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The
spectrum A spectrum (plural ''spectra'' or ''spectrums'') is a condition that is not limited to a specific set of values but can vary, without gaps, across a continuum. The word was first used scientifically in optics to describe the rainbow of colors ...
of a
linear operator In mathematics, and more specifically in linear algebra, a linear map (also called a linear mapping, linear transformation, vector space homomorphism, or in some contexts linear function) is a mapping V \to W between two vector spaces that pr ...
T that operates on a
Banach space In mathematics, more specifically in functional analysis, a Banach space (pronounced ) is a complete normed vector space. Thus, a Banach space is a vector space with a metric that allows the computation of vector length and distance between vec ...
X (a fundamental concept of
functional analysis Functional analysis is a branch of mathematical analysis, the core of which is formed by the study of vector spaces endowed with some kind of limit-related structure (e.g. inner product, norm, topology, etc.) and the linear functions defined ...
) consists of all
scalars Scalar may refer to: *Scalar (mathematics), an element of a field, which is used to define a vector space, usually the field of real numbers *Scalar (physics), a physical quantity that can be described by a single element of a number field such a ...
\lambda such that the operator T-\lambda does not have a bounded inverse on X. The spectrum has a standard decomposition into three parts: * a point spectrum, consisting of the
eigenvalues In linear algebra, an eigenvector () or characteristic vector of a linear transformation is a nonzero vector that changes at most by a scalar factor when that linear transformation is applied to it. The corresponding eigenvalue, often denoted ...
of T; * a continuous spectrum, consisting of the scalars that are not eigenvalues but make the range of T-\lambda a proper
dense subset In topology and related areas of mathematics, a subset ''A'' of a topological space ''X'' is said to be dense in ''X'' if every point of ''X'' either belongs to ''A'' or else is arbitrarily "close" to a member of ''A'' — for instance, the ...
of the space; * a residual spectrum, consisting of all other scalars in the spectrum. This decomposition is relevant to the study of
differential equation In mathematics, a differential equation is an equation that relates one or more unknown functions and their derivatives. In applications, the functions generally represent physical quantities, the derivatives represent their rates of change, an ...
s, and has applications to many branches of science and engineering. A well-known example from
quantum mechanics Quantum mechanics is a fundamental theory in physics that provides a description of the physical properties of nature at the scale of atoms and subatomic particles. It is the foundation of all quantum physics including quantum chemistry, ...
is the explanation for the discrete spectral lines and the continuous band in the light emitted by excited atoms of
hydrogen Hydrogen is the chemical element with the symbol H and atomic number 1. Hydrogen is the lightest element. At standard conditions hydrogen is a gas of diatomic molecules having the formula . It is colorless, odorless, tasteless, non-toxi ...
.


Decomposition into point spectrum, continuous spectrum, and residual spectrum


For bounded Banach space operators

Let ''X'' be a
Banach space In mathematics, more specifically in functional analysis, a Banach space (pronounced ) is a complete normed vector space. Thus, a Banach space is a vector space with a metric that allows the computation of vector length and distance between vec ...
, ''B''(''X'') the family of
bounded operator In functional analysis and operator theory, a bounded linear operator is a linear transformation L : X \to Y between topological vector spaces (TVSs) X and Y that maps bounded subsets of X to bounded subsets of Y. If X and Y are normed vector ...
s on ''X'', and . By
definition A definition is a statement of the meaning of a term (a word, phrase, or other set of symbols). Definitions can be classified into two large categories: intensional definitions (which try to give the sense of a term), and extensional definiti ...
, a complex number ''λ'' is in the spectrum of ''T'', denoted ''σ''(''T''), if does not have an inverse in ''B''(''X''). If is one-to-one and
onto In mathematics, a surjective function (also known as surjection, or onto function) is a function that every element can be mapped from element so that . In other words, every element of the function's codomain is the image of one element of i ...
, i.e. bijective, then its inverse is bounded; this follows directly from the open mapping theorem of functional analysis. So, ''λ'' is in the spectrum of ''T'' if and only if is not one-to-one or not onto. One distinguishes three separate cases: # is not
injective In mathematics, an injective function (also known as injection, or one-to-one function) is a function that maps distinct elements of its domain to distinct elements; that is, implies . (Equivalently, implies in the equivalent contrapositi ...
. That is, there exist two distinct elements ''x'',''y'' in ''X'' such that . Then is a non-zero vector such that . In other words, ''λ'' is an eigenvalue of ''T'' in the sense of
linear algebra Linear algebra is the branch of mathematics concerning linear equations such as: :a_1x_1+\cdots +a_nx_n=b, linear maps such as: :(x_1, \ldots, x_n) \mapsto a_1x_1+\cdots +a_nx_n, and their representations in vector spaces and through matrices ...
. In this case, ''λ'' is said to be in the point spectrum of ''T'', denoted . # is injective, and its range is a
dense subset In topology and related areas of mathematics, a subset ''A'' of a topological space ''X'' is said to be dense in ''X'' if every point of ''X'' either belongs to ''A'' or else is arbitrarily "close" to a member of ''A'' — for instance, the ...
'' R'' of ''X''; but is not the whole of ''X''. In other words, there exists some element ''x'' in ''X'' such that can be as close to ''x'' as desired, with ''y'' in ''X''; but is never equal to ''x''. It can be proved that, in this case, is not bounded below (i.e. it sends far apart elements of ''X'' too close together). Equivalently, the inverse linear operator , which is defined on the dense subset ''R'', is not a bounded operator, and therefore cannot be extended to the whole of ''X''. Then ''λ'' is said to be in the continuous spectrum, , of ''T''. # is injective but does not have dense range. That is, there is some element ''x'' in ''X'' and a neighborhood ''N'' of ''x'' such that is never in ''N''. In this case, the map may be bounded or unbounded, but in any case does not admit a unique extension to a bounded linear map on all of ''X''. Then ''λ'' is said to be in the residual spectrum of ''T'', . So ''σ''(''T'') is the disjoint union of these three sets, \sigma(T) = \sigma_p (T) \cup \sigma_c (T) \cup \sigma_r (T). In addition, when does not have dense range, whether is injective or not, then ''λ'' is said to be in the compression spectrum of ''T'', ''σcp''(''T''). The compression spectrum consists of the whole residual spectrum and part of point spectrum.


For unbounded operators

The spectrum of an unbounded operator can be divided into three parts in the same way as in the bounded case, but because the operator is not defined everywhere, the definitions of domain, inverse, etc. are more involved.


Examples


Multiplication operator

Given a σ-finite
measure space A measure space is a basic object of measure theory, a branch of mathematics that studies generalized notions of volumes. It contains an underlying set, the subsets of this set that are feasible for measuring (the -algebra) and the method that ...
(''S'', ''Σ'', ''μ''), consider the Banach space ''Lp''(''μ''). A function ''h'': ''S'' → C is called
essentially bounded Essence ( la, essentia) is a polysemic term, used in philosophy and theology as a designation for the property or set of properties that make an entity or substance what it fundamentally is, and which it has by necessity, and without which it l ...
if ''h'' is bounded ''μ''-almost everywhere. An essentially bounded ''h'' induces a bounded multiplication operator ''Th'' on ''Lp''(''μ''): (T_h f)(s) = h(s) \cdot f(s). The operator norm of ''T'' is the essential supremum of ''h''. The
essential range In mathematics, particularly measure theory, the essential range, or the set of essential values, of a function is intuitively the 'non-negligible' range of the function: It does not change between two functions that are equal almost everywhere. One ...
of ''h'' is defined in the following way: a complex number ''λ'' is in the essential range of ''h'' if for all ''ε'' > 0, the preimage of the open ball ''Bε''(''λ'') under ''h'' has strictly positive measure. We will show first that ''σ''(''Th'') coincides with the essential range of ''h'' and then examine its various parts. If ''λ'' is not in the essential range of ''h'', take ''ε'' > 0 such that ''h''−1(''Bε''(''λ'')) has zero measure. The function ''g''(''s'') = 1/(''h''(''s'') − ''λ'') is bounded almost everywhere by 1/''ε''. The multiplication operator ''Tg'' satisfies . So ''λ'' does not lie in spectrum of ''Th''. On the other hand, if ''λ'' lies in the essential range of ''h'', consider the sequence of sets . Each ''Sn'' has positive measure. Let ''fn'' be the characteristic function of ''Sn''. We can compute directly \, (T_h - \lambda) f_n \, _p ^p = \, (h - \lambda) f_n \, _p ^p = \int_ , h - \lambda \; , ^p d \mu \leq \frac \; \mu(S_n) = \frac \, f_n \, _p ^p. This shows is not bounded below, therefore not invertible. If ''λ'' is such that ''μ''( ''h''−1()) > 0, then ''λ'' lies in the point spectrum of ''Th'' as follows. Let ''f'' be the characteristic function of the measurable set ''h''−1(''λ''), then by considering two cases, we find \forall s \in S, \; (T_h f)(s) = \lambda f(s), so λ is an eigenvalue of ''T''''h''. Any ''λ'' in the essential range of ''h'' that does not have a positive measure preimage is in the continuous spectrum of ''Th''. To show this, we must show that has dense range. Given , again we consider the sequence of sets . Let ''gn'' be the characteristic function of . Define f_n(s) = \frac \cdot g_n(s) \cdot f(s). Direct calculation shows that ''fn'' ∈ ''Lp''(''μ''), with \, f_n\, _p\leq n \, f\, _p. Then by the
dominated convergence theorem In measure theory, Lebesgue's dominated convergence theorem provides sufficient conditions under which almost everywhere convergence of a sequence of functions implies convergence in the ''L''1 norm. Its power and utility are two of the primary t ...
, (T_h - \lambda) f_n \rightarrow f in the ''Lp''(''μ'') norm. Therefore, multiplication operators have no residual spectrum. In particular, by the
spectral theorem In mathematics, particularly linear algebra and functional analysis, a spectral theorem is a result about when a linear operator or matrix can be diagonalized (that is, represented as a diagonal matrix in some basis). This is extremely useful be ...
,
normal operator In mathematics, especially functional analysis, a normal operator on a complex Hilbert space ''H'' is a continuous linear operator ''N'' : ''H'' → ''H'' that commutes with its hermitian adjoint ''N*'', that is: ''NN*'' = ''N*N''. Normal opera ...
s on a Hilbert space have no residual spectrum.


Shifts

In the special case when ''S'' is the set of natural numbers and ''μ'' is the counting measure, the corresponding ''Lp''(''μ'') is denoted by l''p''. This space consists of complex valued sequences such that \sum_ , x_n , ^p < \infty. For 1 < ''p'' < ∞, ''l p'' is reflexive. Define the left shift ''T'' : ''l p'' → ''l p'' by T(x_1, x_2, x_3, \dots) = (x_2, x_3, x_4, \dots). ''T'' is a
partial isometry In functional analysis a partial isometry is a linear map between Hilbert spaces such that it is an isometry on the orthogonal complement of its kernel. The orthogonal complement of its kernel is called the initial subspace and its range is called ...
with operator norm 1. So ''σ''(''T'') lies in the closed unit disk of the complex plane. ''T*'' is the right shift (or unilateral shift), which is an isometry on ''l q'', where 1/''p'' + 1/''q'' = 1: T^*(x_1, x_2, x_3, \dots) = (0, x_1, x_2, \dots). For ''λ'' ∈ C with , ''λ'', < 1, x = (1, \lambda, \lambda ^2, \dots) \in l^p and ''T x'' = ''λ x''. Consequently, the point spectrum of ''T'' contains the open unit disk. Now, ''T*'' has no eigenvalues, i.e. ''σp''(''T*'') is empty. Thus, invoking reflexivity and the theorem given above (that ''σp''(''T'') ⊂ ''σr''(''T''*) ∪ ''σp''(''T''*)), we can deduce that the open unit disk lies in the residual spectrum of ''T*''. The spectrum of a bounded operator is closed, which implies the unit circle, ⊂ C, is in ''σ''(''T''). Again by reflexivity of ''l p'' and the theorem given above (this time, that ), we have that ''σr''(''T'') is also empty. Therefore, for a complex number ''λ'' with unit norm, one must have ''λ'' ∈ ''σp''(''T'') or ''λ'' ∈ ''σc''(''T''). Now if , ''λ'', = 1 and T x = \lambda x, \qquad i.e. \; (x_2, x_3, x_4, \dots) = \lambda (x_1, x_2, x_3, \dots), then x = x_1 (1, \lambda, \lambda^2, \dots), which cannot be in ''l p'', a contradiction. This means the unit circle must lie in the continuous spectrum of ''T''. So for the left shift ''T'', ''σp''(''T'') is the open unit disk and ''σc''(''T'') is the unit circle, whereas for the right shift ''T*'', ''σr''(''T*'') is the open unit disk and ''σc''(''T*'') is the unit circle. For ''p'' = 1, one can perform a similar analysis. The results will not be exactly the same, since reflexivity no longer holds.


Self-adjoint operators on Hilbert space

Hilbert space 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. Hilbert spaces arise natural ...
s are Banach spaces, so the above discussion applies to bounded operators on Hilbert spaces as well. A subtle point concerns the spectrum of ''T''*. For a Banach space, ''T''* denotes the transpose and ''σ''(''T*'') = ''σ''(''T''). For a Hilbert space, ''T''* normally denotes the
adjoint In mathematics, the term ''adjoint'' applies in several situations. Several of these share a similar formalism: if ''A'' is adjoint to ''B'', then there is typically some formula of the type :(''Ax'', ''y'') = (''x'', ''By''). Specifically, adjoin ...
of an operator ''T'' ∈ ''B''(''H''), not the transpose, and ''σ''(''T*'') is not ''σ''(''T'') but rather its image under complex conjugation. For a self-adjoint ''T'' ∈ ''B''(''H''), the
Borel functional calculus In functional analysis, a branch of mathematics, the Borel functional calculus is a ''functional calculus'' (that is, an assignment of operators from commutative algebras to functions defined on their spectra), which has particularly broad scope ...
gives additional ways to break up the spectrum naturally.


Borel functional calculus

This subsection briefly sketches the development of this calculus. The idea is to first establish the continuous functional calculus, and then pass to measurable functions via the
Riesz–Markov–Kakutani representation theorem In mathematics, the Riesz–Markov–Kakutani representation theorem relates linear functionals on spaces of continuous functions on a locally compact space to measures in measure theory. The theorem is named for who introduced it for continuo ...
. For the continuous functional calculus, the key ingredients are the following: # If ''T'' is self-adjoint, then for any polynomial ''P'', the operator norm satisfies \, P(T) \, = \sup_ , P(\lambda), . # The
Stone–Weierstrass theorem In mathematical analysis, the Weierstrass approximation theorem states that every continuous function defined on a closed interval can be uniformly approximated as closely as desired by a polynomial function. Because polynomials are among the si ...
, which implies that the family of polynomials (with complex coefficients), is dense in ''C''(''σ''(''T'')), the continuous functions on ''σ''(''T''). The family ''C''(''σ''(''T'')) is a
Banach algebra In mathematics, especially functional analysis, a Banach algebra, named after Stefan Banach, is an associative algebra A over the real or complex numbers (or over a non-Archimedean complete normed field) that at the same time is also a Banach sp ...
when endowed with the uniform norm. So the mapping P \rightarrow P(T) is an isometric homomorphism from a dense subset of ''C''(''σ''(''T'')) to ''B''(''H''). Extending the mapping by continuity gives ''f''(''T'') for ''f'' ∈ C(''σ''(''T'')): let ''Pn'' be polynomials such that ''Pn'' → ''f'' uniformly and define ''f''(''T'') = lim ''Pn''(''T''). This is the continuous functional calculus. For a fixed ''h'' ∈ ''H'', we notice that f \rightarrow \langle h, f(T) h \rangle is a positive linear functional on ''C''(''σ''(''T'')). According to the Riesz–Markov–Kakutani representation theorem a unique measure ''μh'' on ''σ''(''T'') exists such that \int_ f \, d \mu_h = \langle h, f(T) h \rangle. This measure is sometimes called the spectral measure associated to h. The spectral measures can be used to extend the continuous functional calculus to bounded Borel functions. For a bounded function ''g'' that is Borel measurable, define, for a proposed ''g''(''T'') \int_ g \, d \mu_h = \langle h, g(T) h \rangle. Via the
polarization identity In linear algebra, a branch of mathematics, the polarization identity is any one of a family of formulas that express the inner product of two vectors in terms of the norm of a normed vector space. If a norm arises from an inner product the ...
, one can recover (since ''H'' is assumed to be complex) \langle k, g(T) h \rangle. and therefore ''g''(''T'') ''h'' for arbitrary ''h''. In the present context, the spectral measures, combined with a result from measure theory, give a decomposition of ''σ''(''T'').


Decomposition into absolutely continuous, singular continuous, and pure point

Let ''h'' ∈ ''H'' and ''μh'' be its corresponding spectral measure on ''σ''(''T'') ⊂ R. According to a refinement of
Lebesgue's decomposition theorem In mathematics, more precisely in measure theory, Lebesgue's decomposition theorem states that for every two σ-finite signed measures \mu and \nu on a measurable space (\Omega,\Sigma), there exist two σ-finite signed measures \nu_0 and \nu_1 su ...
, ''μh'' can be decomposed into three mutually singular parts: \mu_h = \mu_ + \mu_ + \mu_ where ''μ''ac is absolutely continuous with respect to the Lebesgue measure, ''μ''sc is singular with respect to the Lebesgue measure and atomless, and ''μ''pp is a pure point measure. All three types of measures are invariant under linear operations. Let ''H''ac be the subspace consisting of vectors whose spectral measures are absolutely continuous with respect to the
Lebesgue measure In measure theory, a branch of mathematics, the Lebesgue measure, named after French mathematician Henri Lebesgue, is the standard way of assigning a measure to subsets of ''n''-dimensional Euclidean space. For ''n'' = 1, 2, or 3, it coincides ...
. Define ''H''pp and ''H''sc in analogous fashion. These subspaces are invariant under ''T''. For example, if ''h'' ∈ ''H''ac and ''k'' = ''T h''. Let ''χ'' be the characteristic function of some Borel set in ''σ''(''T''), then \langle k, \chi(T) k \rangle = \int_ \chi(\lambda) \cdot \lambda^2 d \mu_(\lambda) = \int_ \chi(\lambda) \; d \mu_k(\lambda). So \lambda^2 d \mu_ = d \mu_ and ''k'' ∈ ''H''ac. Furthermore, applying the spectral theorem gives H = H_ \oplus H_ \oplus H_. This leads to the following definitions: #The spectrum of ''T'' restricted to ''H''ac is called the absolutely continuous spectrum of ''T'', ''σ''ac(''T''). #The spectrum of ''T'' restricted to ''H''sc is called its singular spectrum, ''σ''sc(''T''). #The set of eigenvalues of ''T'' is called the pure point spectrum of ''T'', ''σ''pp(''T''). The closure of the eigenvalues is the spectrum of ''T'' restricted to ''H''pp. So \sigma(T) = \sigma_(T) \cup \sigma_(T) \cup .


Comparison

A bounded self-adjoint operator on Hilbert space is, a fortiori, a bounded operator on a Banach space. Therefore, one can also apply to ''T'' the decomposition of the spectrum that was achieved above for bounded operators on a Banach space. Unlike the Banach space formulation, the union \sigma(T) = \cup \sigma_(T) \cup \sigma_(T) need not be disjoint. It is disjoint when the operator ''T'' is of uniform multiplicity, say ''m'', i.e. if ''T'' is unitarily equivalent to multiplication by ''λ'' on the direct sum \bigoplus _ ^m L^2(\mathbb, \mu_i) for some Borel measures \mu_i. When more than one measure appears in the above expression, we see that it is possible for the union of the three types of spectra to not be disjoint. If , ''λ'' is sometimes called an eigenvalue ''embedded'' in the absolutely continuous spectrum. When ''T'' is unitarily equivalent to multiplication by ''λ'' on L^2(\mathbb, \mu), the decomposition of ''σ''(''T'') from Borel functional calculus is a refinement of the Banach space case.


Physics

The preceding comments can be extended to the unbounded self-adjoint operators since Riesz-Markov holds for
locally compact In topology and related branches of mathematics, a topological space is called locally compact if, roughly speaking, each small portion of the space looks like a small portion of a compact space. More precisely, it is a topological space in which ...
Hausdorff spaces. In
quantum mechanics Quantum mechanics is a fundamental theory in physics that provides a description of the physical properties of nature at the scale of atoms and subatomic particles. It is the foundation of all quantum physics including quantum chemistry, ...
, observables are
self-adjoint operator In mathematics, a self-adjoint operator on an infinite-dimensional complex vector space ''V'' with inner product \langle\cdot,\cdot\rangle (equivalently, a Hermitian operator in the finite-dimensional case) is a linear map ''A'' (from ''V'' to its ...
s, often not bounded, and their spectra are the possible outcomes of measurements. Absolutely continuous spectrum of a physical observable corresponds to free states of a system, while the pure point spectrum corresponds to
bound state Bound or bounds may refer to: Mathematics * Bound variable * Upper and lower bounds, observed limits of mathematical functions Physics * Bound state, a particle that has a tendency to remain localized in one or more regions of space Geography * ...
s. The singular spectrum correspond to physically impossible outcomes. An example of a quantum mechanical observable which has purely continuous spectrum is the position operator of a free particle moving on a line. Its spectrum is the entire real line. Also, since the momentum operator is unitarily equivalent to the position operator, via the
Fourier transform A Fourier transform (FT) is a mathematical transform that decomposes functions into frequency components, which are represented by the output of the transform as a function of frequency. Most commonly functions of time or space are transformed ...
, they have the same spectrum. Intuition may induce one to say that the discreteness of the spectrum is intimately related to the corresponding states being "localized". However, a careful mathematical analysis shows that this is not true. The following f is an element of L^2(\mathbb) and increasing as x \to \infty. f(x) = \begin n & \textx \in \left , n+\frac\right \\ 0 & \text \end However, the phenomena of
Anderson localization In condensed matter physics, Anderson localization (also known as strong localization) is the absence of diffusion of waves in a ''disordered'' medium. This phenomenon is named after the American physicist P. W. Anderson, who was the first to su ...
and dynamical localization describe, when the eigenfunctions are localized in a physical sense. Anderson Localization means that eigenfunctions decay exponentially as x \to \infty . Dynamical localization is more subtle to define. Sometimes, when performing physical quantum mechanical calculations, one encounters "eigenvectors" that do not lie in ''L''2(R), i.e. wave functions that are not localized. These are the free states of the system. As stated above, in the mathematical formulation, the free states correspond to the absolutely continuous spectrum. Alternatively, if it is insisted that the notion of eigenvectors and eigenvalues survive the passage to the rigorous, one can consider operators on rigged Hilbert spaces. It was believed for some time that singular spectrum is something artificial. However, examples as the almost Mathieu operator and random Schrödinger operators have shown, that all types of spectra arise naturally in physics.


Decomposition into essential spectrum and discrete spectrum

Let A:\,X\to X be a closed operator defined on the domain D(A)\subset X which is dense in ''X''. Then there is a decomposition of the spectrum of ''A'' into a
disjoint union In mathematics, a disjoint union (or discriminated union) of a family of sets (A_i : i\in I) is a set A, often denoted by \bigsqcup_ A_i, with an injection of each A_i into A, such that the images of these injections form a partition of A ( ...
, \sigma(A)=\sigma_(A)\sqcup\sigma_(A), where # \sigma_(A) is the fifth type of the essential spectrum of ''A'' (if ''A'' is a
self-adjoint operator In mathematics, a self-adjoint operator on an infinite-dimensional complex vector space ''V'' with inner product \langle\cdot,\cdot\rangle (equivalently, a Hermitian operator in the finite-dimensional case) is a linear map ''A'' (from ''V'' to its ...
, then \sigma_(A)=\sigma_(A) for all 1\le k\le 5); # \sigma_(A) is the
discrete spectrum A physical quantity is said to have a discrete spectrum if it takes only distinct values, with gaps between one value and the next. The classical example of discrete spectrum (for which the term was first used) is the characteristic set of di ...
of ''A'', which consists of normal eigenvalues, or, equivalently, of isolated points of \sigma(A) such that the corresponding Riesz projector has a finite rank.


See also

*
Point spectrum In mathematics, particularly in functional analysis, the spectrum of a bounded linear operator (or, more generally, an unbounded linear operator) is a generalisation of the set of eigenvalues of a matrix. Specifically, a complex number \lambda is ...
, the set of eigenvalues. * Essential spectrum, spectrum of an operator modulo compact perturbations. * Discrete spectrum (mathematics), the set of normal eigenvalues. * Spectral theory of normal C*-algebras *
Spectrum (functional analysis) In mathematics, particularly in functional analysis, the spectrum of a bounded linear operator (or, more generally, an unbounded linear operator) is a generalisation of the set of eigenvalues of a matrix. Specifically, a complex number \lambda ...


References

* N. Dunford and J.T. Schwartz, ''Linear Operators, Part I: General Theory'', Interscience, 1958. * M. Reed and B. Simon, ''Methods of Modern Mathematical Physics I: Functional Analysis'', Academic Press, 1972. {{SpectralTheory Spectral theory