Hilbert spaces - definição. O que é Hilbert spaces. Significado, conceito
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O que (quem) é Hilbert spaces - definição

IN FUNCTIONAL ANALYSIS, A HILBERT SPACE
Reproducing kernel; Reproducing-kernel Hilbert space; Bergman spaces; Bergman kernel function; RKHS; Reproducing kernel Hilbert spaces; Moore–Aronszajn theorem; Moore-Aronszajn theorem
  • Figure illustrates related but varying approaches to viewing RKHS

Hilbert space         
  • billiard]] ball in the [[Bunimovich stadium]] is described by an ergodic [[dynamical system]].
  • 1=AC<sup>2</sup> + BD<sup>2</sup> = 2(AB<sup>2</sup> + AD<sup>2</sup>)}}. In words, the sum of the squares of the diagonals is twice the sum of the squares of any two adjacent sides.
  • well-defined]] net displacement (in orange).
  • energy]].
  • harmonic series]].
  • [[Spherical harmonics]], an orthonormal basis for the Hilbert space of square-integrable functions on the sphere, shown graphed along the radial direction
  • [[David Hilbert]]
  • Superposition of sinusoidal wave basis functions (bottom) to form a sawtooth wave (top)
  • none
INNER PRODUCT SPACE THAT IS METRICALLY COMPLETE; A BANACH SPACE WHOSE NORM INDUCES AN INNER PRODUCT (FOLLOWS THE PARALLELOGRAM IDENTITY)
Linear Algebra/Hilbert Spaces; Complex Hilbert space; Hilbert spaces; Hilbert spaces and Fourier analysis; Separable Hilbert space; Complete inner product space; Hilbert Space; Hilbert space dimension; Draft:Xu–Zikatanov identity; Square-summable sequence; ℓ2 space; ℓ2
In mathematics, Hilbert spaces (named after David Hilbert) allow generalizing the methods of linear algebra and calculus from (finite-dimensional) Euclidean vector spaces to spaces that may be infinite-dimensional. A Hilbert space is a vector space equipped with an inner product which defines a distance function for which it is a complete metric space.
Hilbert space         
  • billiard]] ball in the [[Bunimovich stadium]] is described by an ergodic [[dynamical system]].
  • 1=AC<sup>2</sup> + BD<sup>2</sup> = 2(AB<sup>2</sup> + AD<sup>2</sup>)}}. In words, the sum of the squares of the diagonals is twice the sum of the squares of any two adjacent sides.
  • well-defined]] net displacement (in orange).
  • energy]].
  • harmonic series]].
  • [[Spherical harmonics]], an orthonormal basis for the Hilbert space of square-integrable functions on the sphere, shown graphed along the radial direction
  • [[David Hilbert]]
  • Superposition of sinusoidal wave basis functions (bottom) to form a sawtooth wave (top)
  • none
INNER PRODUCT SPACE THAT IS METRICALLY COMPLETE; A BANACH SPACE WHOSE NORM INDUCES AN INNER PRODUCT (FOLLOWS THE PARALLELOGRAM IDENTITY)
Linear Algebra/Hilbert Spaces; Complex Hilbert space; Hilbert spaces; Hilbert spaces and Fourier analysis; Separable Hilbert space; Complete inner product space; Hilbert Space; Hilbert space dimension; Draft:Xu–Zikatanov identity; Square-summable sequence; ℓ2 space; ℓ2
¦ noun Mathematics an infinite-dimensional analogue of Euclidean space.
Origin
early 20th cent.: named after the German mathematician David Hilbert.
Reproducing kernel Hilbert space         
In functional analysis (a branch of mathematics), a reproducing kernel Hilbert space (RKHS) is a Hilbert space of functions in which point evaluation is a continuous linear functional. Roughly speaking, this means that if two functions f and g in the RKHS are close in norm, i.

Wikipédia

Reproducing kernel Hilbert space

In functional analysis (a branch of mathematics), a reproducing kernel Hilbert space (RKHS) is a Hilbert space of functions in which point evaluation is a continuous linear functional. Roughly speaking, this means that if two functions f {\displaystyle f} and g {\displaystyle g} in the RKHS are close in norm, i.e., f g {\displaystyle \|f-g\|} is small, then f {\displaystyle f} and g {\displaystyle g} are also pointwise close, i.e., | f ( x ) g ( x ) | {\displaystyle |f(x)-g(x)|} is small for all x {\displaystyle x} . The converse does not need to be true. Informally, this can be shown by looking at the supremum norm: the sequence of functions sin n ( x ) {\displaystyle \sin ^{n}(x)} converges pointwise, but do not converge uniformly i.e. do not converge with respect to the supremum norm (this is not a counterexample because the supremum norm does not arise from any inner product due to not satisfying the parallelogram law).

It is not entirely straightforward to construct a Hilbert space of functions which is not an RKHS. Some examples, however, have been found.

L2 spaces are not Hilbert spaces of functions (and hence not RKHSs), but rather Hilbert spaces of equivalence classes of functions (for example, the functions f {\displaystyle f} and g {\displaystyle g} defined by f ( x ) = 0 {\displaystyle f(x)=0} and g ( x ) = 1 Q {\displaystyle g(x)=1_{\mathbb {Q} }} are equivalent in L2). However, there are RKHSs in which the norm is an L2-norm, such as the space of band-limited functions (see the example below).

An RKHS is associated with a kernel that reproduces every function in the space in the sense that for every x {\displaystyle x} in the set on which the functions are defined, "evaluation at x {\displaystyle x} " can be performed by taking an inner product with a function determined by the kernel. Such a reproducing kernel exists if and only if every evaluation functional is continuous.

The reproducing kernel was first introduced in the 1907 work of Stanisław Zaremba concerning boundary value problems for harmonic and biharmonic functions. James Mercer simultaneously examined functions which satisfy the reproducing property in the theory of integral equations. The idea of the reproducing kernel remained untouched for nearly twenty years until it appeared in the dissertations of Gábor Szegő, Stefan Bergman, and Salomon Bochner. The subject was eventually systematically developed in the early 1950s by Nachman Aronszajn and Stefan Bergman.

These spaces have wide applications, including complex analysis, harmonic analysis, and quantum mechanics. Reproducing kernel Hilbert spaces are particularly important in the field of statistical learning theory because of the celebrated representer theorem which states that every function in an RKHS that minimises an empirical risk functional can be written as a linear combination of the kernel function evaluated at the training points. This is a practically useful result as it effectively simplifies the empirical risk minimization problem from an infinite dimensional to a finite dimensional optimization problem.

For ease of understanding, we provide the framework for real-valued Hilbert spaces. The theory can be easily extended to spaces of complex-valued functions and hence include the many important examples of reproducing kernel Hilbert spaces that are spaces of analytic functions.