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Journal Club – Bayes Estimators for Phylogenetic
                   Reconstruction
     Syst. Biol. 60(4), 528 – 540, 2011 doi 10.1093/sysbio/syr021



                           Leonardo de O. Martins

                               University of Vigo



                               July 22, 2011



Leo Martins (Univ. Vigo)           Journal Club               22/7   1 / 12
Outline


1 Distance as a penalty


2 Distances, everywhere


3 No phylogenetics, yet...


4 Trees as points in space


5 To the paper, then




  Leo Martins (Univ. Vigo)   Journal Club   22/7   2 / 12
Statistical Risk


                                      ˆ
The risk ρ associated with a decision θ is the expected loss of this decision
ˆ
θ (which can be, for instance, an estimate of θ).




   Leo Martins (Univ. Vigo)       Journal Club                      22/7   3 / 12
Statistical Risk


                                      ˆ
The risk ρ associated with a decision θ is the expected loss of this decision
ˆ
θ (which can be, for instance, an estimate of θ).


                                ˆ
                              ρ(θ) =        ˆ
                                       L(θ, θ) P(θ | data) dθ

(promptly called posterior expected loss)




   Leo Martins (Univ. Vigo)              Journal Club               22/7   3 / 12
Statistical Risk


                                      ˆ
The risk ρ associated with a decision θ is the expected loss of this decision
ˆ
θ (which can be, for instance, an estimate of θ).


                                ˆ
                              ρ(θ) =        ˆ
                                       L(θ, θ) P(θ | data) dθ

(promptly called posterior expected loss)
                       ˆ
The loss function L(θ, θ) is a penalty we give for ”deciding” away from the
parameter. Examples are the squared loss and the absolute loss.




   Leo Martins (Univ. Vigo)              Journal Club               22/7   3 / 12
Statistical Risk


                                      ˆ
The risk ρ associated with a decision θ is the expected loss of this decision
ˆ
θ (which can be, for instance, an estimate of θ).


                                ˆ
                              ρ(θ) =        ˆ
                                       L(θ, θ) P(θ | data) dθ

(promptly called posterior expected loss)
                       ˆ
The loss function L(θ, θ) is a penalty we give for ”deciding” away from the
parameter. Examples are the squared loss and the absolute loss.

For some loss functions, we can calculate what is the best decision (i.e.
the one that minimizes the risk, for any data).




   Leo Martins (Univ. Vigo)              Journal Club               22/7    3 / 12
Outline


1 Distance as a penalty


2 Distances, everywhere


3 No phylogenetics, yet...


4 Trees as points in space


5 To the paper, then




  Leo Martins (Univ. Vigo)   Journal Club   22/7   4 / 12
How to summarise a collection of objects?




                                          scattered points

  library ( MASS ) ;
  x <- mvrnorm ( n =1000 , mu = c (0 ,0) , Sigma = matrix ( c (1 , 0.8 , 0.9 , 1) , 2 , 2 , byrow = T ) ) ;
  plot ( x [ ,1] , x [ ,2] , pch = " . " , cex = 2 , xlab = " x " , ylab = " y " ) ;




   Leo Martins (Univ. Vigo)                      Journal Club                                    22/7     5 / 12
How to summarise a collection of objects?




                      centroid: minimizes a distance to all points

  library ( MASS ) ;
  x <- mvrnorm ( n =1000 , mu = c (0 ,0) , Sigma = matrix ( c (1 , 0.8 , 0.9 , 1) , 2 , 2 , byrow = T ) ) ;
  plot ( x [ ,1] , x [ ,2] , pch = " . " , cex = 2 , xlab = " x " , ylab = " y " ) ;




   Leo Martins (Univ. Vigo)                      Journal Club                                    22/7     5 / 12
How to summarise a collection of objects?




                  regression line: minimizes a distance to all points

  library ( MASS ) ;
  x <- mvrnorm ( n =1000 , mu = c (0 ,0) , Sigma = matrix ( c (1 , 0.8 , 0.9 , 1) , 2 , 2 , byrow = T ) ) ;
  plot ( x [ ,1] , x [ ,2] , pch = " . " , cex = 2 , xlab = " x " , ylab = " y " ) ;




   Leo Martins (Univ. Vigo)                      Journal Club                                    22/7     5 / 12
Outline


1 Distance as a penalty


2 Distances, everywhere


3 No phylogenetics, yet...


4 Trees as points in space


5 To the paper, then




  Leo Martins (Univ. Vigo)   Journal Club   22/7   6 / 12
How to summarise the posterior distribution P(X)?




  Leo Martins (Univ. Vigo)   Journal Club           22/7   7 / 12
How to summarise the posterior distribution P(X)?




Posterior mean
Minimize the expected loss under a squared loss function
                                   ˆ         ˆ
                              L(θ, θ) = (θ − θ)2

(Euclidean distance)

   Leo Martins (Univ. Vigo)        Journal Club            22/7   7 / 12
How to summarise the posterior distribution P(X)?




Posterior median
Minimize the expected loss under a linear loss function
                                   ˆ         ˆ
                              L(θ, θ) =| θ − θ |

(Manhattan distance)

   Leo Martins (Univ. Vigo)        Journal Club           22/7   7 / 12
How to summarise the posterior distribution P(X)?




Posterior mode
a.k.a. Maximum A Posteriori (MAP) estimate.
Minimize the expected loss under a delta loss function

                                           0,                    ˆ
                                                         for θ = θ
                                   ˆ
                              L(θ, θ) =
                                           1,                    ˆ
                                                         for θ = θ
   Leo Martins (Univ. Vigo)               Journal Club               22/7   7 / 12
Outline


1 Distance as a penalty


2 Distances, everywhere


3 No phylogenetics, yet...


4 Trees as points in space


5 To the paper, then




  Leo Martins (Univ. Vigo)   Journal Club   22/7   8 / 12
Distances between trees
                      D                               D
                                  C                            E
                         
                                                                
                                                                 
             € €
              €                                     € €
                                                      €        
          
                                                  
                                                   
        E                                        C
                  €                                      €
                   f
                   f                                       f
                                                           f
                     f                                       f
                       fˆˆ                                     fˆˆ
                       ¢   ˆˆ
                            ˆB                                 ¢   ˆˆ
                                                                    ˆB
                       ¢                                      ¢
                     ¢                                       ¢
                   ¢                                       ¢
                              A                            A
Trees from the article




   Leo Martins (Univ. Vigo)           Journal Club                 22/7   9 / 12
Distances between trees
                     D                               D
                                 C                            E
                        
                                                               
                                                                
            € €
             €                                     € €
                                                     €        
         
                                                 
                                                  
       E                                        C
                 €                                      €
                  f
                  f                                       f
                                                          f
                    f                                       f
                      fˆˆ                                     fˆˆ
                      ¢   ˆˆ
                           ˆB                                 ¢   ˆˆ
                                                                   ˆB
                      ¢                                      ¢
                    ¢                                       ¢
                  ¢                                       ¢
                             A                            A
RF distance
    DE|ABC and CD|ABE
    total 2 branches




  Leo Martins (Univ. Vigo)           Journal Club                 22/7   9 / 12
Distances between trees
                     D                               D
                                 C                            E
                        
                                                               
                                                                
            € €
             €                                     € €
                                                     €        
         
                                                 
                                                  
       E                                        C
                 €                                      €
                  f
                  f                                       f
                                                          f
                    f                                       f
                      fˆˆ                                     fˆˆ
                      ¢   ˆˆ
                           ˆB                                 ¢   ˆˆ
                                                                   ˆB
                      ¢                                      ¢
                    ¢                                       ¢
                  ¢                                       ¢
                             A                            A
Quartet distance
    AC|DE and AE|CD
    BC|DE and BE|CD
    4 quartets are different



  Leo Martins (Univ. Vigo)           Journal Club                 22/7   9 / 12
Distances between trees
                     D                               D
                                 C                            E
                        
                                                               
                                                                
            € €
             €                                     € €
                                                     €        
         
                                                 
                                                  
       E                                        C
                 €                                      €
                  f
                  f                                       f
                                                          f
                    f                                       f
                      fˆˆ                                     fˆˆ
                      ¢   ˆˆ
                           ˆB                                 ¢   ˆˆ
                                                                   ˆB
                      ¢                                      ¢
                    ¢                                       ¢
                  ¢                                       ¢
                             A                            A
Quartet distance
    AC|DE and AE|CD
    BC|DE and BE|CD
    4 quartets are different



  Leo Martins (Univ. Vigo)           Journal Club                 22/7   9 / 12
Distances between trees
                      D                               D
                                  C                            E
                         
                                                                
                                                                 
             € €
              €                                     € €
                                                      €        
          
                                                  
                                                   
        E                                        C
                  €                                      €
                   f
                   f                                       f
                                                           f
                     f                                       f
                       fˆˆ                                     fˆˆ
                       ¢   ˆˆ
                            ˆB                                 ¢   ˆˆ
                                                                    ˆB
                       ¢                                      ¢
                     ¢                                       ¢
                   ¢                                       ¢
                              A                            A
Path difference (number of speciations between trees)
     path from A to E is one edge longer in one tree than the other
     (...)
     the overall difference is 6



   Leo Martins (Univ. Vigo)           Journal Club                 22/7   9 / 12
Outline


1 Distance as a penalty


2 Distances, everywhere


3 No phylogenetics, yet...


4 Trees as points in space


5 To the paper, then




  Leo Martins (Univ. Vigo)   Journal Club   22/7   10 / 12
If there is a distance, there is a Bayes estimator

For points in Rn , we know that the mean minimizes the Euclidean
distance, etc.

For phylogenies:

     there are several Euclidean distances


But some distances between trees also lead to “analytical” solutions:




   Leo Martins (Univ. Vigo)       Journal Club                   22/7   11 / 12
If there is a distance, there is a Bayes estimator

For points in Rn , we know that the mean minimizes the Euclidean
distance, etc.

For phylogenies:

     there are several Euclidean distances
     the mean does not work since a tree has restrictions

But some distances between trees also lead to “analytical” solutions:




   Leo Martins (Univ. Vigo)       Journal Club                   22/7   11 / 12
If there is a distance, there is a Bayes estimator

For points in Rn , we know that the mean minimizes the Euclidean
distance, etc.

For phylogenies:

     there are several Euclidean distances
     the mean does not work since a tree has restrictions

But some distances between trees also lead to “analytical” solutions:

     the consensus tree minimizes the Robinson-Foulds distance between
     the samples




   Leo Martins (Univ. Vigo)       Journal Club                   22/7   11 / 12
If there is a distance, there is a Bayes estimator

For points in Rn , we know that the mean minimizes the Euclidean
distance, etc.

For phylogenies:

     there are several Euclidean distances
     the mean does not work since a tree has restrictions

But some distances between trees also lead to “analytical” solutions:

     the consensus tree minimizes the Robinson-Foulds distance between
     the samples
     the quartet puzzling minimizes the quartet distance




   Leo Martins (Univ. Vigo)       Journal Club                   22/7   11 / 12
If there is a distance, there is a Bayes estimator

For points in Rn , we know that the mean minimizes the Euclidean
distance, etc.

For phylogenies:

     there are several Euclidean distances
     the mean does not work since a tree has restrictions

But some distances between trees also lead to “analytical” solutions:

     the consensus tree minimizes the Robinson-Foulds distance between
     the samples
     the quartet puzzling minimizes the quartet distance
     the Buneman tree minimizes (I think) the dissimilarity map distance



   Leo Martins (Univ. Vigo)       Journal Club                   22/7   11 / 12
If there is a distance, there is a Bayes estimator

For points in Rn , we know that the mean minimizes the Euclidean
distance, etc.

For phylogenies:

     there are several Euclidean distances
     the mean does not work since a tree has restrictions

But some distances between trees also lead to “analytical” solutions:

     the consensus tree minimizes the Robinson-Foulds distance between
     the samples
     the quartet puzzling minimizes the quartet distance
     the Buneman tree minimizes (I think) the dissimilarity map distance
     some of these are hard to solve as well

   Leo Martins (Univ. Vigo)       Journal Club                   22/7   11 / 12
How do they find, then, the Bayes estimates?



    like many other softwares: hill-climbing on the space of possible
    topologies




  Leo Martins (Univ. Vigo)       Journal Club                    22/7   12 / 12
How do they find, then, the Bayes estimates?



    like many other softwares: hill-climbing on the space of possible
    topologies
    their input data is the posterior distribution of trees from MrBayes




  Leo Martins (Univ. Vigo)       Journal Club                     22/7     12 / 12
How do they find, then, the Bayes estimates?



    like many other softwares: hill-climbing on the space of possible
    topologies
    their input data is the posterior distribution of trees from MrBayes
    starting tree can be NJ, MAP tree, ML...




  Leo Martins (Univ. Vigo)       Journal Club                     22/7     12 / 12
How do they find, then, the Bayes estimates?



    like many other softwares: hill-climbing on the space of possible
    topologies
    their input data is the posterior distribution of trees from MrBayes
    starting tree can be NJ, MAP tree, ML...
    apply branch-swap (NNI) to current optimal tree, then verify distance
    to all samples




  Leo Martins (Univ. Vigo)       Journal Club                     22/7     12 / 12
How do they find, then, the Bayes estimates?



    like many other softwares: hill-climbing on the space of possible
    topologies
    their input data is the posterior distribution of trees from MrBayes
    starting tree can be NJ, MAP tree, ML...
    apply branch-swap (NNI) to current optimal tree, then verify distance
    to all samples
           the distance used is the path difference (matrix subtraction)




  Leo Martins (Univ. Vigo)           Journal Club                         22/7   12 / 12
How do they find, then, the Bayes estimates?



    like many other softwares: hill-climbing on the space of possible
    topologies
    their input data is the posterior distribution of trees from MrBayes
    starting tree can be NJ, MAP tree, ML...
    apply branch-swap (NNI) to current optimal tree, then verify distance
    to all samples
           the distance used is the path difference (matrix subtraction)
           don’t need to recalculate distance to all samples, just to matrix with
           average values




  Leo Martins (Univ. Vigo)           Journal Club                        22/7   12 / 12

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Journal Club @ UVigo 2011.07.22

  • 1. Journal Club – Bayes Estimators for Phylogenetic Reconstruction Syst. Biol. 60(4), 528 – 540, 2011 doi 10.1093/sysbio/syr021 Leonardo de O. Martins University of Vigo July 22, 2011 Leo Martins (Univ. Vigo) Journal Club 22/7 1 / 12
  • 2. Outline 1 Distance as a penalty 2 Distances, everywhere 3 No phylogenetics, yet... 4 Trees as points in space 5 To the paper, then Leo Martins (Univ. Vigo) Journal Club 22/7 2 / 12
  • 3. Statistical Risk ˆ The risk ρ associated with a decision θ is the expected loss of this decision ˆ θ (which can be, for instance, an estimate of θ). Leo Martins (Univ. Vigo) Journal Club 22/7 3 / 12
  • 4. Statistical Risk ˆ The risk ρ associated with a decision θ is the expected loss of this decision ˆ θ (which can be, for instance, an estimate of θ). ˆ ρ(θ) = ˆ L(θ, θ) P(θ | data) dθ (promptly called posterior expected loss) Leo Martins (Univ. Vigo) Journal Club 22/7 3 / 12
  • 5. Statistical Risk ˆ The risk ρ associated with a decision θ is the expected loss of this decision ˆ θ (which can be, for instance, an estimate of θ). ˆ ρ(θ) = ˆ L(θ, θ) P(θ | data) dθ (promptly called posterior expected loss) ˆ The loss function L(θ, θ) is a penalty we give for ”deciding” away from the parameter. Examples are the squared loss and the absolute loss. Leo Martins (Univ. Vigo) Journal Club 22/7 3 / 12
  • 6. Statistical Risk ˆ The risk ρ associated with a decision θ is the expected loss of this decision ˆ θ (which can be, for instance, an estimate of θ). ˆ ρ(θ) = ˆ L(θ, θ) P(θ | data) dθ (promptly called posterior expected loss) ˆ The loss function L(θ, θ) is a penalty we give for ”deciding” away from the parameter. Examples are the squared loss and the absolute loss. For some loss functions, we can calculate what is the best decision (i.e. the one that minimizes the risk, for any data). Leo Martins (Univ. Vigo) Journal Club 22/7 3 / 12
  • 7. Outline 1 Distance as a penalty 2 Distances, everywhere 3 No phylogenetics, yet... 4 Trees as points in space 5 To the paper, then Leo Martins (Univ. Vigo) Journal Club 22/7 4 / 12
  • 8. How to summarise a collection of objects? scattered points library ( MASS ) ; x <- mvrnorm ( n =1000 , mu = c (0 ,0) , Sigma = matrix ( c (1 , 0.8 , 0.9 , 1) , 2 , 2 , byrow = T ) ) ; plot ( x [ ,1] , x [ ,2] , pch = " . " , cex = 2 , xlab = " x " , ylab = " y " ) ; Leo Martins (Univ. Vigo) Journal Club 22/7 5 / 12
  • 9. How to summarise a collection of objects? centroid: minimizes a distance to all points library ( MASS ) ; x <- mvrnorm ( n =1000 , mu = c (0 ,0) , Sigma = matrix ( c (1 , 0.8 , 0.9 , 1) , 2 , 2 , byrow = T ) ) ; plot ( x [ ,1] , x [ ,2] , pch = " . " , cex = 2 , xlab = " x " , ylab = " y " ) ; Leo Martins (Univ. Vigo) Journal Club 22/7 5 / 12
  • 10. How to summarise a collection of objects? regression line: minimizes a distance to all points library ( MASS ) ; x <- mvrnorm ( n =1000 , mu = c (0 ,0) , Sigma = matrix ( c (1 , 0.8 , 0.9 , 1) , 2 , 2 , byrow = T ) ) ; plot ( x [ ,1] , x [ ,2] , pch = " . " , cex = 2 , xlab = " x " , ylab = " y " ) ; Leo Martins (Univ. Vigo) Journal Club 22/7 5 / 12
  • 11. Outline 1 Distance as a penalty 2 Distances, everywhere 3 No phylogenetics, yet... 4 Trees as points in space 5 To the paper, then Leo Martins (Univ. Vigo) Journal Club 22/7 6 / 12
  • 12. How to summarise the posterior distribution P(X)? Leo Martins (Univ. Vigo) Journal Club 22/7 7 / 12
  • 13. How to summarise the posterior distribution P(X)? Posterior mean Minimize the expected loss under a squared loss function ˆ ˆ L(θ, θ) = (θ − θ)2 (Euclidean distance) Leo Martins (Univ. Vigo) Journal Club 22/7 7 / 12
  • 14. How to summarise the posterior distribution P(X)? Posterior median Minimize the expected loss under a linear loss function ˆ ˆ L(θ, θ) =| θ − θ | (Manhattan distance) Leo Martins (Univ. Vigo) Journal Club 22/7 7 / 12
  • 15. How to summarise the posterior distribution P(X)? Posterior mode a.k.a. Maximum A Posteriori (MAP) estimate. Minimize the expected loss under a delta loss function 0, ˆ for θ = θ ˆ L(θ, θ) = 1, ˆ for θ = θ Leo Martins (Univ. Vigo) Journal Club 22/7 7 / 12
  • 16. Outline 1 Distance as a penalty 2 Distances, everywhere 3 No phylogenetics, yet... 4 Trees as points in space 5 To the paper, then Leo Martins (Univ. Vigo) Journal Club 22/7 8 / 12
  • 17. Distances between trees D D C E € € € € € € E C € € f f f f f f fˆˆ fˆˆ ¢ ˆˆ ˆB ¢ ˆˆ ˆB ¢ ¢ ¢ ¢ ¢ ¢ A A Trees from the article Leo Martins (Univ. Vigo) Journal Club 22/7 9 / 12
  • 18. Distances between trees D D C E € € € € € € E C € € f f f f f f fˆˆ fˆˆ ¢ ˆˆ ˆB ¢ ˆˆ ˆB ¢ ¢ ¢ ¢ ¢ ¢ A A RF distance DE|ABC and CD|ABE total 2 branches Leo Martins (Univ. Vigo) Journal Club 22/7 9 / 12
  • 19. Distances between trees D D C E € € € € € € E C € € f f f f f f fˆˆ fˆˆ ¢ ˆˆ ˆB ¢ ˆˆ ˆB ¢ ¢ ¢ ¢ ¢ ¢ A A Quartet distance AC|DE and AE|CD BC|DE and BE|CD 4 quartets are different Leo Martins (Univ. Vigo) Journal Club 22/7 9 / 12
  • 20. Distances between trees D D C E € € € € € € E C € € f f f f f f fˆˆ fˆˆ ¢ ˆˆ ˆB ¢ ˆˆ ˆB ¢ ¢ ¢ ¢ ¢ ¢ A A Quartet distance AC|DE and AE|CD BC|DE and BE|CD 4 quartets are different Leo Martins (Univ. Vigo) Journal Club 22/7 9 / 12
  • 21. Distances between trees D D C E € € € € € € E C € € f f f f f f fˆˆ fˆˆ ¢ ˆˆ ˆB ¢ ˆˆ ˆB ¢ ¢ ¢ ¢ ¢ ¢ A A Path difference (number of speciations between trees) path from A to E is one edge longer in one tree than the other (...) the overall difference is 6 Leo Martins (Univ. Vigo) Journal Club 22/7 9 / 12
  • 22. Outline 1 Distance as a penalty 2 Distances, everywhere 3 No phylogenetics, yet... 4 Trees as points in space 5 To the paper, then Leo Martins (Univ. Vigo) Journal Club 22/7 10 / 12
  • 23. If there is a distance, there is a Bayes estimator For points in Rn , we know that the mean minimizes the Euclidean distance, etc. For phylogenies: there are several Euclidean distances But some distances between trees also lead to “analytical” solutions: Leo Martins (Univ. Vigo) Journal Club 22/7 11 / 12
  • 24. If there is a distance, there is a Bayes estimator For points in Rn , we know that the mean minimizes the Euclidean distance, etc. For phylogenies: there are several Euclidean distances the mean does not work since a tree has restrictions But some distances between trees also lead to “analytical” solutions: Leo Martins (Univ. Vigo) Journal Club 22/7 11 / 12
  • 25. If there is a distance, there is a Bayes estimator For points in Rn , we know that the mean minimizes the Euclidean distance, etc. For phylogenies: there are several Euclidean distances the mean does not work since a tree has restrictions But some distances between trees also lead to “analytical” solutions: the consensus tree minimizes the Robinson-Foulds distance between the samples Leo Martins (Univ. Vigo) Journal Club 22/7 11 / 12
  • 26. If there is a distance, there is a Bayes estimator For points in Rn , we know that the mean minimizes the Euclidean distance, etc. For phylogenies: there are several Euclidean distances the mean does not work since a tree has restrictions But some distances between trees also lead to “analytical” solutions: the consensus tree minimizes the Robinson-Foulds distance between the samples the quartet puzzling minimizes the quartet distance Leo Martins (Univ. Vigo) Journal Club 22/7 11 / 12
  • 27. If there is a distance, there is a Bayes estimator For points in Rn , we know that the mean minimizes the Euclidean distance, etc. For phylogenies: there are several Euclidean distances the mean does not work since a tree has restrictions But some distances between trees also lead to “analytical” solutions: the consensus tree minimizes the Robinson-Foulds distance between the samples the quartet puzzling minimizes the quartet distance the Buneman tree minimizes (I think) the dissimilarity map distance Leo Martins (Univ. Vigo) Journal Club 22/7 11 / 12
  • 28. If there is a distance, there is a Bayes estimator For points in Rn , we know that the mean minimizes the Euclidean distance, etc. For phylogenies: there are several Euclidean distances the mean does not work since a tree has restrictions But some distances between trees also lead to “analytical” solutions: the consensus tree minimizes the Robinson-Foulds distance between the samples the quartet puzzling minimizes the quartet distance the Buneman tree minimizes (I think) the dissimilarity map distance some of these are hard to solve as well Leo Martins (Univ. Vigo) Journal Club 22/7 11 / 12
  • 29. How do they find, then, the Bayes estimates? like many other softwares: hill-climbing on the space of possible topologies Leo Martins (Univ. Vigo) Journal Club 22/7 12 / 12
  • 30. How do they find, then, the Bayes estimates? like many other softwares: hill-climbing on the space of possible topologies their input data is the posterior distribution of trees from MrBayes Leo Martins (Univ. Vigo) Journal Club 22/7 12 / 12
  • 31. How do they find, then, the Bayes estimates? like many other softwares: hill-climbing on the space of possible topologies their input data is the posterior distribution of trees from MrBayes starting tree can be NJ, MAP tree, ML... Leo Martins (Univ. Vigo) Journal Club 22/7 12 / 12
  • 32. How do they find, then, the Bayes estimates? like many other softwares: hill-climbing on the space of possible topologies their input data is the posterior distribution of trees from MrBayes starting tree can be NJ, MAP tree, ML... apply branch-swap (NNI) to current optimal tree, then verify distance to all samples Leo Martins (Univ. Vigo) Journal Club 22/7 12 / 12
  • 33. How do they find, then, the Bayes estimates? like many other softwares: hill-climbing on the space of possible topologies their input data is the posterior distribution of trees from MrBayes starting tree can be NJ, MAP tree, ML... apply branch-swap (NNI) to current optimal tree, then verify distance to all samples the distance used is the path difference (matrix subtraction) Leo Martins (Univ. Vigo) Journal Club 22/7 12 / 12
  • 34. How do they find, then, the Bayes estimates? like many other softwares: hill-climbing on the space of possible topologies their input data is the posterior distribution of trees from MrBayes starting tree can be NJ, MAP tree, ML... apply branch-swap (NNI) to current optimal tree, then verify distance to all samples the distance used is the path difference (matrix subtraction) don’t need to recalculate distance to all samples, just to matrix with average values Leo Martins (Univ. Vigo) Journal Club 22/7 12 / 12