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In mathematics, Fenchel's duality theorem is a result in the theory of convex functions named after Werner Fenchel. Let ''ƒ'' be a proper convex function on R''n'' and let ''g'' be a proper concave function on R''n''. Then, if regularity conditions are satisfied, :\inf_x ( f(x)-g(x) ) = \sup_p ( g_*(p)-f^*(p)). where ''ƒ'' * is the
convex conjugate In mathematics and mathematical optimization, the convex conjugate of a function is a generalization of the Legendre transformation which applies to non-convex functions. It is also known as Legendre–Fenchel transformation, Fenchel transformatio ...
of ''ƒ'' (also referred to as the Fenchel–Legendre transform) and ''g'' * is the
concave conjugate Concave or concavity may refer to: Science and technology * Concave lens * Concave mirror Mathematics * Concave function, the negative of a convex function * Concave polygon, a polygon which is not convex * Concave set * The Second derivative#Con ...
of ''g''. That is, :f^ \left( x^ \right) := \sup \left \ :g_ \left( x^ \right) := \inf \left \


Mathematical theorem

Let ''X'' and ''Y'' be
Banach spaces In mathematics, more specifically in functional analysis, a Banach space (pronounced ) is a complete normed vector space. Thus, a Banach space is a vector space with a metric that allows the computation of vector length and distance between vect ...
, f: X \to \mathbb \cup \ and g: Y \to \mathbb \cup \ be convex functions and A: X \to Y be a
bounded Boundedness or bounded may refer to: Economics * Bounded rationality, the idea that human rationality in decision-making is bounded by the available information, the cognitive limitations, and the time available to make the decision * Bounded e ...
linear map In mathematics, and more specifically in linear algebra, a linear map (also called a linear mapping, linear transformation, vector space homomorphism, or in some contexts linear function) is a mapping V \to W between two vector spaces that pr ...
. Then the Fenchel problems: :p^* = \inf_ \ :d^* = \sup_ \ satisfy
weak duality In applied mathematics, weak duality is a concept in optimization which states that the duality gap is always greater than or equal to 0. That means the solution to the dual (minimization) problem is ''always'' greater than or equal to the soluti ...
, i.e. p^* \geq d^*. Note that f^*,g^* are the convex conjugates of ''f'',''g'' respectively, and A^* is the
adjoint operator In mathematics, specifically in operator theory, each linear operator A on a Euclidean vector space defines a Hermitian adjoint (or adjoint) operator A^* on that space according to the rule :\langle Ax,y \rangle = \langle x,A^*y \rangle, wher ...
. The
perturbation function In mathematical optimization, the perturbation function is any function which relates to primal and dual problems. The name comes from the fact that any such function defines a perturbation of the initial problem. In many cases this takes the form ...
for this
dual problem In mathematical optimization theory, duality or the duality principle is the principle that optimization problems may be viewed from either of two perspectives, the primal problem or the dual problem. If the primal is a minimization problem then t ...
is given by F(x,y) = f(x) + g(Ax - y). Suppose that ''f'',''g'', and ''A'' satisfy either # ''f'' and ''g'' are
lower semi-continuous In mathematical analysis, semicontinuity (or semi-continuity) is a property of extended real-valued functions that is weaker than continuity. An extended real-valued function f is upper (respectively, lower) semicontinuous at a point x_0 if, r ...
and 0 \in \operatorname(\operatornameg - A \operatornamef) where \operatorname is the
algebraic interior In functional analysis, a branch of mathematics, the algebraic interior or radial kernel of a subset of a vector space is a refinement of the concept of the interior. Definition Assume that A is a subset of a vector space X. The ''algebraic in ...
and \operatornameh, where ''h'' is some function, is the set \, or # A \operatornamef \cap \operatornameg \neq \emptyset where \operatorname are the points where the function is continuous. Then
strong duality Strong duality is a condition in mathematical optimization in which the primal optimal objective and the dual optimal objective are equal. This is as opposed to weak duality (the primal problem has optimal value smaller than or equal to the dual p ...
holds, i.e. p^* = d^*. If d^* \in \mathbb then
supremum In mathematics, the infimum (abbreviated inf; plural infima) of a subset S of a partially ordered set P is a greatest element in P that is less than or equal to each element of S, if such an element exists. Consequently, the term ''greatest l ...
is attained.


One-dimensional illustration

In the following figure, the minimization problem on the left side of the equation is illustrated. One seeks to vary ''x'' such that the vertical distance between the convex and concave curves at ''x'' is as small as possible. The position of the vertical line in the figure is the (approximate) optimum. The next figure illustrates the maximization problem on the right hand side of the above equation. Tangents are drawn to each of the two curves such that both tangents have the same slope ''p''. The problem is to adjust ''p'' in such a way that the two tangents are as far away from each other as possible (more precisely, such that the points where they intersect the y-axis are as far from each other as possible). Imagine the two tangents as metal bars with vertical springs between them that push them apart and against the two parabolas that are fixed in place. Fenchel's theorem states that the two problems have the same solution. The points having the minimum vertical separation are also the tangency points for the maximally separated parallel tangents.


See also

*
Legendre transformation In mathematics, the Legendre transformation (or Legendre transform), named after Adrien-Marie Legendre, is an involutive transformation on real-valued convex functions of one real variable. In physical problems, it is used to convert function ...
*
Convex conjugate In mathematics and mathematical optimization, the convex conjugate of a function is a generalization of the Legendre transformation which applies to non-convex functions. It is also known as Legendre–Fenchel transformation, Fenchel transformatio ...
*
Moreau's theorem In mathematics, Moreau's theorem is a result in convex analysis named after French mathematician Jean-Jacques Moreau. It shows that sufficiently well-behaved convex functionals on Hilbert spaces are differentiable and the derivative is well-approx ...
* Wolfe duality * Werner Fenchel


References

* * {{cite book , author-link=R. Tyrrell Rockafellar, last=Rockafellar, first=Ralph Tyrrell , title=Convex Analysis , url=https://archive.org/details/convexanalysis00rock, url-access=limited, publisher=Princeton University Press , year=1996 , isbn=0-691-01586-4 , pag
327
Theorems in analysis Convex optimization