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Conditional Density Operators in
     Quantum Information

                     M. S. Leifer
             Banff (12th February 2007)



 quant-ph/0606022 Phys. Rev. A 74, 042310(2006)
 quant-ph/0611233
Classical Conditional Probability
(Ω, S, µ)                                                µ(A) = 0
                           A, B ∈ S
                              µ (A ∩ B)
                  Prob(B|A) =
                                µ (A)
 Generally, A and B can be ANY events in the sample space.

 Special Cases:

1. A is hypothesis, B is obser ved data - Bayesian Updating

2. A andB refer to properties of t wo distinct systems

3. A and B refer to properties of a system at 2 different times -
   Stochastic Dynamics

 2. and 3. - Ω = Ω1 × Ω2
Quantum Conditional Probability
 In Quantum Theory

     Ω → H Hilbert Space
     S → {closed s-spaces of H}
     -

     µ → ρ Density operator

 What is the analog of Prob(B|A) ?

 Definition should ideally encompass:

1.   Conditioning on classical data (measurement-update)

2.   Correlations bet ween 2 subsystems w.r.t tensor product

3.   Correlations bet ween same system at 2 times (TPCP maps)

4.   Correlations bet ween ARBITRARY events, e.g. incompatible
     obser vables

 AND BE OPERATIONALLY MEANINGFUL!!!!!
Outline



1. Conditional Density Operator

2. Remarks on Conditional Independence

3. Choi-Jamiolkowski Revisited

4. Applications
5. Open Questions
1. Conditional Density Operator
    Classical case: Special cases 2. and 3. - Ω = Ω1 × Ω2

       We’ll generally assume s-spaces finite and deal with them by defining
       integer-valued random variables

        Ω1 = {X = j}j∈{1,2,...N }            Ω2 = {Y = k}k∈{1,2,...M }


       P (X = j, Y = k) abbreviated to P (X, Y )
                                                        f (P (X, Y ))
           f (P (X = j, Y = k)) abbreviated to
                                                    X
       j


       Marginal P (X) =          P (X, Y )
                             Y

                              P (X, Y )
       Conditional P (Y |X) =
                               P (X)
1. Conditional Density Operator
    Can easily embed this into QM case 2, i.e. w.r.t. a tensor product HX ⊗ HY

       Write
           ρXY =          P (X = j, Y = k) |j      j|X ⊗ |k k|Y
                     jk
       Conditional Density operator


           ρY |X =        P (Y = k|X = j) |j       j|X ⊗ |k k|Y
                     jk

                    ρY |X = ρ−1 ⊗ IY ρXY
       Equivalently          X

           where ρX = TrY (ρXY ) and ρX is the Moore-Penrose
                                      −1
           pseudoinverse.

       More generally, [ρX ⊗ IY , ρXY ] = 0 so how to generalize the
       conditional density operator?
1. Conditional Density Operator
    A “reasonable” family of generalizations is:

                                                                n
                               1           1      1
                            − 2n               − 2n
                (n)
                       =           ⊗                    ⊗ IY
               ρY |X       ρX          IY ρXY ρX
                                           n




                               (∞)               (n)
       Cerf & Adami studied ρY |X = lim ρY |X
                                        n→∞
        (∞)
               = exp (log ρXY − (log ρX ) ⊗ IY ) when well-defined.
       ρY |X
       Conditional von Neumann entropy
                                                                  (∞)
        S(Y |X) = S(X, Y ) − S(X) = −Tr                  ρXY log ρY |X


                                                (1)
                                               ρY |X   which we’ll write ρY |X
    Many people (including me) have studied

       Can be characterized as a +ve operator satisfying

                        TrY ρY |X = Isupp(ρX )
2. Remarks on Conditional Independence
           (∞)
          ρY |X
    For           the natural definition of conditional independence is entropic:

                                S(X : Y |Z) = 0
    Equivalent to equality in Strong Subadditivity:

                 S(X, Z) + S(Y, Z) ≥ S(X, Y, Z) + S(Z)
    Ruskai showed it is equivalent to
                                (∞)          (∞)
                                        =           ⊗ IX
                               ρY |XZ       ρY |Z
    Hayden et. al. showed it is equivalent to

  ρXY Z =                                            HXY Z =
                  pj σXj Z (1) ⊗ τXj Z (2)                         HXj Z (1) ⊗ HYj Z (1)
                           j            j                                 j          j
             j                                                 j


    Surprisingly, it is also equivalent to
                                                    ρXY Z = ρXZ ρ−1 ρY Z
            ρXY |Z = ρX|Z ρY |Z                                  Z
2. Remarks on Conditional Independence
    But this is not the “natural” definition of conditional independence for n = 1



      ρY |XZ = ρY |Z ⊗ IX and ρX|Y Z = ρX|Z ⊗ IY are strictly
       weaker and inequivalent to each other.



    Open questions:

       Is there a hierarchy of conditional independence relations for different
       values of n ?

       Do these have any operational significance in general?
3. Choi-Jamiolkowsi Revisited
    CJ isomorphism is well known. I want to think of it slightly differently, in
    terms of conditional density operators
                                                     Trace Preser ving
     ρY |X ∼ EY |X : B(HX ) → B(HY )
           =                                        Completely Positive
                                                           TPCP

                   =
        ρ+                  |j   k|X ⊗ |j    k|X
    Let       |X
         X
                       jk



    EY |X → ρY |X direction
                       ρY |X = IX ⊗ EY |X          ρ+    |X
                                                    X

    ρY |X → EY |X direction

             EY |X (σX ) = TrXX             ρ+           ⊗ ρY |X
                                                 |X σX
                                             X
3. Choi-Jamiolkowsi Revisited
    What does it all mean? ρXY ∼ ρX , ρY |X ∼ ρX , EY |X
                               =            =
    Cases 2. and 3. from the intro are already unified in QM, i.e. both
    experiments




                                                        Time evolution
                                                           EY |X


        Prepare ρXY                           Prepare ρX


    can be described simply by specifying a joint state ρXY .

    Do expressions like Tr (MX ⊗ NY ρXY ) , where MX , NY are POVM
    elements have any meaning in the time-evolution case?
3. Choi-Jamiolkowski Revisited
   Lemma: ρ =         pj ρj is an ensemble decomposition of a
                 j
   density matrix ρ iff there is a POVM M = M (j)                   s.t.

                                                        √   (j) √
                                                    ρM       ρ
                                              ρj =
      pj = Tr M      (j)
                                     and
                           ρ
                                                   Tr M (j) ρ


                                           −1          −1
                                     = pj ρ
                               (j)
   Proof sketch: Set M                          ρj ρ
                                            2           2
3. Choi-Jamiolkowski Revisited
   M       M-measurement of ρ

             Input: ρ

                                           P (M = j) = Tr M (j) ρ
             Measurement probabilities:
   ρ


           M-preparation of ρ
   ρ
             Input: Generate a classical r.v. with p.d.f

                                           P (M = j) = Tr M (j) ρ
   M
             Prepare the corresponding state:
                                               √       (j) √
                                             ρM       ρ
                                       ρj =
                                            Tr M (j) ρ
3. Choi-Jamiolkowski revisited
                                                   measurement        measurement
                                              N                  N

     measurement                measurement
                                              Y                  Y
        M                             N


         X                            Y
                                                  ρXY                  EY |X




                                                    ρX                ρT
                                              X                  X
                    ρXY                                                X


P (M, N ) is the same for any POVMs                measurement        preparation
                                                                 MT
                                              M
                 M and N .
4. Applications

   Relations bet ween different concepts/protocols in quantum
   information, e.g. broadcasting and monogamy of entanglement.

   Simplified definition of quantum sufficient statistics.

   Quantum State Pooling.




   Re-examination of quantum generalizations of Markov chains,
   Bayesian Net works, etc.
5. Open Questions
   Is there a hierarchy of conditional independence relations?



   Operational meaning of conditional density operator and
   conditional independence for general n?



   Temporal joint measurements, i.e. Tr (MXY ρXY ) ?



   The general quantum conditional probability question.



   Further applications in quantum information?

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Conditional Density Operators in Quantum Information

  • 1. Conditional Density Operators in Quantum Information M. S. Leifer Banff (12th February 2007) quant-ph/0606022 Phys. Rev. A 74, 042310(2006) quant-ph/0611233
  • 2. Classical Conditional Probability (Ω, S, µ) µ(A) = 0 A, B ∈ S µ (A ∩ B) Prob(B|A) = µ (A) Generally, A and B can be ANY events in the sample space. Special Cases: 1. A is hypothesis, B is obser ved data - Bayesian Updating 2. A andB refer to properties of t wo distinct systems 3. A and B refer to properties of a system at 2 different times - Stochastic Dynamics 2. and 3. - Ω = Ω1 × Ω2
  • 3. Quantum Conditional Probability In Quantum Theory Ω → H Hilbert Space S → {closed s-spaces of H} - µ → ρ Density operator What is the analog of Prob(B|A) ? Definition should ideally encompass: 1. Conditioning on classical data (measurement-update) 2. Correlations bet ween 2 subsystems w.r.t tensor product 3. Correlations bet ween same system at 2 times (TPCP maps) 4. Correlations bet ween ARBITRARY events, e.g. incompatible obser vables AND BE OPERATIONALLY MEANINGFUL!!!!!
  • 4. Outline 1. Conditional Density Operator 2. Remarks on Conditional Independence 3. Choi-Jamiolkowski Revisited 4. Applications 5. Open Questions
  • 5. 1. Conditional Density Operator Classical case: Special cases 2. and 3. - Ω = Ω1 × Ω2 We’ll generally assume s-spaces finite and deal with them by defining integer-valued random variables Ω1 = {X = j}j∈{1,2,...N } Ω2 = {Y = k}k∈{1,2,...M } P (X = j, Y = k) abbreviated to P (X, Y ) f (P (X, Y )) f (P (X = j, Y = k)) abbreviated to X j Marginal P (X) = P (X, Y ) Y P (X, Y ) Conditional P (Y |X) = P (X)
  • 6. 1. Conditional Density Operator Can easily embed this into QM case 2, i.e. w.r.t. a tensor product HX ⊗ HY Write ρXY = P (X = j, Y = k) |j j|X ⊗ |k k|Y jk Conditional Density operator ρY |X = P (Y = k|X = j) |j j|X ⊗ |k k|Y jk ρY |X = ρ−1 ⊗ IY ρXY Equivalently X where ρX = TrY (ρXY ) and ρX is the Moore-Penrose −1 pseudoinverse. More generally, [ρX ⊗ IY , ρXY ] = 0 so how to generalize the conditional density operator?
  • 7. 1. Conditional Density Operator A “reasonable” family of generalizations is: n 1 1 1 − 2n − 2n (n) = ⊗ ⊗ IY ρY |X ρX IY ρXY ρX n (∞) (n) Cerf & Adami studied ρY |X = lim ρY |X n→∞ (∞) = exp (log ρXY − (log ρX ) ⊗ IY ) when well-defined. ρY |X Conditional von Neumann entropy (∞) S(Y |X) = S(X, Y ) − S(X) = −Tr ρXY log ρY |X (1) ρY |X which we’ll write ρY |X Many people (including me) have studied Can be characterized as a +ve operator satisfying TrY ρY |X = Isupp(ρX )
  • 8. 2. Remarks on Conditional Independence (∞) ρY |X For the natural definition of conditional independence is entropic: S(X : Y |Z) = 0 Equivalent to equality in Strong Subadditivity: S(X, Z) + S(Y, Z) ≥ S(X, Y, Z) + S(Z) Ruskai showed it is equivalent to (∞) (∞) = ⊗ IX ρY |XZ ρY |Z Hayden et. al. showed it is equivalent to ρXY Z = HXY Z = pj σXj Z (1) ⊗ τXj Z (2) HXj Z (1) ⊗ HYj Z (1) j j j j j j Surprisingly, it is also equivalent to ρXY Z = ρXZ ρ−1 ρY Z ρXY |Z = ρX|Z ρY |Z Z
  • 9. 2. Remarks on Conditional Independence But this is not the “natural” definition of conditional independence for n = 1 ρY |XZ = ρY |Z ⊗ IX and ρX|Y Z = ρX|Z ⊗ IY are strictly weaker and inequivalent to each other. Open questions: Is there a hierarchy of conditional independence relations for different values of n ? Do these have any operational significance in general?
  • 10. 3. Choi-Jamiolkowsi Revisited CJ isomorphism is well known. I want to think of it slightly differently, in terms of conditional density operators Trace Preser ving ρY |X ∼ EY |X : B(HX ) → B(HY ) = Completely Positive TPCP = ρ+ |j k|X ⊗ |j k|X Let |X X jk EY |X → ρY |X direction ρY |X = IX ⊗ EY |X ρ+ |X X ρY |X → EY |X direction EY |X (σX ) = TrXX ρ+ ⊗ ρY |X |X σX X
  • 11. 3. Choi-Jamiolkowsi Revisited What does it all mean? ρXY ∼ ρX , ρY |X ∼ ρX , EY |X = = Cases 2. and 3. from the intro are already unified in QM, i.e. both experiments Time evolution EY |X Prepare ρXY Prepare ρX can be described simply by specifying a joint state ρXY . Do expressions like Tr (MX ⊗ NY ρXY ) , where MX , NY are POVM elements have any meaning in the time-evolution case?
  • 12. 3. Choi-Jamiolkowski Revisited Lemma: ρ = pj ρj is an ensemble decomposition of a j density matrix ρ iff there is a POVM M = M (j) s.t. √ (j) √ ρM ρ ρj = pj = Tr M (j) and ρ Tr M (j) ρ −1 −1 = pj ρ (j) Proof sketch: Set M ρj ρ 2 2
  • 13. 3. Choi-Jamiolkowski Revisited M M-measurement of ρ Input: ρ P (M = j) = Tr M (j) ρ Measurement probabilities: ρ M-preparation of ρ ρ Input: Generate a classical r.v. with p.d.f P (M = j) = Tr M (j) ρ M Prepare the corresponding state: √ (j) √ ρM ρ ρj = Tr M (j) ρ
  • 14. 3. Choi-Jamiolkowski revisited measurement measurement N N measurement measurement Y Y M N X Y ρXY EY |X ρX ρT X X ρXY X P (M, N ) is the same for any POVMs measurement preparation MT M M and N .
  • 15. 4. Applications Relations bet ween different concepts/protocols in quantum information, e.g. broadcasting and monogamy of entanglement. Simplified definition of quantum sufficient statistics. Quantum State Pooling. Re-examination of quantum generalizations of Markov chains, Bayesian Net works, etc.
  • 16. 5. Open Questions Is there a hierarchy of conditional independence relations? Operational meaning of conditional density operator and conditional independence for general n? Temporal joint measurements, i.e. Tr (MXY ρXY ) ? The general quantum conditional probability question. Further applications in quantum information?