SlideShare a Scribd company logo
1 of 62
Bayesian Variable Selection and the
        (Ab)use of Priors


                     Bob O'Hara
                        BiK-F
                  Frankfurt am Main
                      Germany
blogs.nature.com/boboh/2012/07/16/abusing_a_prior

  (this is mainly a review of work by other people)
The Bad Old Days
ANOVA tables
Not Useful for Modern Applications
    GWAS: 105 variables




Ikram MK et al (2010) Four Novel Loci (19q13, 6q24, 12q24, and 5q14) Influence the Microcirculation In Vivo. PLoS Genet. 2010 Oct 28;6(10):e1001184.
Anyway, we want to be Bayesian
Could use DIC, but same problems




     So, let's build variable
      selection into the model
Health Warnings I
I am not saying you should use variable selection
Health Warnings I
I am not saying you should use variable selection




      p-values are EVIL
Health Warnings II
The methods I am about to describe are sensitive
 to the priors
The Regression Problem
Our model:

                  K
        y i =β0 + ∑ βk X ik +εi
                 k =1




         (everything else is just a variant)
Bayesian Approach
Posterior:

                                                    K
P (β , β0, σε∣y)∝ P ( y∣β , β0, σε ) P (β0 ) P (σ ε ) ∏ P (βk )
                                                   k =1
Bayesian Approach
Posterior:

                                                   K
P (β ,β0, σ ε∣y)∝ P ( y∣β ,β0, σ ε ) P (β0) P (σ ε ) ∏ P (βk )
                                                  k =1



             Likelihood
Bayesian Approach
Posterior:

                                                   K
P (β ,β0, σ ε∣y)∝ P ( y∣β ,β0, σ ε ) P (β0) P (σ ε ) ∏ P (βk )
                                                  k =1



             Likelihood                   Priors for
                                          regression
                                          parameters
Fitting: use MCMC
Creates Markov chain
Loops through the parameters
Simply drop uninteresting parameters
  marginalisation
The advantage (for us) of MCMC
We can over-parameterise
Some MCMC samplers (e.g Gibbs) are more
 efficient
  Run faster & mix better
The advantage (for us) of MCMC


With some imagination, we can
 design priors that will work for us
Variable Selection

Which of the X's should be in
the model?

     alternatively


  Which of the β's should be zero?
Choosing X's

rjMCMC

 General method for moving
  between models with
  different number of
  dimensions
Setting βs to 0
Easier to implement
But can be slower
  Stays in large dimensions
Slab and Spike Priors



                 Spike
Slab
Slab and Spike Posteriors




 Bimodal
Several ways of getting priors
Method I: Point Mass at 0

   P (β)=(1− p)0+ p N (0, σ β )
Indicators

 Ik – indicator that variable k is in the model

       P(Ik=1) = p

      θ ~ N(0,σβ2)

      P(β) = (1-I) 0 + I θ

And integrate over P(I=1) by MCMC
          Gibbs sampling should work nicely
A problem with Gibbs Sampling

          P(β) = (1-I) 0 + I θ

       When I = 0, θ only depends on its prior

So MCMC draws wide values of θ


  Only rarely will it draw
   “sensible” values
A Better Version: GVS

 θ ~ N(0,σβ2(I))                 Pseudo-prior


    P(β) = I θ


Now if I=0, generate from a pseudo-
 prior, tuned to propose sensible
 values
     i.e. select σβ2(0) to cover
       likely values of the posterior
Another way

The spike can be around 0, not
 exactly on it
SSVS: Mixture distributions
Stochastic Search Variable Selection

     Mixture of normals         Spike



         Slab
SSVS
   β ~ N(0, σβ2(I))   I ~ Bern(p)
σβ2 (1)<< σβ2(0)            Spike



      Slab
Adaptive Shrinkage
Make a continuous mixture of distributions




        Marginalise over the continuous mixture
Jeffrey's Prior
β ~ N(0, σβ2)
  log(σβ2) ~ Unif(-∞,∞)
Bayesian Lasso
 β ~ N(0, σβ2)
   σβ2 ~ Exp(µ)
so β ~ dExp(µ)
Normal Exponential Gamma
  Integrate µ from Lasso over a Gamma
β ~ N(0, σβ2)
σβ2 ~ Exp(µ)
µ ~ Γ(λ,γ 2)
                       NEG              Exponential
NEG & Lasso

    GWAS too big for MCMC



Use quicker algorithms & only estimate
 posterior modes
How do they compare?


             Want good
              separation


             Good



               Bad
Comparison

Laplace – awful. Shrinks
 everything

  GVS – works well (when
   tuned), but slower

        SSVS – works well

 Jeffrey's – works very well
Fixed and Random Effects

    Rather than fixing parameters, can
     treat as a random effect to tune it

     e.g. SSVS

         β ~ N(0, σI2)
          σ12 ~ Γ(), σ02 = c σ12    (c<<1)

Useful with many variables, can learn about scale of
 response
Random Effects
Useful with many variables, can learn about scale of
 response

    Variables not in model get P(I=1|data) = P(I=1)




              Random Effect
Some Extensions

These might be useful sometimes



Random Effect
 Variances

Polynomials
Random Effect Variances

Simple 1 level model


      y i =α 0 +α 1 ( g i )+εi


        α 1 (k )∼ N (0, σ α )
                          2
ICC

Intra-class correlation


                 σ   2
                     α
         ICC = 2 2
              σ α +σ
Variable selection on the variance
 “GVS”

 σα=
     {  0     I =1
     exp(χ 2) I =2
                      “Jeffreys Shrinkage”
                                        3,   3
 “SSVS”               log (σ α )∼ U (−10 10 )

 σα=
     {
     exp(χ 1 ) I =1
     exp(χ 2) I =2
Pr(I=1)

Pr(I=1)




          True ICC
Estimated ICCs
Estimated ICC




                    True ICC
Polynomials


                    K
           y i =β0 + ∑ βk X +εi
                          k
                          i
                   k =1




Transform to orthogonal polynomials


    (use poly() in R)
Polynomials


                        K
              y i =β0 + ∑ βk X i (k )+ε i
                       k =1


o – order of polynomial:         ο ∈{1, ..., O}


         βk ~ N(0, σβ2) if k ≤ o, else βk = 0
Why bother?

We have splines already



Polynomials are usually too wiggly
But...


Bayesian approaches integrate
 over the parameters




will this smooth out the wiggles?
A test
A Response
             True curve:   y∝x    ½




                                      100 points




                    A Covariate
The Fitted Curve
A Response




                A Covariate
Deviations from true mean
Deviation




            A Covariate
Polynomial Order

Posterior Probability




                           Order of Polynomial
A couple of comments

The methods are flexible: we
 can try new, weird things



      Integrating over the
       uncertainty smooths things
Does any of this make sense?



Are we abusing our priors?
What subjectivist priors mean




Statement about our beliefs
What the priors are doing here


Tuning the model to give sparseness
Sometimes we can bridge the gap
Genetics


Look at lots of loci (1000s)


   Only a few are linked to genes
    that have an effect

  Hence, most effects are close to
   zero
A Subjective Prior for Gene Effects?
What about other cases?

e.g. a recent paper
in Science
Response: respiration

 Predictors:
 Climate (PCA)
 Slope, latitude, longitude etc.
 Number of shrub species


 Most probably have some effect

   (or are correlated with something that
     does)
A prior?




But doesn't separate variables very well
If we want to do variable selection...
    Should first think about priors




     If our subjective prior doesn't
       shrink properly, either don't
       select variables, or admit to
       yourself you're abusing your
       priors
Thank you for not abusing me
blogs.nature.com/boboh/2012/07/16/abusing_a_prior

More Related Content

What's hot

Monte Carlo methods for some not-quite-but-almost Bayesian problems
Monte Carlo methods for some not-quite-but-almost Bayesian problemsMonte Carlo methods for some not-quite-but-almost Bayesian problems
Monte Carlo methods for some not-quite-but-almost Bayesian problemsPierre Jacob
 
CVPR2010: Advanced ITinCVPR in a Nutshell: part 7: Future Trend
CVPR2010: Advanced ITinCVPR in a Nutshell: part 7: Future TrendCVPR2010: Advanced ITinCVPR in a Nutshell: part 7: Future Trend
CVPR2010: Advanced ITinCVPR in a Nutshell: part 7: Future Trendzukun
 
Maximum likelihood estimation of regularisation parameters in inverse problem...
Maximum likelihood estimation of regularisation parameters in inverse problem...Maximum likelihood estimation of regularisation parameters in inverse problem...
Maximum likelihood estimation of regularisation parameters in inverse problem...Valentin De Bortoli
 
Signal Processing Course : Sparse Regularization of Inverse Problems
Signal Processing Course : Sparse Regularization of Inverse ProblemsSignal Processing Course : Sparse Regularization of Inverse Problems
Signal Processing Course : Sparse Regularization of Inverse ProblemsGabriel Peyré
 
Omiros' talk on the Bernoulli factory problem
Omiros' talk on the  Bernoulli factory problemOmiros' talk on the  Bernoulli factory problem
Omiros' talk on the Bernoulli factory problemBigMC
 
Jyokyo-kai-20120605
Jyokyo-kai-20120605Jyokyo-kai-20120605
Jyokyo-kai-20120605ketanaka
 
Rank awarealgs small11
Rank awarealgs small11Rank awarealgs small11
Rank awarealgs small11Jules Esp
 
Unbiased Markov chain Monte Carlo methods
Unbiased Markov chain Monte Carlo methods Unbiased Markov chain Monte Carlo methods
Unbiased Markov chain Monte Carlo methods Pierre Jacob
 
Couplings of Markov chains and the Poisson equation
Couplings of Markov chains and the Poisson equation Couplings of Markov chains and the Poisson equation
Couplings of Markov chains and the Poisson equation Pierre Jacob
 
Unbiased MCMC with couplings
Unbiased MCMC with couplingsUnbiased MCMC with couplings
Unbiased MCMC with couplingsPierre Jacob
 
IVR - Chapter 1 - Introduction
IVR - Chapter 1 - IntroductionIVR - Chapter 1 - Introduction
IVR - Chapter 1 - IntroductionCharles Deledalle
 
Talk given at the Twelfth Workshop on Non-Perurbative Quantum Chromodynamics ...
Talk given at the Twelfth Workshop on Non-Perurbative Quantum Chromodynamics ...Talk given at the Twelfth Workshop on Non-Perurbative Quantum Chromodynamics ...
Talk given at the Twelfth Workshop on Non-Perurbative Quantum Chromodynamics ...Marco Frasca
 
Micro to macro passage in traffic models including multi-anticipation effect
Micro to macro passage in traffic models including multi-anticipation effectMicro to macro passage in traffic models including multi-anticipation effect
Micro to macro passage in traffic models including multi-anticipation effectGuillaume Costeseque
 
Injective hulls of simple modules over Noetherian rings
Injective hulls of simple modules over Noetherian ringsInjective hulls of simple modules over Noetherian rings
Injective hulls of simple modules over Noetherian ringsMatematica Portuguesa
 
Alternating direction
Alternating directionAlternating direction
Alternating directionDerek Pang
 

What's hot (20)

Monte Carlo methods for some not-quite-but-almost Bayesian problems
Monte Carlo methods for some not-quite-but-almost Bayesian problemsMonte Carlo methods for some not-quite-but-almost Bayesian problems
Monte Carlo methods for some not-quite-but-almost Bayesian problems
 
CVPR2010: Advanced ITinCVPR in a Nutshell: part 7: Future Trend
CVPR2010: Advanced ITinCVPR in a Nutshell: part 7: Future TrendCVPR2010: Advanced ITinCVPR in a Nutshell: part 7: Future Trend
CVPR2010: Advanced ITinCVPR in a Nutshell: part 7: Future Trend
 
Maximum likelihood estimation of regularisation parameters in inverse problem...
Maximum likelihood estimation of regularisation parameters in inverse problem...Maximum likelihood estimation of regularisation parameters in inverse problem...
Maximum likelihood estimation of regularisation parameters in inverse problem...
 
Signal Processing Course : Sparse Regularization of Inverse Problems
Signal Processing Course : Sparse Regularization of Inverse ProblemsSignal Processing Course : Sparse Regularization of Inverse Problems
Signal Processing Course : Sparse Regularization of Inverse Problems
 
Savage-Dickey paradox
Savage-Dickey paradoxSavage-Dickey paradox
Savage-Dickey paradox
 
Omiros' talk on the Bernoulli factory problem
Omiros' talk on the  Bernoulli factory problemOmiros' talk on the  Bernoulli factory problem
Omiros' talk on the Bernoulli factory problem
 
Jyokyo-kai-20120605
Jyokyo-kai-20120605Jyokyo-kai-20120605
Jyokyo-kai-20120605
 
Rank awarealgs small11
Rank awarealgs small11Rank awarealgs small11
Rank awarealgs small11
 
Unbiased Markov chain Monte Carlo methods
Unbiased Markov chain Monte Carlo methods Unbiased Markov chain Monte Carlo methods
Unbiased Markov chain Monte Carlo methods
 
Couplings of Markov chains and the Poisson equation
Couplings of Markov chains and the Poisson equation Couplings of Markov chains and the Poisson equation
Couplings of Markov chains and the Poisson equation
 
Unbiased MCMC with couplings
Unbiased MCMC with couplingsUnbiased MCMC with couplings
Unbiased MCMC with couplings
 
IVR - Chapter 1 - Introduction
IVR - Chapter 1 - IntroductionIVR - Chapter 1 - Introduction
IVR - Chapter 1 - Introduction
 
Talk given at the Twelfth Workshop on Non-Perurbative Quantum Chromodynamics ...
Talk given at the Twelfth Workshop on Non-Perurbative Quantum Chromodynamics ...Talk given at the Twelfth Workshop on Non-Perurbative Quantum Chromodynamics ...
Talk given at the Twelfth Workshop on Non-Perurbative Quantum Chromodynamics ...
 
Program on Quasi-Monte Carlo and High-Dimensional Sampling Methods for Applie...
Program on Quasi-Monte Carlo and High-Dimensional Sampling Methods for Applie...Program on Quasi-Monte Carlo and High-Dimensional Sampling Methods for Applie...
Program on Quasi-Monte Carlo and High-Dimensional Sampling Methods for Applie...
 
Pda
PdaPda
Pda
 
Micro to macro passage in traffic models including multi-anticipation effect
Micro to macro passage in traffic models including multi-anticipation effectMicro to macro passage in traffic models including multi-anticipation effect
Micro to macro passage in traffic models including multi-anticipation effect
 
Injective hulls of simple modules over Noetherian rings
Injective hulls of simple modules over Noetherian ringsInjective hulls of simple modules over Noetherian rings
Injective hulls of simple modules over Noetherian rings
 
Alternating direction
Alternating directionAlternating direction
Alternating direction
 
RuFiDiM
RuFiDiMRuFiDiM
RuFiDiM
 
O2
O2O2
O2
 

Similar to Bayesian Variable Selection Using Priors

Talk at CIRM on Poisson equation and debiasing techniques
Talk at CIRM on Poisson equation and debiasing techniquesTalk at CIRM on Poisson equation and debiasing techniques
Talk at CIRM on Poisson equation and debiasing techniquesPierre Jacob
 
Pydata Katya Vasilaky
Pydata Katya VasilakyPydata Katya Vasilaky
Pydata Katya Vasilakyknv4
 
Bayesian inversion of deterministic dynamic causal models
Bayesian inversion of deterministic dynamic causal modelsBayesian inversion of deterministic dynamic causal models
Bayesian inversion of deterministic dynamic causal modelskhbrodersen
 
Delayed acceptance for Metropolis-Hastings algorithms
Delayed acceptance for Metropolis-Hastings algorithmsDelayed acceptance for Metropolis-Hastings algorithms
Delayed acceptance for Metropolis-Hastings algorithmsChristian Robert
 
Bayesian inference on mixtures
Bayesian inference on mixturesBayesian inference on mixtures
Bayesian inference on mixturesChristian Robert
 
Thesis defense improved
Thesis defense improvedThesis defense improved
Thesis defense improvedZheng Mengdi
 
Tensor Completion for PDEs with uncertain coefficients and Bayesian Update te...
Tensor Completion for PDEs with uncertain coefficients and Bayesian Update te...Tensor Completion for PDEs with uncertain coefficients and Bayesian Update te...
Tensor Completion for PDEs with uncertain coefficients and Bayesian Update te...Alexander Litvinenko
 
MVPA with SpaceNet: sparse structured priors
MVPA with SpaceNet: sparse structured priorsMVPA with SpaceNet: sparse structured priors
MVPA with SpaceNet: sparse structured priorsElvis DOHMATOB
 
Sparsity with sign-coherent groups of variables via the cooperative-Lasso
Sparsity with sign-coherent groups of variables via the cooperative-LassoSparsity with sign-coherent groups of variables via the cooperative-Lasso
Sparsity with sign-coherent groups of variables via the cooperative-LassoLaboratoire Statistique et génome
 
Minimum mean square error estimation and approximation of the Bayesian update
Minimum mean square error estimation and approximation of the Bayesian updateMinimum mean square error estimation and approximation of the Bayesian update
Minimum mean square error estimation and approximation of the Bayesian updateAlexander Litvinenko
 
Probability cheatsheet
Probability cheatsheetProbability cheatsheet
Probability cheatsheetSuvrat Mishra
 

Similar to Bayesian Variable Selection Using Priors (20)

Talk at CIRM on Poisson equation and debiasing techniques
Talk at CIRM on Poisson equation and debiasing techniquesTalk at CIRM on Poisson equation and debiasing techniques
Talk at CIRM on Poisson equation and debiasing techniques
 
Pydata Katya Vasilaky
Pydata Katya VasilakyPydata Katya Vasilaky
Pydata Katya Vasilaky
 
Bayesian inversion of deterministic dynamic causal models
Bayesian inversion of deterministic dynamic causal modelsBayesian inversion of deterministic dynamic causal models
Bayesian inversion of deterministic dynamic causal models
 
QMC: Transition Workshop - Density Estimation by Randomized Quasi-Monte Carlo...
QMC: Transition Workshop - Density Estimation by Randomized Quasi-Monte Carlo...QMC: Transition Workshop - Density Estimation by Randomized Quasi-Monte Carlo...
QMC: Transition Workshop - Density Estimation by Randomized Quasi-Monte Carlo...
 
Delayed acceptance for Metropolis-Hastings algorithms
Delayed acceptance for Metropolis-Hastings algorithmsDelayed acceptance for Metropolis-Hastings algorithms
Delayed acceptance for Metropolis-Hastings algorithms
 
Bayesian inference on mixtures
Bayesian inference on mixturesBayesian inference on mixtures
Bayesian inference on mixtures
 
QMC Program: Trends and Advances in Monte Carlo Sampling Algorithms Workshop,...
QMC Program: Trends and Advances in Monte Carlo Sampling Algorithms Workshop,...QMC Program: Trends and Advances in Monte Carlo Sampling Algorithms Workshop,...
QMC Program: Trends and Advances in Monte Carlo Sampling Algorithms Workshop,...
 
ABC-Gibbs
ABC-GibbsABC-Gibbs
ABC-Gibbs
 
Talk iccf 19_ben_hammouda
Talk iccf 19_ben_hammoudaTalk iccf 19_ben_hammouda
Talk iccf 19_ben_hammouda
 
Thesis defense improved
Thesis defense improvedThesis defense improved
Thesis defense improved
 
Tensor Completion for PDEs with uncertain coefficients and Bayesian Update te...
Tensor Completion for PDEs with uncertain coefficients and Bayesian Update te...Tensor Completion for PDEs with uncertain coefficients and Bayesian Update te...
Tensor Completion for PDEs with uncertain coefficients and Bayesian Update te...
 
MVPA with SpaceNet: sparse structured priors
MVPA with SpaceNet: sparse structured priorsMVPA with SpaceNet: sparse structured priors
MVPA with SpaceNet: sparse structured priors
 
ABC workshop: 17w5025
ABC workshop: 17w5025ABC workshop: 17w5025
ABC workshop: 17w5025
 
Intro to ABC
Intro to ABCIntro to ABC
Intro to ABC
 
Probability Cheatsheet.pdf
Probability Cheatsheet.pdfProbability Cheatsheet.pdf
Probability Cheatsheet.pdf
 
Sparsity with sign-coherent groups of variables via the cooperative-Lasso
Sparsity with sign-coherent groups of variables via the cooperative-LassoSparsity with sign-coherent groups of variables via the cooperative-Lasso
Sparsity with sign-coherent groups of variables via the cooperative-Lasso
 
Minimum mean square error estimation and approximation of the Bayesian update
Minimum mean square error estimation and approximation of the Bayesian updateMinimum mean square error estimation and approximation of the Bayesian update
Minimum mean square error estimation and approximation of the Bayesian update
 
YSC 2013
YSC 2013YSC 2013
YSC 2013
 
JISA_Paper
JISA_PaperJISA_Paper
JISA_Paper
 
Probability cheatsheet
Probability cheatsheetProbability cheatsheet
Probability cheatsheet
 

More from Bob O'Hara

Integrated modelling Cape Town
Integrated modelling Cape TownIntegrated modelling Cape Town
Integrated modelling Cape TownBob O'Hara
 
What are we? Statistical Ecologists or Ecological Statisticians?
What are we?  Statistical Ecologists or Ecological Statisticians?What are we?  Statistical Ecologists or Ecological Statisticians?
What are we? Statistical Ecologists or Ecological Statisticians?Bob O'Hara
 
Trying to clean up the mess: Bayes, Frequentism, NHST, Parameter estimation e...
Trying to clean up the mess: Bayes, Frequentism, NHST, Parameter estimation e...Trying to clean up the mess: Bayes, Frequentism, NHST, Parameter estimation e...
Trying to clean up the mess: Bayes, Frequentism, NHST, Parameter estimation e...Bob O'Hara
 
What, exactly, is a biotic interactions?
What, exactly, is a biotic interactions?What, exactly, is a biotic interactions?
What, exactly, is a biotic interactions?Bob O'Hara
 
BES/SfE talk 2014
BES/SfE talk 2014BES/SfE talk 2014
BES/SfE talk 2014Bob O'Hara
 
Combining Data in Species Distribution Models
Combining Data in Species Distribution ModelsCombining Data in Species Distribution Models
Combining Data in Species Distribution ModelsBob O'Hara
 
Isec2012 o hara
Isec2012 o haraIsec2012 o hara
Isec2012 o haraBob O'Hara
 
Interaction networks
Interaction networksInteraction networks
Interaction networksBob O'Hara
 
SDM Observer Models
SDM Observer ModelsSDM Observer Models
SDM Observer ModelsBob O'Hara
 
Multispecies Distribution Models
Multispecies Distribution ModelsMultispecies Distribution Models
Multispecies Distribution ModelsBob O'Hara
 

More from Bob O'Hara (18)

Integrated modelling Cape Town
Integrated modelling Cape TownIntegrated modelling Cape Town
Integrated modelling Cape Town
 
What are we? Statistical Ecologists or Ecological Statisticians?
What are we?  Statistical Ecologists or Ecological Statisticians?What are we?  Statistical Ecologists or Ecological Statisticians?
What are we? Statistical Ecologists or Ecological Statisticians?
 
Trying to clean up the mess: Bayes, Frequentism, NHST, Parameter estimation e...
Trying to clean up the mess: Bayes, Frequentism, NHST, Parameter estimation e...Trying to clean up the mess: Bayes, Frequentism, NHST, Parameter estimation e...
Trying to clean up the mess: Bayes, Frequentism, NHST, Parameter estimation e...
 
What, exactly, is a biotic interactions?
What, exactly, is a biotic interactions?What, exactly, is a biotic interactions?
What, exactly, is a biotic interactions?
 
Discrete talk
Discrete talkDiscrete talk
Discrete talk
 
BES/SfE talk 2014
BES/SfE talk 2014BES/SfE talk 2014
BES/SfE talk 2014
 
Gf o2014talk
Gf o2014talkGf o2014talk
Gf o2014talk
 
Combining Data in Species Distribution Models
Combining Data in Species Distribution ModelsCombining Data in Species Distribution Models
Combining Data in Species Distribution Models
 
Isec2012 o hara
Isec2012 o haraIsec2012 o hara
Isec2012 o hara
 
Interaction networks
Interaction networksInteraction networks
Interaction networks
 
Meta analyses
Meta analysesMeta analyses
Meta analyses
 
Blogging
BloggingBlogging
Blogging
 
Lammi2011
Lammi2011Lammi2011
Lammi2011
 
SDM Observer Models
SDM Observer ModelsSDM Observer Models
SDM Observer Models
 
Multispecies Distribution Models
Multispecies Distribution ModelsMultispecies Distribution Models
Multispecies Distribution Models
 
Populations
PopulationsPopulations
Populations
 
Glued Ecology
Glued EcologyGlued Ecology
Glued Ecology
 
Web20
Web20Web20
Web20
 

Recently uploaded

CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):comworks
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxLoriGlavin3
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 3652toLead Limited
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brandgvaughan
 
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfHyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfPrecisely
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenHervé Boutemy
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyAlfredo García Lavilla
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubKalema Edgar
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clashcharlottematthew16
 
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek SchlawackFwdays
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr BaganFwdays
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...Fwdays
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfAddepto
 
Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Manik S Magar
 
Search Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdfSearch Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdfRankYa
 
Story boards and shot lists for my a level piece
Story boards and shot lists for my a level pieceStory boards and shot lists for my a level piece
Story boards and shot lists for my a level piececharlottematthew16
 
TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024Lonnie McRorey
 
What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024Stephanie Beckett
 

Recently uploaded (20)

DMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special EditionDMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special Edition
 
CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brand
 
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfHyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache Maven
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easy
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding Club
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clash
 
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdf
 
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptxE-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
 
Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!Anypoint Exchange: It’s Not Just a Repo!
Anypoint Exchange: It’s Not Just a Repo!
 
Search Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdfSearch Engine Optimization SEO PDF for 2024.pdf
Search Engine Optimization SEO PDF for 2024.pdf
 
Story boards and shot lists for my a level piece
Story boards and shot lists for my a level pieceStory boards and shot lists for my a level piece
Story boards and shot lists for my a level piece
 
TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024
 
What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024What's New in Teams Calling, Meetings and Devices March 2024
What's New in Teams Calling, Meetings and Devices March 2024
 

Bayesian Variable Selection Using Priors