What is a Fenchel conjugate?

The Fenchel conjugate is a conjugate of a function. It is the generalization of the self-inverse transformation of real-valued convex functions. It also applies to non-convex functions.

The Fenchel conjugate

Let's say there is a vector spaceXXwith its dualXX^*(containing the linear functions ofXX). Then,

is its canonical dual pairing where xXx \in X. If there is a function

then

is its convex conjugate. If xXx^* \in X^* is the supremum, which means that if XX^* is the subset of, let's say, a vector space, PP, then xx^* is the most minor element in PP that is greater or equal to each element present in XX^*. In such a scenario, the conjugate becomes:

An equivalent conjugate to this would be something at the infimum, which is when xx^* is the greatest element in PP that is less than or equal to each element in XX^*. In this case, the conjugate can be written as:

Properties

Some of the properties of Convex conjugates are listed below.

Reverse order

If,

then it follows that:

Lower semi-continuous biconjugate

The convex conjugate of a function is always lower semi-continuous, meaning that there is a point at which all other nearby points have a function value less than or equal to that point. The bi-conjugate is the largest lower semi-continuous function.

Convexity

If there are two functions,ff and gg, then for λ\lambda residing between 00 and 11, the convexity relation becomes:

Linear Transformations

A closed convex function ff is symmetric with respect to an orthonormal matrixMatrix with each vector having a magnitude of 1 and these vectors being orthogonal to each other. GG

where,

only if its conjugate ff^* is symmetric with respect to GG.

Example

Convex conjugate of power function

The convex conjugate of a power function

can be written as,

Convex conjugate of an exponential equation

The convex conjugate of an exponential equation

can be written as,

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