Functional analysis: Difference between revisions
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{{DISPLAYTITLE:Functional Analysis}} | |||
== | == Overview == | ||
[[File:Drum_vibration_mode12.gif|thumb|right|Vibration modes of a drum, an example of functional analysis in physics.]] | |||
'''Functional analysis''' is a branch of [[mathematics]] concerned with the study of [[vector spaces]] and operators acting upon them. It is a fundamental area of [[mathematical analysis]] with applications in various fields such as [[quantum mechanics]], [[signal processing]], and [[differential equations]]. | |||
Functional analysis | == Historical Background == | ||
Functional analysis emerged in the early 20th century as a distinct field of study. It was developed to address problems in [[integral equations]] and [[differential equations]]. The work of mathematicians such as [[David Hilbert]], [[Stefan Banach]], and [[John von Neumann]] laid the foundation for modern functional analysis. | |||
== Key Concepts == | == Key Concepts == | ||
=== | === Vector Spaces === | ||
A [[vector space]] is a collection of objects called vectors, which can be added together and multiplied by scalars. Functional analysis often deals with infinite-dimensional vector spaces, such as [[Hilbert spaces]] and [[Banach spaces]]. | |||
A | === Norms and Metrics === | ||
A [[norm]] is a function that assigns a non-negative length or size to each vector in a vector space. A [[metric]] is a function that defines a distance between each pair of vectors in a space. These concepts are crucial for understanding the structure of vector spaces in functional analysis. | |||
=== | === Operators === | ||
Operators are mappings between vector spaces that preserve the vector space structure. In functional analysis, operators are often linear, meaning they satisfy the properties of additivity and homogeneity. Important classes of operators include [[bounded operators]], [[compact operators]], and [[self-adjoint operators]]. | |||
=== Spectral Theory === | |||
[[Spectral theory]] studies the spectrum of operators, which generalizes the concept of [[eigenvalues]] and [[eigenvectors]] from finite-dimensional spaces to infinite-dimensional spaces. This theory is essential in understanding the behavior of operators in functional analysis. | |||
=== | |||
== Applications == | == Applications == | ||
Functional analysis has numerous applications in both pure and applied mathematics. In [[quantum mechanics]], it provides the framework for the formulation of [[quantum states]] and [[observables]]. In [[signal processing]], it is used to analyze and manipulate signals. Functional analysis also plays a critical role in solving [[partial differential equations]] and in the study of [[dynamical systems]]. | |||
== Related Pages == | |||
* [[Linear algebra]] | |||
* [[Measure theory]] | |||
* [[Topology]] | * [[Topology]] | ||
* [[Operator theory]] | * [[Operator theory]] | ||
* [[Fourier analysis]] | |||
[[Category:Mathematical analysis]] | |||
[[Category:Mathematical | |||
Latest revision as of 06:33, 16 February 2025
Overview[edit]

Functional analysis is a branch of mathematics concerned with the study of vector spaces and operators acting upon them. It is a fundamental area of mathematical analysis with applications in various fields such as quantum mechanics, signal processing, and differential equations.
Historical Background[edit]
Functional analysis emerged in the early 20th century as a distinct field of study. It was developed to address problems in integral equations and differential equations. The work of mathematicians such as David Hilbert, Stefan Banach, and John von Neumann laid the foundation for modern functional analysis.
Key Concepts[edit]
Vector Spaces[edit]
A vector space is a collection of objects called vectors, which can be added together and multiplied by scalars. Functional analysis often deals with infinite-dimensional vector spaces, such as Hilbert spaces and Banach spaces.
Norms and Metrics[edit]
A norm is a function that assigns a non-negative length or size to each vector in a vector space. A metric is a function that defines a distance between each pair of vectors in a space. These concepts are crucial for understanding the structure of vector spaces in functional analysis.
Operators[edit]
Operators are mappings between vector spaces that preserve the vector space structure. In functional analysis, operators are often linear, meaning they satisfy the properties of additivity and homogeneity. Important classes of operators include bounded operators, compact operators, and self-adjoint operators.
Spectral Theory[edit]
Spectral theory studies the spectrum of operators, which generalizes the concept of eigenvalues and eigenvectors from finite-dimensional spaces to infinite-dimensional spaces. This theory is essential in understanding the behavior of operators in functional analysis.
Applications[edit]
Functional analysis has numerous applications in both pure and applied mathematics. In quantum mechanics, it provides the framework for the formulation of quantum states and observables. In signal processing, it is used to analyze and manipulate signals. Functional analysis also plays a critical role in solving partial differential equations and in the study of dynamical systems.