To install click the Add extension button. That's it.

The source code for the WIKI 2 extension is being checked by specialists of the Mozilla Foundation, Google, and Apple. You could also do it yourself at any point in time.

4,5
Kelly Slayton
Congratulations on this excellent venture… what a great idea!
Alexander Grigorievskiy
I use WIKI 2 every day and almost forgot how the original Wikipedia looks like.
Live Statistics
English Articles
Improved in 24 Hours
Added in 24 Hours
Languages
Recent
Show all languages
What we do. Every page goes through several hundred of perfecting techniques; in live mode. Quite the same Wikipedia. Just better.
.
Leo
Newton
Brights
Milds

Marginal likelihood

From Wikipedia, the free encyclopedia

A marginal likelihood is a likelihood function that has been integrated over the parameter space. In Bayesian statistics, it represents the probability of generating the observed sample for all possible values of the parameters; it can be understood as the probability of the model itself and is therefore often referred to as model evidence or simply evidence.

Due to the integration over the parameter space, the marginal likelihood does not directly depend upon the parameters. If the focus is not on model comparison, the marginal likelihood is simply the normalizing constant that ensures that the posterior is a proper probability. It is related to the partition function in statistical mechanics.[1]

YouTube Encyclopedic

  • 1/5
    Views:
    26 060
    3 855
    4 869
    47 874
    338 898
  • Introducing Bayes factors and marginal likelihoods
  • On the sensitivity of the marginal likelihood to prior choice
  • The problems with using simple Monte Carlo to determine the marginal likelihood
  • Marginal probability density function
  • Basic probability: Joint, marginal and conditional probability | Independence

Transcription

Concept

Given a set of independent identically distributed data points where according to some probability distribution parameterized by , where itself is a random variable described by a distribution, i.e. the marginal likelihood in general asks what the probability is, where has been marginalized out (integrated out):

The above definition is phrased in the context of Bayesian statistics in which case is called prior density and is the likelihood. The marginal likelihood quantifies the agreement between data and prior in a geometric sense made precise[how?] in de Carvalho et al. (2019). In classical (frequentist) statistics, the concept of marginal likelihood occurs instead in the context of a joint parameter , where is the actual parameter of interest, and is a non-interesting nuisance parameter. If there exists a probability distribution for [dubious ], it is often desirable to consider the likelihood function only in terms of , by marginalizing out :

Unfortunately, marginal likelihoods are generally difficult to compute. Exact solutions are known for a small class of distributions, particularly when the marginalized-out parameter is the conjugate prior of the distribution of the data. In other cases, some kind of numerical integration method is needed, either a general method such as Gaussian integration or a Monte Carlo method, or a method specialized to statistical problems such as the Laplace approximation, Gibbs/Metropolis sampling, or the EM algorithm.

It is also possible to apply the above considerations to a single random variable (data point) , rather than a set of observations. In a Bayesian context, this is equivalent to the prior predictive distribution of a data point.

Applications

Bayesian model comparison

In Bayesian model comparison, the marginalized variables are parameters for a particular type of model, and the remaining variable is the identity of the model itself. In this case, the marginalized likelihood is the probability of the data given the model type, not assuming any particular model parameters. Writing for the model parameters, the marginal likelihood for the model M is

It is in this context that the term model evidence is normally used. This quantity is important because the posterior odds ratio for a model M1 against another model M2 involves a ratio of marginal likelihoods, called the Bayes factor:

which can be stated schematically as

posterior odds = prior odds × Bayes factor

See also

References

  1. ^ Šmídl, Václav; Quinn, Anthony (2006). "Bayesian Theory". The Variational Bayes Method in Signal Processing. Springer. pp. 13–23. doi:10.1007/3-540-28820-1_2.

Further reading

This page was last edited on 5 March 2024, at 21:20
Basis of this page is in Wikipedia. Text is available under the CC BY-SA 3.0 Unported License. Non-text media are available under their specified licenses. Wikipedia® is a registered trademark of the Wikimedia Foundation, Inc. WIKI 2 is an independent company and has no affiliation with Wikimedia Foundation.