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picture1_2005 Q 0024b Postulates Of Quantum Mechanics


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File: 2005 Q 0024b Postulates Of Quantum Mechanics
short review short review linear operators linear operators v w vector spaces v w vector spaces a linear operator a from v to w is a linear function a vw ...

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      Short review
      Short review
        Linear Operators
        Linear Operators
   •  V,W: Vector spaces.
      V,W: Vector spaces.
   •  A linear operator A from V to W is a linear function A:VW.  An 
                                                                      
      A linear operator A from V to W is a linear function A:V          W.  An 
      operator on V is an operator from V to itself.
      operator on V is an operator from V to itself.
   •  Given bases for V and W, we can represent linear operators as 
      Given bases for V and W, we can represent linear operators as 
      matrices.
      matrices.
                                                                        †
   •                                                                     †
      An operator A on V is Hermitian iff it is self-adjoint (A=A ).  
      An operator A on V is Hermitian iff it is self-adjoint (A=A ).  
   •  Its diagonal elements are real.
      Its diagonal elements are real.
  Eigenvalues & Eigenvectors
  Eigenvalues & Eigenvectors
  • v is called an eigenvector of linear operator A iff A just 
   v is called an eigenvector of linear operator A iff A just 
   multiplies v by a scalar x, i.e. Av=xv 
   multiplies v by a scalar x, i.e. Av=xv 
   – “eigen” (German) = “characteristic”.
    “eigen” (German) = “characteristic”.
  • x, the eigenvalue corresponding to eigenvector v, is just 
   x, the eigenvalue corresponding to eigenvector v, is just 
   the scalar that A multiplies v by.
   the scalar that A multiplies v by.
  • the eigenvalue x is degenerate if it is shared by 2 
   the eigenvalue x is degenerate if it is shared by 2 
   eigenvectors that are not scalar multiples of each other.
   eigenvectors that are not scalar multiples of each other.
   – (Two different eigenvectors have the same eigenvalue)
    (Two different eigenvectors have the same eigenvalue)
  • Any Hermitian operator has all real-valued eigenvectors, 
   Any Hermitian operator has all real-valued eigenvectors, 
   which are orthogonal (for distinct eigenvalues).
   which are orthogonal (for distinct eigenvalues).
       Exam Problems
       Exam Problems
 • Find eigenvalues and eigenvectors of operators.
  Find eigenvalues and eigenvectors of operators.
 • Calculate solutions for quantum arrays.
  Calculate solutions for quantum arrays.
 • Prove that rows and columns are orthonormal.
  Prove that rows and columns are orthonormal.
 • Prove probability preservation
  Prove probability preservation
 • Prove unitarity of matrices.
  Prove unitarity of matrices.
 • Postulates of Quantum Mechanics. Examples and 
  Postulates of Quantum Mechanics. Examples and 
  interpretations.
  interpretations.
 • Properties of unitary operators
  Properties of unitary operators
                Unitary Transformations
                Unitary Transformations
  • A matrix (or linear operator) U is unitary iff its inverse 
      A matrix (or linear operator) U is unitary iff its inverse 
                                        1        †
                                        1        †
      equals its adjoint:  U  = U
      equals its adjoint:  U  = U
  • Some properties of unitary transformations (UT):
      Some properties of unitary transformations (UT):
       – Invertible, bijective, one-to-one.
           Invertible, bijective, one-to-one.
       – The set of row vectors is orthonormal.
           The set of row vectors is orthonormal.
       – The set of column vectors is orthonormal.
           The set of column vectors is orthonormal.
       – Unitary transformation preserves vector length: 
           Unitary transformation preserves vector length: 
               |U| = | |
                        
               |U   | = |    |
            • Therefore also preserves total probability over all states:
               Therefore also preserves total probability over all states:
                                            2           (s )2
                                                      i
                                                      i
       – UT corresponds to a change of basis, from one orthonormal basis 
           UT corresponds to a change of basis, from one orthonormal basis 
          to another.
           to another.
       – Or, a generalized rotation of  in Hilbert space
           Or, a generalized rotation of  in Hilbert space
                                      Who an when invented all this stuff??
  A great 
  A great 
 breakthrough
 breakthrough
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...Short review linear operators v w vector spaces a operator from to is function vw an on itself given bases for and we can represent as matrices hermitian iff it self adjoint its diagonal elements are real eigenvalues eigenvectors called eigenvector of just multiplies by scalar x i e av xv eigen german characteristic the eigenvalue corresponding that degenerate if shared not multiples each other two different have same any has all valued which orthogonal distinct exam problems find calculate solutions quantum arrays prove rows columns orthonormal probability preservation unitarity postulates mechanics examples interpretations properties unitary transformations matrix or u inverse equals some ut invertible bijective one set row vectors column transformation preserves length therefore also total over states s corresponds change basis another generalized rotation in hilbert space who when invented this stuff great breakthrough...

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