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How does a $dtimesell$ matrix of rank $ell$ and with singular values all equal to 1 imply it is maximally entangled

Quantum Computing Asked on March 23, 2021

From this question, gls states that given $Piequivsum_i |eta_irangle!langle i|$ and $Psiequivsum_i|psi_irangle!langle i|$, if $Pi^daggerPsi=I_{dtimesell}$, then $Psi$ is "maximally entangled", ie has rank $ell$ and all singular values are equal to 1. By maximal entanglement, what does that mean exactly, in the context used for matrices here? Is it referring to the inability to decompose it to a product of matrices on subsystems, or something else? Because if I recall correctly, CNOT, which is non-decomposable, doesn’t have 1 for all it’s singular values, yet it fits the criteria of non-decomposable, but then wouldn’t be maximally entangled?

Edit: I am assuming "maximally entangled" means in this context it is diagonal up to a certain dimension $ell$

2 Answers

I think the terminology makes sense if you think the matrix $ Psi $, via the linear bijection $ vecbig( |b rangle langle a|big) = |b rangle |a rangle$, as a pure bipartite state $ vec(Psi) = |psi rangle_{AB} = frac{1}{sqrt{l}} sum_{i=1}^{l} | psi_i rangle_A | i rangle_B $ and observe that the reduced density matrix is $$ rho_B = text{Tr}_A[rho_{AB}] = frac{1}{l} sum_{i,j} langle psi_j | psi_i rangle cdot | i rangle langle j| = frac{1}{l} cdot big(Psi^dagger Psibig)^T $$

So if $ Psi^dagger Psi = I_l $, then $ rho_{AB} = |psi rangle langle psi |_{AB} $ is "maximally entagled".

Correct answer by tsgeorgios on March 23, 2021

The other answer is already pretty on point with what I meant, but just to restate the same thing in different words:

Given a matrix $Psiinmathrm{Lin}(mathcal X,mathcal Y)$, whose singular value decomposition reads $Psi=sum_i sqrt{p_i}|u_irangle!langle v_i|$, we can define the corresponding vectorization as the vector $$operatorname{vec}(Psi)=sum_isqrt{p_i}|u_irangleotimes|v_irangleinmathcal Yotimesmathcal X,$$ (conventions may vary as to the order of the spaces after the vectorization). Notice that $operatorname{vec}(Psi)$ is a proper state (i.e. it's normalised) iff $|Psi|_2^2=sum_i p_i=1$.

The entanglement of $operatorname{vec}(Psi)$ as a pure bipartite state (if it is a state) is encoded in its Schmidt coefficients, which are the singular values of $Psi$. More generally, $Psi$ might not correspond to a state upon vectorization, in which case calling it "maximally entangled" is just abuse of notation to refer to a specific feature of its singular values. I should note that this is not by any means standard notation, it just came natural to use the term in the context because formally a state being maximally entangled is really the same thing as the singular values of a matrix being equal.

Answered by glS on March 23, 2021

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