Bayes factor
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The Bayes factor is a ratio of two competing statistical models represented by their
marginal likelihood 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 from a prior and is therefore often referred to as model evi ...
, and is used to quantify the support for one model over the other. The models in questions can have a common set of parameters, such as a
null hypothesis In scientific research, the null hypothesis (often denoted ''H''0) is the claim that no difference or relationship exists between two sets of data or variables being analyzed. The null hypothesis is that any experimentally observed difference is d ...
and an alternative, but this is not necessary; for instance, it could also be a non-linear model compared to its
linear approximation In mathematics, a linear approximation is an approximation of a general function using a linear function (more precisely, an affine function). They are widely used in the method of finite differences to produce first order methods for solving o ...
. The Bayes factor can be thought of as a Bayesian analog to the
likelihood-ratio test In statistics, the likelihood-ratio test assesses the goodness of fit of two competing statistical models based on the ratio of their likelihoods, specifically one found by maximization over the entire parameter space and another found after im ...
, but since it uses the (integrated) marginal likelihood instead of the maximized likelihood, both tests only coincide under simple hypotheses (e.g., two specific parameter values). Also, in contrast with null hypothesis significance testing, Bayes factors support evaluation of evidence ''in favor'' of a null hypothesis, rather than only allowing the null to be rejected or not rejected. Although conceptually simple, the computation of the Bayes factor can be challenging depending on the complexity of the model and the hypotheses. Since closed-form expressions of the marginal likelihood are generally not available, numerical approximations based on MCMC samples have been suggested. For certain special cases, simplified algebraic expressions can be derived; for instance, the Savage–Dickey density ratio in the case of a precise (equality constrained) hypothesis against an unrestricted alternative. Another approximation, derived by applying
Laplace's method In mathematics, Laplace's method, named after Pierre-Simon Laplace, is a technique used to approximate integrals of the form :\int_a^b e^ \, dx, where f(x) is a twice-differentiable function, ''M'' is a large number, and the endpoints ''a'' an ...
to the integrated likelihoods, is known as the Bayesian information criterion (BIC); in large data sets the Bayes factor will approach the BIC as the influence of the priors wanes. In small data sets, priors generally matter and must not be improper since the Bayes factor will be undefined if either of the two integrals in its ratio is not finite.


Definition

The Bayes factor is the ratio of two marginal likelihoods; that is, the likelihoods of two statistical models integrated over the
prior probabilities In Bayesian probability, Bayesian statistical inference, a prior probability distribution, often simply called the prior, of an uncertain quantity is the probability distribution that would express one's beliefs about this quantity before some e ...
of their parameters. The
posterior probability The posterior probability is a type of conditional probability that results from updating the prior probability with information summarized by the likelihood via an application of Bayes' rule. From an epistemological perspective, the posterior ...
\Pr(M, D) of a model ''M'' given data ''D'' is given by Bayes' theorem: :\Pr(M, D) = \frac. The key data-dependent term \Pr(D, M) represents the probability that some data are produced under the assumption of the model ''M''; evaluating it correctly is the key to Bayesian model comparison. Given a
model selection Model selection is the task of selecting a statistical model from a set of candidate models, given data. In the simplest cases, a pre-existing set of data is considered. However, the task can also involve the design of experiments such that the ...
problem in which one wishes to choose between two models on the basis of observed data ''D'', the plausibility of the two different models ''M''1 and ''M''2, parametrised by model parameter vectors \theta_1 and \theta_2 , is assessed by the Bayes factor ''K'' given by : K = \frac = \frac = \frac = \frac\frac. When the two models have equal prior probability, so that \Pr(M_1) = \Pr(M_2), the Bayes factor is equal to the ratio of the posterior probabilities of ''M''1 and ''M''2. If instead of the Bayes factor integral, the likelihood corresponding to the
maximum likelihood estimate In statistics, maximum likelihood estimation (MLE) is a method of estimating the parameters of an assumed probability distribution, given some observed data. This is achieved by maximizing a likelihood function so that, under the assumed statist ...
of the parameter for each statistical model is used, then the test becomes a classical
likelihood-ratio test In statistics, the likelihood-ratio test assesses the goodness of fit of two competing statistical models based on the ratio of their likelihoods, specifically one found by maximization over the entire parameter space and another found after im ...
. Unlike a likelihood-ratio test, this Bayesian model comparison does not depend on any single set of parameters, as it integrates over all parameters in each model (with respect to the respective priors). However, an advantage of the use of Bayes factors is that it automatically, and quite naturally, includes a penalty for including too much model structure. It thus guards against overfitting. For models where an explicit version of the likelihood is not available or too costly to evaluate numerically,
approximate Bayesian computation Approximate Bayesian computation (ABC) constitutes a class of computational methods rooted in Bayesian statistics that can be used to estimate the posterior distributions of model parameters. In all model-based statistical inference, the like ...
can be used for model selection in a Bayesian framework, with the caveat that approximate-Bayesian estimates of Bayes factors are often biased. Other approaches are: * to treat model comparison as a
decision problem In computability theory and computational complexity theory, a decision problem is a computational problem that can be posed as a yes–no question of the input values. An example of a decision problem is deciding by means of an algorithm wheth ...
, computing the expected value or cost of each model choice; * to use
minimum message length Minimum message length (MML) is a Bayesian information-theoretic method for statistical model comparison and selection. It provides a formal information theory restatement of Occam's Razor: even when models are equal in their measure of fit-accurac ...
(MML). * to use
minimum description length Minimum Description Length (MDL) is a model selection principle where the shortest description of the data is the best model. MDL methods learn through a data compression perspective and are sometimes described as mathematical applications of Occa ...
(MDL).


Interpretation

A value of ''K'' > 1 means that ''M''1 is more strongly supported by the data under consideration than ''M''2. Note that classical
hypothesis testing A statistical hypothesis test is a method of statistical inference used to decide whether the data at hand sufficiently support a particular hypothesis. Hypothesis testing allows us to make probabilistic statements about population parameters. ...
gives one hypothesis (or model) preferred status (the 'null hypothesis'), and only considers evidence ''against'' it.
Harold Jeffreys Sir Harold Jeffreys, FRS (22 April 1891 – 18 March 1989) was a British mathematician, statistician, geophysicist, and astronomer. His book, ''Theory of Probability'', which was first published in 1939, played an important role in the revival ...
gave a scale for interpretation of ''K'': style="text-align: center; margin-left: auto; margin-right: auto; border: none;" ! ''K'' !! dHart !! bits !! Strength of evidence , - , < 100 , , < 0 , , < 0 , , Negative (supports ''M''2) , - , 100 to 101/2 , , 0 to 5 , , 0 to 1.6 , , Barely worth mentioning , - , 101/2 to 101 , , 5 to 10 , , 1.6 to 3.3 , , Substantial , - , 101 to 103/2 , , 10 to 15 , , 3.3 to 5.0 , , Strong , - , 103/2 to 102 , , 15 to 20 , , 5.0 to 6.6 , , Very strong , - , > 102 , , > 20 , , > 6.6 , , Decisive , - The second column gives the corresponding weights of evidence in decihartleys (also known as
deciban The hartley (symbol Hart), also called a ban, or a dit (short for decimal digit), is a logarithmic unit that measures information or entropy, based on base 10 logarithms and powers of 10. One hartley is the information content of an event if th ...
s);
bit The bit is the most basic unit of information in computing and digital communications. The name is a portmanteau of binary digit. The bit represents a logical state with one of two possible values. These values are most commonly represente ...
s are added in the third column for clarity. According to I. J. Good a change in a weight of evidence of 1 deciban or 1/3 of a bit (i.e. a change in an odds ratio from evens to about 5:4) is about as finely as
human Humans (''Homo sapiens'') are the most abundant and widespread species of primate, characterized by bipedalism and exceptional cognitive skills due to a large and complex brain. This has enabled the development of advanced tools, cultu ...
s can reasonably perceive their degree of belief in a hypothesis in everyday use. An alternative table, widely cited, is provided by Kass and Raftery (1995): style="text-align: center; margin-left: auto; margin-right: auto; border: none;" ! log10 ''K'' !! ''K'' !! Strength of evidence , - , 0 to 1/2 , , 1 to 3.2 , , Not worth more than a bare mention , - , 1/2 to 1 , , 3.2 to 10 , , Substantial , - , 1 to 2 , , 10 to 100 , , Strong , - , > 2 , , > 100 , , Decisive , -


Example

Suppose we have a random variable that produces either a success or a failure. We want to compare a model ''M''1 where the probability of success is ''q'' = , and another model ''M''2 where ''q'' is unknown and we take a
prior distribution In Bayesian statistical inference, a prior probability distribution, often simply called the prior, of an uncertain quantity is the probability distribution that would express one's beliefs about this quantity before some evidence is taken int ...
for ''q'' that is
uniform A uniform is a variety of clothing worn by members of an organization while participating in that organization's activity. Modern uniforms are most often worn by armed forces and paramilitary organizations such as police, emergency services, ...
on ,1 We take a sample of 200, and find 115 successes and 85 failures. The likelihood can be calculated according to the binomial distribution: :. Thus we have for ''M''1 :P(X=115 \mid M_1)=\left(\right)^ \approx 0.006 whereas for ''M''2 we have :P(X=115 \mid M_2) = \int_^1q^(1-q)^dq = \approx 0.005 The ratio is then 1.2, which is "barely worth mentioning" even if it points very slightly towards ''M''1. A
frequentist Frequentist inference is a type of statistical inference based in frequentist probability, which treats “probability” in equivalent terms to “frequency” and draws conclusions from sample-data by means of emphasizing the frequency or pro ...
hypothesis test A statistical hypothesis test is a method of statistical inference used to decide whether the data at hand sufficiently support a particular hypothesis. Hypothesis testing allows us to make probabilistic statements about population parameters. ...
of ''M''1 (here considered as a
null hypothesis In scientific research, the null hypothesis (often denoted ''H''0) is the claim that no difference or relationship exists between two sets of data or variables being analyzed. The null hypothesis is that any experimentally observed difference is d ...
) would have produced a very different result. Such a test says that ''M''1 should be rejected at the 5% significance level, since the probability of getting 115 or more successes from a sample of 200 if ''q'' = is 0.02, and as a two-tailed test of getting a figure as extreme as or more extreme than 115 is 0.04. Note that 115 is more than two standard deviations away from 100. Thus, whereas a
frequentist Frequentist inference is a type of statistical inference based in frequentist probability, which treats “probability” in equivalent terms to “frequency” and draws conclusions from sample-data by means of emphasizing the frequency or pro ...
hypothesis test A statistical hypothesis test is a method of statistical inference used to decide whether the data at hand sufficiently support a particular hypothesis. Hypothesis testing allows us to make probabilistic statements about population parameters. ...
would yield significant results at the 5% significance level, the Bayes factor hardly considers this to be an extreme result. Note, however, that a non-uniform prior (for example one that reflects the fact that you expect the number of success and failures to be of the same order of magnitude) could result in a Bayes factor that is more in agreement with the frequentist hypothesis test. A classical
likelihood-ratio test In statistics, the likelihood-ratio test assesses the goodness of fit of two competing statistical models based on the ratio of their likelihoods, specifically one found by maximization over the entire parameter space and another found after im ...
would have found the
maximum likelihood In statistics, maximum likelihood estimation (MLE) is a method of estimating the parameters of an assumed probability distribution, given some observed data. This is achieved by maximizing a likelihood function so that, under the assumed stat ...
estimate for ''q'', namely \frac = 0.575, whence :\textstyle P(X=115 \mid M_2) = \approx 0.06 (rather than averaging over all possible ''q''). That gives a likelihood ratio of 0.1 and points towards ''M''2. ''M''2 is a more complex model than ''M''1 because it has a free parameter which allows it to model the data more closely. The ability of Bayes factors to take this into account is a reason why Bayesian inference has been put forward as a theoretical justification for and generalisation of Occam's razor, reducing
Type I error In statistical hypothesis testing, a type I error is the mistaken rejection of an actually true null hypothesis (also known as a "false positive" finding or conclusion; example: "an innocent person is convicted"), while a type II error is the fa ...
s.Sharpening Ockham's Razor On a Bayesian Strop
/ref> On the other hand, the modern method of
relative likelihood In statistics, suppose that we have been given some data, and we are selecting a statistical model for that data. The relative likelihood compares the relative plausibilities of different candidate models or of different values of a parameter of ...
takes into account the number of free parameters in the models, unlike the classical likelihood ratio. The relative likelihood method could be applied as follows. Model ''M''1 has 0 parameters, and so its
Akaike information criterion The Akaike information criterion (AIC) is an estimator of prediction error and thereby relative quality of statistical models for a given set of data. Given a collection of models for the data, AIC estimates the quality of each model, relative to e ...
(AIC) value is 2\cdot 0 - 2\cdot \ln(0.005956)\approx 10.2467. Model ''M''2 has 1 parameter, and so its AIC value is 2\cdot 1 - 2\cdot\ln(0.056991)\approx 7.7297. Hence ''M''1 is about \exp\left(\frac\right)\approx 0.284 times as probable as ''M''2 to minimize the information loss. Thus ''M''2 is slightly preferred, but ''M''1 cannot be excluded.


See also

*
Akaike information criterion The Akaike information criterion (AIC) is an estimator of prediction error and thereby relative quality of statistical models for a given set of data. Given a collection of models for the data, AIC estimates the quality of each model, relative to e ...
*
Approximate Bayesian computation Approximate Bayesian computation (ABC) constitutes a class of computational methods rooted in Bayesian statistics that can be used to estimate the posterior distributions of model parameters. In all model-based statistical inference, the like ...
* Bayesian information criterion * Deviance information criterion *
Lindley's paradox Lindley's paradox is a counterintuitive situation in statistics in which the Bayesian and frequentist approaches to a hypothesis testing problem give different results for certain choices of the prior distribution. The problem of the disagreement ...
*
Minimum message length Minimum message length (MML) is a Bayesian information-theoretic method for statistical model comparison and selection. It provides a formal information theory restatement of Occam's Razor: even when models are equal in their measure of fit-accurac ...
*
Model selection Model selection is the task of selecting a statistical model from a set of candidate models, given data. In the simplest cases, a pre-existing set of data is considered. However, the task can also involve the design of experiments such that the ...
; Statistical ratios *
Odds ratio An odds ratio (OR) is a statistic that quantifies the strength of the association between two events, A and B. The odds ratio is defined as the ratio of the odds of A in the presence of B and the odds of A in the absence of B, or equivalently (due ...
* Relative risk


References


Further reading

* * *Dienes, Z. (2019). How do I know what my theory predicts? ''Advances in Methods and Practices in Psychological Science'' * * * Jaynes, E. T. (1994),
Probability Theory: the logic of science
', chapter 24. * * *


External links


BayesFactor
—an R package for computing Bayes factors in common research designs

— Online calculator for informed Bayes factors
Bayes Factor Calculators
—web-based version of much of the BayesFactor package {{DEFAULTSORT:Bayes Factor
Factor Factor, a Latin word meaning "who/which acts", may refer to: Commerce * Factor (agent), a person who acts for, notably a mercantile and colonial agent * Factor (Scotland), a person or firm managing a Scottish estate * Factors of production, suc ...
Model selection Statistical ratios