🎭Operator Theory Unit 5 – Spectral Theory: Bounded Self-Adjoint Operators
Spectral theory of bounded self-adjoint operators is a cornerstone of functional analysis. It provides a powerful framework for understanding the structure and properties of these operators, which are crucial in quantum mechanics and other areas of mathematics and physics.
The spectral theorem is the centerpiece, allowing us to represent self-adjoint operators as integrals with respect to spectral measures. This leads to the continuous functional calculus, enabling us to apply functions to operators and analyze their properties in depth.
Self-adjoint operators are linear operators T on a Hilbert space H satisfying ⟨Tx,y⟩=⟨x,Ty⟩ for all x,y∈H
Bounded operators have finite operator norm ∥T∥=sup∥x∥=1∥Tx∥
Spectrum of an operator T denoted by σ(T) consists of all λ∈C such that T−λI is not invertible
Point spectrum σp(T) contains eigenvalues of T
Continuous spectrum σc(T) and residual spectrum σr(T) are other subsets of σ(T)
Resolvent set ρ(T)=C∖σ(T) is the complement of the spectrum
Spectral radius r(T)=sup{∣λ∣:λ∈σ(T)} measures the size of the spectrum
Bounded Self-Adjoint Operators: Basics
Self-adjoint operators are always normal operators satisfying T∗T=TT∗
Real part ℜ(T)=21(T+T∗) and imaginary part ℑ(T)=2i1(T−T∗) of an operator T are self-adjoint
Spectrum of a self-adjoint operator is always a subset of R
Eigenvalues of a self-adjoint operator are real, and eigenvectors corresponding to distinct eigenvalues are orthogonal
Positive operators T satisfy ⟨Tx,x⟩≥0 for all x∈H and have non-negative spectrum
Square root of a positive operator T is the unique positive operator S such that S2=T
Spectral Theorem for Bounded Self-Adjoint Operators
Spectral theorem states that every bounded self-adjoint operator T on a Hilbert space H can be represented as an integral with respect to a unique spectral measure E
T=∫σ(T)λdE(λ)
Spectral measure E is a projection-valued measure on the Borel subsets of σ(T)
For any Borel function f:σ(T)→C, the operator f(T) is defined by f(T)=∫σ(T)f(λ)dE(λ)
Spectral theorem allows for the diagonalization of self-adjoint operators in an abstract sense
Finite-dimensional case reduces to the existence of an orthonormal basis of eigenvectors for self-adjoint matrices
Continuous Functional Calculus
Continuous functional calculus extends the notion of applying functions to self-adjoint operators
For a continuous function f:σ(T)→C and a self-adjoint operator T, the operator f(T) is defined using the spectral theorem
Functional calculus preserves algebraic operations: (f+g)(T)=f(T)+g(T) and (fg)(T)=f(T)g(T)
Composition of functions corresponds to the composition of operators: (f∘g)(T)=f(g(T))
Continuous functional calculus is a powerful tool for studying the properties of self-adjoint operators
Example: eiT is a unitary operator for any self-adjoint operator T
Applications in Quantum Mechanics
Self-adjoint operators play a crucial role in quantum mechanics as observables
Observables are physical quantities that can be measured, such as position, momentum, and energy
Spectral theorem ensures that the spectrum of an observable corresponds to the possible outcomes of a measurement
Eigenvectors of an observable represent the states in which the system has a definite value for that observable
Time evolution of a quantum system is described by a unitary operator U(t)=e−iHt, where H is the Hamiltonian (energy) operator
Functional calculus allows for the construction of functions of observables, such as the time evolution operator
Spectral Measures and Projections
Spectral measure E associated with a self-adjoint operator T is a projection-valued measure on the Borel subsets of σ(T)
For each Borel set B⊆σ(T), E(B) is a projection operator on a closed subspace of H
Spectral projections E(B) satisfy the properties of a measure:
E(∅)=0 and E(σ(T))=I
For disjoint Borel sets B1,B2,…, E(⋃n=1∞Bn)=∑n=1∞E(Bn)
Spectral projections allow for the decomposition of the Hilbert space H into orthogonal subspaces corresponding to different parts of the spectrum
Spectral measure can be used to express the expectation value of a self-adjoint operator T in a state x∈H as ⟨Tx,x⟩=∫σ(T)λd⟨E(λ)x,x⟩
Examples and Problem-Solving Techniques
Multiplication operator Mf(x)=xf(x) on L2([a,b]) is a bounded self-adjoint operator with spectrum σ(M)=[a,b]
Laplace operator Δ=−dx2d2 on L2([0,1]) with Dirichlet boundary conditions is an unbounded self-adjoint operator with discrete spectrum σ(Δ)={n2π2:n∈N}
To find the spectrum of a self-adjoint operator, consider the resolvent (T−λI)−1 and identify values of λ for which it does not exist or is unbounded
Spectral mapping theorem: for a continuous function f:σ(T)→C, σ(f(T))=f(σ(T))
Variational characterization of eigenvalues: for a self-adjoint operator T, the smallest eigenvalue λ1 satisfies λ1=infx=0⟨x,x⟩⟨Tx,x⟩
Advanced Topics and Extensions
Unbounded self-adjoint operators can be defined on a dense subspace of a Hilbert space and have a more intricate spectral theory
Spectral theorem for unbounded self-adjoint operators involves a more general notion of spectral measure and requires careful domain considerations
Functional calculus can be extended to unbounded self-adjoint operators using the theory of Borel functions
Spectral theory of self-adjoint operators can be generalized to the context of von Neumann algebras and non-commutative measure theory
Spectral theory has applications in various areas of mathematics, including partial differential equations, harmonic analysis, and operator algebras
Extensions of spectral theory include the study of normal operators, unitary operators, and more general classes of operators on Hilbert spaces