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Functions as vectors

Explore how functions can be represented as vectors, using linear algebra concepts such as matrices, operators, and projections. Understand the importance of orthogonality, eigenvalues, and Hermitian matrices in analyzing observable values.

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Functions as vectors

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  1. Functions as vectors • If we know , it is possible to obtain all observable values. • In order to deal with in more complex problems, we need to introduce linear algebra. • Wave function → a list of numbers or a vector • Operators → matrices • Operation → the multiplication of the vector by the operator matrix.

  2. Functions as vectors • We can imagine that the set of possible values of the argument is a list of numbers (x), and the corresponding set of values of the function (f(x)) is another list.. • The function f(x)is approximated by its values at three points, x1 , x2 , and x3 , and is represented as a vector in a three-dimensional space.

  3. Functions as vectors • Dirac bra-ket notation cf) ket vector bra vector inner product • Now, let’s represent a function as an expansion of orthonormal basis set. • We have merely changed the axes, and hence the coordinates in our new representation of the vector have changed(now they are the numbers c1 , c2 , c3…).

  4. Functions as vectors • Expansion coefficients → Projection • Identity matrix Ex) • Hilbert space The vector space formed by a set of orthogonal functions e.g.

  5. Linear operator • An example of operator → Eigen value problem! • Bilinear expansion

  6. Linear operator • Trace of an operator When calculating physical parameters, basis is not important. • Hermitian matrix • If A is Hermitian, eigenvalue is real and eigenvector is orthogonal each other. • All observables are Hermitian, so they are real value.

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