Finite dimensional case
Some intuition for the theorem can be obtained by considering the first order condition of the optimization problem. Consider a finite dimensional real Hilbert space with a subspace and a point If is a or of the function defined by (which is the same as the minimum point of ), then derivative must be zero at In matrix derivative notation Since is a vector in that represents an arbitrary tangent direction, it follows that must be orthogonal to every vector inStatement
Detailed elementary proof
Proof by reduction to a special case
It suffices to prove the theorem in the case of because the general case follows from the statement below by replacing withConsequences
: If then which implies : Let where is the underlying scalar field of and define which is continuous and linear because this is true of each of its coordinates The set is closed in because is closed in and is continuous. The kernel of any linear map is a vector subspace of its domain, which is why is a vector subspace of : Let The Hilbert projection theorem guarantees the existence of a unique such that (or equivalently, for all ). Let so that and it remains to show that The inequality above can be rewritten as: Because and is a vector space, and which implies that The previous inequality thus becomes or equivalently, But this last statement is true if and only if every ThusProperties
Expression as a global minimum The statement and conclusion of the Hilbert projection theorem can be expressed in terms of global minimums of the followings functions. Their notation will also be used to simplify certain statements. Given a non-empty subset and some define a function A of if one exists, is any point in such that in which case is equal to the of the function which is: Effects of translations and scalings When this global minimum point exists and is unique then denote it by explicitly, the defining properties of (if it exists) are: The Hilbert projection theorem guarantees that this unique minimum point exists whenever is a non-empty closed and convex subset of a Hilbert space. However, such a minimum point can also exist in non-convex or non-closed subsets as well; for instance, just as long is is non-empty, if then If is a non-empty subset, is any scalar, and are any vectors then which implies: Examples The following counter-example demonstrates a continuous linear isomorphism for which Endow with the dot product, let and for every real let be the line of slope through the origin, where it is readily verified that Pick a real number and define by (so this map scales the coordinate by while leaving the coordinate unchanged). Then is an invertible continuous linear operator that satisfies and so that and Consequently, if with and if thenSee also
* * * *Notes
References
Bibliography
* * {{DEFAULTSORT:Hilbert Projection Theorem Convex analysis Theorems in functional analysis