Bayes factors can be considered as a Bayesian (Bayesian statistics) analogue of the likelihood-ratio test. They are often used in hypothesis testing and model selection. Along with p-values and e-values, they are considered measures of evidence against the null.

For parameters (perhaps representing different hypotheses or models) and given data , the Bayes factor is

where the second equality follows from Bayes’ theorem if we place prior over the parameter space.

Jeffreys (a Bayesian) gave a table summarizing how much evidence is provided by different values of . So did Kass and Raftery in 1995. This is pretty silly, as it depends on the application and what actions we’re considering on the basis of .