A Widely Applicable Bayesian Information Criterion
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Abstract
A statistical model or a learning machine is called regular if the map taking a parameter to a probability distribution is one-to-one and if its Fisher information matrix is always positive definite. If otherwise, it is called singular. In regular statistical models, the Bayes free energy, which is defined by the minus logarithm of Bayes marginal likelihood, can be asymptotically approximated by the Schwarz Bayes information criterion (BIC), whereas in singular models such approximation does not hold. Recently, it was proved that the Bayes free energy of a singular model is asymptotically given by a generalized formula using a birational invariant, the real log canonical threshold (RLCT), instead of half the…
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Topics
Keywords
- Mathematics
- Fisher information
- Bayesian information criterion
- Bayes' theorem
- Applied mathematics
- Bayes factor
- Logarithm
- Marginal likelihood
UN Sustainable Development Goals
- Affordable and clean energy
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