Matrix Elements of Operators & Orthonormal Basis Sets

In summary, to orthogonalize data in an non-orthogonal basis, you first calculate the overlap matrix and then form the inverse square root.
  • #1
Amok
256
2
So, the rule for finding the matrix elements of an operator is:

[tex] \langle b_i|O|b_j\rangle [/tex]

Where the "b's" are vector of the basis set. Does this rule work if the basis is not orthonormal? Because I was checking this with regular linear algebra (in R3) (finding matrix elements of linear transformations) and this only seems to work with the canonical basis. The same goes for the rule that allows you to find the coefficients of the expansion of a vector in a given basis:

[tex] |\psi\rangle =\[
\sum_{i=1}^{\infty} c_i |\psi\rangle
\] [/tex]

with

[tex] c_i = \langle b_i|\psi\rangle [/tex]
 
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  • #2
Amok said:
So, the rule for finding the matrix elements of an operator is:
[tex] \langle b_i|O|b_j\rangle [/tex]
Where the "b's" are vector of the basis set. Does this rule work if the basis is not orthonormal?
It works precisely when the basis is orthonormal, and your other formula is corrected to
Amok said:
[tex] |\psi\rangle =\[
\sum_{i=1}^{\infty} c_i |b_i\rangle
\] [/tex]
 
  • #3
And how would you go about finding matrix elements and expansion coefficients if the basis is not orthonormal?
 
  • #4
Amok said:
And how would you go about finding matrix elements and expansion coefficients if the basis is not orthonormal?

In general, I would orthogonalize the basis.

But if the Hilbert space is finite-dimensional, I would convert to ordinary matrix notation, and then apply the standard rules of linear algebra.
 
  • #5
A. Neumaier said:
In general, I would orthogonalize the basis.

But if the Hilbert space is finite-dimensional, I would convert to ordinary matrix notation, and then apply the standard rules of linear algebra.

Orthonormal basis are so cool :/
 
  • #6
As A. Neumaier said, the easiest way of handling non-orthogonal basis sets is to orthogonalize them. This would usually be done by a symmetric orthogonalization:
Calculate the overlap matrix [tex]S_{\mu\nu}=\langle\mu|\nu\rangle[/tex], then form the inverse square root [tex]\mathbf{S}^{-1/2}[/tex] (by diagonalization. it's symmetric), then the rows of S give you expansion vectors for an orthonormal basis system. In this orthonormal basis all the nifty standard projection stuff works as expected.

Alternatively, you can also work directly in the non-orthogonal basis. In that case, however, you need to differentiate between covariant components and contravariant components of vectors and tensors. (Matrix elements would typically be calculated in an all-covariant form and then translated into something else, or have some of their indices contracted to contravariant quantities). In order to convert between the co- and contravariant components you again need both the inverse overlap matrix (for "raising indices", i.e., converting co-variant indices to contra-variant indices) and its inverse (for "lowering indices", i.e., converting contra-variant indices to co-variant indices).

There are, however, few cases in which this non-orthogonal formalism is called for.
 
  • #7
Thank you guys.
 
  • #8
cgk said:
As A. Neumaier said, the easiest way of handling non-orthogonal basis sets is to orthogonalize them. This would usually be done by a symmetric orthogonalization:
Calculate the overlap matrix [tex]S_{\mu\nu}=\langle\mu|\nu\rangle[/tex], then form the inverse square root [tex]\mathbf{S}^{-1/2}[/tex] (by diagonalization. it's symmetric), then the rows of S give you expansion vectors for an orthonormal basis system. In this orthonormal basis all the nifty standard projection stuff works as expected.

I am interested in using this approach to solve an engineering problem. I apologise in advance for my poor use of mathematical language. I take a set of measurements in 2 dimensions. Ideally the measurements are simply Cartesian. However in practice the x and y-axis is not orthogonal, the angle between them can vary from ~45 to ~135 degrees. The processing I wish to perform on the measurements requires that the data comes from an orthogonal basis. So I want to orthogonalize the data first. I know the angle between the axes, but it can vary between sets of measurements. So my question is, how do I calculate the overlap matrix for this situation? It seems to me that knowing this, and taking its inverse square root, I can orthogonalize the data.
 

Related to Matrix Elements of Operators & Orthonormal Basis Sets

1. What are matrix elements of operators?

Matrix elements of operators refer to the numerical values that represent the action of an operator on a specific state vector in a quantum system. These elements are found by taking the inner product of the operator with the state vector in a specific basis set.

2. How are matrix elements of operators calculated?

To calculate the matrix elements of an operator, one must first choose an orthonormal basis set. Then, the operator is applied to each element of the basis set, and the resulting values are recorded. These values make up the columns and rows of the operator's matrix representation.

3. What is an orthonormal basis set?

An orthonormal basis set is a set of vectors that are mutually orthogonal (perpendicular) and have a magnitude of 1. In quantum mechanics, this basis set is used to represent the possible states of a quantum system.

4. Why is it important to use an orthonormal basis set when calculating matrix elements?

Using an orthonormal basis set ensures that the matrix elements of operators will be well-defined and accurate. It also simplifies calculations and allows for easy comparison and manipulation of operators.

5. How are matrix elements used in quantum mechanics?

Matrix elements of operators are used to calculate the probability of a system transitioning from one state to another. They also play a crucial role in determining the energy levels of a system and the expectation value of an observable in a given state.

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