SlideShare uma empresa Scribd logo
1 de 16
Baixar para ler offline
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?

Mais conteúdo relacionado

Destaque

Hagelin Invincibility Chart Hr
Hagelin Invincibility Chart HrHagelin Invincibility Chart Hr
Hagelin Invincibility Chart Hr
AMTR
 
Quantum entanglement
Quantum entanglementQuantum entanglement
Quantum entanglement
AKM666
 
The problem with teleportation (…is legal methodology)
The problem with teleportation (…is legal methodology)The problem with teleportation (…is legal methodology)
The problem with teleportation (…is legal methodology)
Mathias Klang
 
Quantum Teleportation
Quantum TeleportationQuantum Teleportation
Quantum Teleportation
Shaveta Banda
 

Destaque (20)

Hagelin Invincibility Chart Hr
Hagelin Invincibility Chart HrHagelin Invincibility Chart Hr
Hagelin Invincibility Chart Hr
 
Quantum Information with Continuous Variable systems
Quantum Information with Continuous Variable systemsQuantum Information with Continuous Variable systems
Quantum Information with Continuous Variable systems
 
Lezione1 ab
Lezione1 abLezione1 ab
Lezione1 ab
 
Introduction to Quantum Secret Sharing
Introduction to Quantum Secret SharingIntroduction to Quantum Secret Sharing
Introduction to Quantum Secret Sharing
 
Uk quantum teleportation3
Uk quantum teleportation3Uk quantum teleportation3
Uk quantum teleportation3
 
Quantum optical measurement
Quantum optical measurementQuantum optical measurement
Quantum optical measurement
 
Quantum Computers New Generation of Computers part 6 by Prof Lili Saghafi
Quantum Computers New Generation of Computers part 6 by Prof Lili SaghafiQuantum Computers New Generation of Computers part 6 by Prof Lili Saghafi
Quantum Computers New Generation of Computers part 6 by Prof Lili Saghafi
 
Logic gates using quantum dots
Logic gates using quantum dotsLogic gates using quantum dots
Logic gates using quantum dots
 
Applications of Quantum Entanglement Presentation
Applications of Quantum Entanglement PresentationApplications of Quantum Entanglement Presentation
Applications of Quantum Entanglement Presentation
 
Quantum Teleportation : Theory and Experiment
Quantum Teleportation : Theory and ExperimentQuantum Teleportation : Theory and Experiment
Quantum Teleportation : Theory and Experiment
 
Introduction to Quantum Teleportation & BBCJPW Protocol
Introduction to Quantum Teleportation & BBCJPW ProtocolIntroduction to Quantum Teleportation & BBCJPW Protocol
Introduction to Quantum Teleportation & BBCJPW Protocol
 
Quantum entanglement
Quantum entanglementQuantum entanglement
Quantum entanglement
 
Qubit Bright Sparks #2: Fast consumer, faster company
Qubit Bright Sparks #2: Fast consumer, faster companyQubit Bright Sparks #2: Fast consumer, faster company
Qubit Bright Sparks #2: Fast consumer, faster company
 
The problem with teleportation (…is legal methodology)
The problem with teleportation (…is legal methodology)The problem with teleportation (…is legal methodology)
The problem with teleportation (…is legal methodology)
 
Quantum Teleportation
Quantum TeleportationQuantum Teleportation
Quantum Teleportation
 
Introduction to Quantum Computation. Part - 2
Introduction to Quantum Computation. Part - 2Introduction to Quantum Computation. Part - 2
Introduction to Quantum Computation. Part - 2
 
12 website personalization tips for christmas
12 website personalization tips for christmas12 website personalization tips for christmas
12 website personalization tips for christmas
 
Quantum teleportation
Quantum  teleportationQuantum  teleportation
Quantum teleportation
 
Introduction to Quantum Computation. Part - 1
Introduction to Quantum Computation. Part - 1Introduction to Quantum Computation. Part - 1
Introduction to Quantum Computation. Part - 1
 
Brief Introduction to Boltzmann Machine
Brief Introduction to Boltzmann MachineBrief Introduction to Boltzmann Machine
Brief Introduction to Boltzmann Machine
 

Mais de Matthew Leifer

Mais de Matthew Leifer (11)

Imperial20101215
Imperial20101215Imperial20101215
Imperial20101215
 
Separations of probabilistic theories via their information processing capab...
Separations of probabilistic theories via their  information processing capab...Separations of probabilistic theories via their  information processing capab...
Separations of probabilistic theories via their information processing capab...
 
Unentangled Bit Commitment and the Clifton-Bub-Halvorson (CBH) Theorem
Unentangled Bit Commitment and the  Clifton-Bub-Halvorson (CBH) TheoremUnentangled Bit Commitment and the  Clifton-Bub-Halvorson (CBH) Theorem
Unentangled Bit Commitment and the Clifton-Bub-Halvorson (CBH) Theorem
 
Quantum Causal Networks
Quantum Causal NetworksQuantum Causal Networks
Quantum Causal Networks
 
The Church of the Smaller Hilbert Space
The Church of the Smaller Hilbert SpaceThe Church of the Smaller Hilbert Space
The Church of the Smaller Hilbert Space
 
Do we need a logic of quantum computation?
Do we need a logic of quantum computation?Do we need a logic of quantum computation?
Do we need a logic of quantum computation?
 
Quantum Logic
Quantum LogicQuantum Logic
Quantum Logic
 
Nondeterministic testing of Sequential Quantum Logic Propositions on a Quant...
Nondeterministic testing of Sequential Quantum Logic  Propositions on a Quant...Nondeterministic testing of Sequential Quantum Logic  Propositions on a Quant...
Nondeterministic testing of Sequential Quantum Logic Propositions on a Quant...
 
Pre- and Post-Selection Paradoxes, Measurement-Disturbance and Contextuality ...
Pre- and Post-Selection Paradoxes, Measurement-Disturbance and Contextuality ...Pre- and Post-Selection Paradoxes, Measurement-Disturbance and Contextuality ...
Pre- and Post-Selection Paradoxes, Measurement-Disturbance and Contextuality ...
 
Measuring Multi-particle Entanglement
Measuring Multi-particle EntanglementMeasuring Multi-particle Entanglement
Measuring Multi-particle Entanglement
 
Multi-particle Entanglement in Quantum States and Evolutions
Multi-particle Entanglement in Quantum States and EvolutionsMulti-particle Entanglement in Quantum States and Evolutions
Multi-particle Entanglement in Quantum States and Evolutions
 

Último

Salient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsSalient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functions
KarakKing
 

Último (20)

Accessible Digital Futures project (20/03/2024)
Accessible Digital Futures project (20/03/2024)Accessible Digital Futures project (20/03/2024)
Accessible Digital Futures project (20/03/2024)
 
Google Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptxGoogle Gemini An AI Revolution in Education.pptx
Google Gemini An AI Revolution in Education.pptx
 
Graduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - EnglishGraduate Outcomes Presentation Slides - English
Graduate Outcomes Presentation Slides - English
 
General Principles of Intellectual Property: Concepts of Intellectual Proper...
General Principles of Intellectual Property: Concepts of Intellectual  Proper...General Principles of Intellectual Property: Concepts of Intellectual  Proper...
General Principles of Intellectual Property: Concepts of Intellectual Proper...
 
ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.ICT role in 21st century education and it's challenges.
ICT role in 21st century education and it's challenges.
 
Python Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docxPython Notes for mca i year students osmania university.docx
Python Notes for mca i year students osmania university.docx
 
Micro-Scholarship, What it is, How can it help me.pdf
Micro-Scholarship, What it is, How can it help me.pdfMicro-Scholarship, What it is, How can it help me.pdf
Micro-Scholarship, What it is, How can it help me.pdf
 
HMCS Vancouver Pre-Deployment Brief - May 2024 (Web Version).pptx
HMCS Vancouver Pre-Deployment Brief - May 2024 (Web Version).pptxHMCS Vancouver Pre-Deployment Brief - May 2024 (Web Version).pptx
HMCS Vancouver Pre-Deployment Brief - May 2024 (Web Version).pptx
 
On National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan FellowsOn National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan Fellows
 
Single or Multiple melodic lines structure
Single or Multiple melodic lines structureSingle or Multiple melodic lines structure
Single or Multiple melodic lines structure
 
Plant propagation: Sexual and Asexual propapagation.pptx
Plant propagation: Sexual and Asexual propapagation.pptxPlant propagation: Sexual and Asexual propapagation.pptx
Plant propagation: Sexual and Asexual propapagation.pptx
 
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
 
How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17
 
ICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptx
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibit
 
Salient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functionsSalient Features of India constitution especially power and functions
Salient Features of India constitution especially power and functions
 
Unit 3 Emotional Intelligence and Spiritual Intelligence.pdf
Unit 3 Emotional Intelligence and Spiritual Intelligence.pdfUnit 3 Emotional Intelligence and Spiritual Intelligence.pdf
Unit 3 Emotional Intelligence and Spiritual Intelligence.pdf
 
COMMUNICATING NEGATIVE NEWS - APPROACHES .pptx
COMMUNICATING NEGATIVE NEWS - APPROACHES .pptxCOMMUNICATING NEGATIVE NEWS - APPROACHES .pptx
COMMUNICATING NEGATIVE NEWS - APPROACHES .pptx
 
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptxBasic Civil Engineering first year Notes- Chapter 4 Building.pptx
Basic Civil Engineering first year Notes- Chapter 4 Building.pptx
 
Interdisciplinary_Insights_Data_Collection_Methods.pptx
Interdisciplinary_Insights_Data_Collection_Methods.pptxInterdisciplinary_Insights_Data_Collection_Methods.pptx
Interdisciplinary_Insights_Data_Collection_Methods.pptx
 

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?