability
P
ζ
∣
ζ
∈
K
(
x
)
over a closed and convex set
X
, a special case of the chance-constrained optimization problem. Suppose
K
(
x
)
≜
ζ
∈
K
∣
c
(
x
,
ζ
)
≥
0
, and
ζ
is uniformly distributed on a convex and compact set
K
and
c
(
x
,
ζ
)
is defined as either
c
(
x
,
ζ
)
≜
1
-
ζ
T
x
m
where
m
≥
0
(Setting A) or
c
(
x
,
ζ
)
≜
T
x
-
ζ
(Setting B). We show that in either setting, by leveraging recent findings in the context of non-Gaussian integrals of positively homogenous functions,
P
ζ
∣
ζ
∈
K
(
x
)
can be expressed as the expectation of a suitably defined continuous function
F
(
∙
,
ξ
)
with respect to an appropriately defined Gaussian density (or its variant), i.e.
E
p
~
F
(
x
,
ξ
)
. Aided by a recent observation in convex analysis, we then develop a convex representation of the original problem requiring the minimization of
g
E
F
(
∙
,
ξ
)
over
X
, where
g
is an appropriately defined smooth convex function. Traditional stochastic approximation schemes cannot contend with the minimization of
g
E
F
(
∙
,
ξ
)
over
X
, since conditionally unbiased sampled gradients are unavailable. We then develop a regularized variance-reduced stochastic approximation (
r-VRSA
) scheme that obviates the need for such unbiasedness by combining iterative regularization with variance-reduction. Notably, (
r-VRSA
) is characterized by almost-sure convergence guarantees, a convergence rate of
O
(
1
/
k
1
/
2
-
a
)
in expected sub-optimality where
a
>
0
, and a sample complexity of
O
(
1
/
ϵ
6
+
δ
)
where
δ
>
0
. To the best of our knowledge, this may be the first such scheme for probability maximization problems with convergence and rate guarantees. Preliminary numerics on a portfolio selection problem (Setting A) and a set-covering problem (Setting B) suggest that the scheme competes well with naive mini-batch SA schemes as well as integer programming approximation methods. |
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ISSN: | 0025-5610 1436-4646 |
DOI: | 10.1007/s10107-022-01859-8 |