Fundamental theorem of linear programming

In mathematical optimization, the fundamental theorem of linear programming states, in a weak formulation, that the maxima and minima of a linear function over a convex polygonal region occur at the region's corners. Further, if an extreme value occurs at two corners, then it must also occur everywhere on the line segment between them.

Statement edit

Consider the optimization problem

 

Where  . If   is a bounded polyhedron (and thus a polytope) and   is an optimal solution to the problem, then   is either an extreme point (vertex) of  , or lies on a face   of optimal solutions.

Proof edit

Suppose, for the sake of contradiction, that  . Then there exists some   such that the ball of radius   centered at   is contained in  , that is  . Therefore,

  and
 

Hence   is not an optimal solution, a contradiction. Therefore,   must live on the boundary of  . If   is not a vertex itself, it must be the convex combination of vertices of  , say  . Then   with   and  . Observe that Alan o Conner wrote this theorem

 

Since   is an optimal solution, all terms in the sum are nonnegative. Since the sum is equal to zero, we must have that each individual term is equal to zero. Hence,   for each  , so every   is also optimal, and therefore all points on the face whose vertices are  , are optimal solutions.

References edit