Convex analysis is the branch of mathematics devoted to the study of properties of convex functions and convex sets, often with applications in convex minimization, a subdomain of optimization theory.
Convex sets
A subset
of some vector space
is convex if it satisfies any of the following equivalent conditions:
- If
is real and
then
[1]
- If
is real and
with
then 
Throughout,
will be a map valued in the extended real numbers
with a domain
that is a convex subset of some vector space.
The map
is a convex function if
 | | Convexity ≤ |
holds for any real
and any
with
If this remains true of
when the defining inequality (Convexity ≤) is replaced by the strict inequality
 | | Convexity < |
then
is called strictly convex.[1]
Convex functions are related to convex sets. Specifically, the function
is convex if and only if its epigraph
 | | Epigraph def. |
is a convex set. The epigraphs of extended real-valued functions play a role in convex analysis that is analogous to the role played by graphs of real-valued function in real analysis. Specifically, the epigraph of an extended real-valued function provides geometric intuition that can be used to help formula or prove conjectures.
The domain of a function
is denoted by
while its effective domain is the set
 | | dom f def. |
The function
is called proper if
and
for all
Alternatively, this means that there exists some
in the domain of
at which
and
is also never equal to
In words, a function is proper if its domain is not empty, it never takes on the value
and it also is not identically equal to
If
is a proper convex function then there exist some vector
and some
such that
for every 
where
denotes the dot product of these vectors.
Convex conjugate
The convex conjugate of an extended real-valued function
(not necessarily convex) is the function
from the (continuous) dual space
of
and

where the brackets
denote the canonical duality
If
denotes the set of
-valued functions on
then the map
defined by
is called the Legendre-Fenchel transform.
Subdifferential set and the Fenchel-Young inequality
If
and
then the subdifferential set is

For example, in the important special case where
is a norm on
, it can be shown[proof 1]
that if
then this definition reduces down to:
and 
For any
and
which is called the Fenchel-Young inequality. This inequality is an equality (i.e.
) if and only if
It is in this way that the subdifferential set
is directly related to the convex conjugate
Biconjugate
The biconjugate of a function
, typically written as
, is the conjugate of the conjugate;
for every
. The biconjugate is useful for showing when strong or weak duality hold (via the perturbation function).
For any
the inequality
follows from the Fenchel–Young inequality. For proper functions,
if and only if
is convex and lower semi-continuous by Fenchel–Moreau theorem.[4]
Convex minimization
A convex minimization (primal) problem is one of the form
- find
when given a convex function
and a convex subset 
Dual problem
In optimization theory, the duality principle states that optimization problems may be viewed from either of two perspectives, the primal problem or the dual problem.
In general given two dual pairs separated locally convex spaces
and
Then given the function
we can define the primal problem as finding
such that

If there are constraint conditions, these can be built into the function
by letting
where
is the indicator function. Then let
be a perturbation function such that
[5]
The dual problem with respect to the chosen perturbation function is given by

where
is the convex conjugate in both variables of
The duality gap is the difference of the right and left hand sides of the inequality[5][7]

This principle is the same as weak duality. If the two sides are equal to each other, then the problem is said to satisfy strong duality.
There are many conditions for strong duality to hold such as:
Lagrange duality
For a convex minimization problem with inequality constraints,
subject to
for 
the Lagrangian dual problem is
subject to
for 
where the objective function
is the Lagrange dual function defined as follows:

See also
Notes
- ^ a b Rockafellar, R. Tyrrell (1997) [1970]. Convex Analysis. Princeton, NJ: Princeton University Press. ISBN 978-0-691-01586-6.
- ^ Borwein, Jonathan; Lewis, Adrian (2006). Convex Analysis and Nonlinear Optimization: Theory and Examples (2 ed.). Springer. pp. 76–77. ISBN 978-0-387-29570-1.
- ^ a b Boţ, Radu Ioan; Wanka, Gert; Grad, Sorin-Mihai (2009). Duality in Vector Optimization. Springer. ISBN 978-3-642-02885-4.
- ^ Csetnek, Ernö Robert (2010). Overcoming the failure of the classical generalized interior-point regularity conditions in convex optimization. Applications of the duality theory to enlargements of maximal monotone operators. Logos Verlag Berlin GmbH. ISBN 978-3-8325-2503-3.
- ^ Borwein, Jonathan; Lewis, Adrian (2006). Convex Analysis and Nonlinear Optimization: Theory and Examples (2 ed.). Springer. ISBN 978-0-387-29570-1.
- ^ Boyd, Stephen; Vandenberghe, Lieven (2004). Convex Optimization (PDF). Cambridge University Press. ISBN 978-0-521-83378-3. Retrieved October 3, 2011.
- ^ The conclusion is immediate if
so assume otherwise. Fix
Replacing
with the norm gives
If
and
is real then using
gives
where in particular, taking
gives
while taking
gives
and thus
; moreover, if in addition
then because
it follows from the definition of the dual norm that
Because
which is equivalent to
it follows that
which implies
for all
From these facts, the conclusion can now be reached. ∎
References
- Bauschke, Heinz H.; Combettes, Patrick L. (28 February 2017). Convex Analysis and Monotone Operator Theory in Hilbert Spaces. CMS Books in Mathematics. Springer Science & Business Media. ISBN 978-3-319-48311-5. OCLC 1037059594.
- Boyd, Stephen; Vandenberghe, Lieven (8 March 2004). Convex Optimization. Cambridge Series in Statistical and Probabilistic Mathematics. Cambridge, U.K. New York: Cambridge University Press. ISBN 978-0-521-83378-3. OCLC 53331084.
- Hiriart-Urruty, J.-B.; Lemaréchal, C. (2001). Fundamentals of convex analysis. Berlin: Springer-Verlag. ISBN 978-3-540-42205-1.
- Kusraev, A.G.; Kutateladze, Semen Samsonovich (1995). Subdifferentials: Theory and Applications. Dordrecht: Kluwer Academic Publishers. ISBN 978-94-011-0265-0.
- Rockafellar, R. Tyrrell; Wets, Roger J.-B. (26 June 2009). Variational Analysis. Grundlehren der mathematischen Wissenschaften. Vol. 317. Berlin New York: Springer Science & Business Media. ISBN 9783642024313. OCLC 883392544.
- Rockafellar, R. Tyrrell (1970). Convex analysis. Princeton mathematical series. Princeton, N.J: Princeton University Press. ISBN 978-0-691-08069-7.
- Rudin, Walter (1991). Functional Analysis. International Series in Pure and Applied Mathematics. Vol. 8 (Second ed.). New York, NY: McGraw-Hill Science/Engineering/Math. ISBN 978-0-07-054236-5. OCLC 21163277.
- Singer, Ivan (1997). Abstract convex analysis. Canadian Mathematical Society series of monographs and advanced texts. New York: John Wiley & Sons, Inc. pp. xxii+491. ISBN 0-471-16015-6. MR 1461544.
- Stoer, J.; Witzgall, C. (1970). Convexity and optimization in finite dimensions. Vol. 1. Berlin: Springer. ISBN 978-0-387-04835-2.
- Zălinescu, Constantin (30 July 2002). Convex Analysis in General Vector Spaces. River Edge, N.J. London: World Scientific Publishing. ISBN 978-981-4488-15-0. MR 1921556. OCLC 285163112 – via Internet Archive.
External links