SchmidtDecomposition

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SchmidtDecomposition
Computes the Schmidt decomposition of a bipartite vector

Other toolboxes required none
Related functions IsProductVector
OperatorSchmidtDecomposition
SchmidtRank
Function category Entanglement and separability

SchmidtDecomposition is a function that computes the Schmidt decomposition of a bipartite vector. The user may specify how many terms in the Schmidt decomposition they wish to be returned.

Syntax

  • S = SchmidtDecomposition(VEC)
  • S = SchmidtDecomposition(VEC,DIM)
  • S = SchmidtDecomposition(VEC,DIM,K)
  • [S,U,V] = SchmidtDecomposition(VEC,DIM,K)

Argument descriptions

Input arguments

  • VEC: A bipartite vector (e.g., a pure quantum state) to have its Schmidt decomposition computed.
  • DIM (optional, by default has both subsystems of equal dimension): A 1-by-2 vector containing the dimensions of the subsystems that VEC lives on.
  • K (optional, default 0): A flag that determines how many terms in the Schmidt decomposition should be computed. If K = 0 then all terms with non-zero Schmidt coefficients are computed. If K = -1 then all terms (including zero Schmidt coefficients) are computed. If K > 0 then the K terms with largest Schmidt coefficients are computed.

Output arguments

  • S: A vector containing the Schmidt coefficients of VEC.
  • U (optional): A matrix whose columns are the left Schmidt vectors of VEC.
  • V (optional): A matrix whose columns are the right Schmidt vectors of VEC.

Examples

The following code returns the Schmidt decomposition of the standard maximally-entangled pure state $\frac{1}{\sqrt{d}}\sum_j|j\rangle\otimes|j\rangle \in \mathbb{C}^d \otimes \mathbb{C}^d$ in the $d = 3$ case:

>> [s,u,v] = SchmidtDecomposition(MaxEntangled(3))

s =

    0.5774
    0.5774
    0.5774


u =

     1     0     0
     0     1     0
     0     0     1


v =

     1     0     0
     0     1     0
     0     0     1

Source code

Click here to view this function's source code on github.