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. 2014 Dec 19;50(12):9484–9513. doi: 10.1002/2014WR016062

Table 4.

Overview of Methods to Evaluate Bayesian Model Evidence

Evaluation method Abbreviation Eq. Underlying Assumptions Comp. Effort Performance in Linear Test Case Performance in Non-linear Test Cases Recommended Use
Analytical solution
Theoretical distribution of BME - 9 Gaussian parameter prior and likelihood, linear model Negligible Exact Not available Whenever available
Normalizing constant of parameter posterior - 6 conjugate prior, linear model Negligible Exact Not available Whenever available
Mathematical approximations
Kashyap's information criterion, evaluated at MLE KIC@MLE 14 Gaussian parameter posterior, negligible influence of prior Medium Relatively accurate (assumptions mildly violated) Inaccurate KIC@MAP to be preferred
Kashyap's information criterion, evaluated at MAP KIC@MAP 15 Gaussian parameter posterior Medium Exact (assumptions fulfilled) Inaccurate If assumptions fulfilled/ numerical techniques too expensive
Bayesian information criterion BIC 16 Gaussian parameter posterior, negligible influence of prior Low Potentially very inaccurate (depending on actual data set), ignores prior Not recommended for BMA
Akaike information criterion AIC 18 (not derived as approximation to BME) Low Potentially very inaccurate (depending on actual data set), ignores prior Not recommended for BMA
corrected Akaike information criterion AlCc 19 (not derived as approximation to BME) Low Potentially very inaccurate (depending on actual data set), ignores prior Not recommended for BMA
Numerical evaluation techniques
Simple Monte Carlo integration MC 23 None Extreme Slow convergence, but bias-free Whenever computationally feasible
MC integration with importance sampling MC IS 24 None High Faster convergence, but (potentially) biased As a more efficient alternative to MC
MC integration with posterior sampling MC PS 25 None High Even faster convergence, but even more biased (due to harmonic mean approach) Not recommended for BMA
Nested sampling NS 26 None High Slow convergence for BME (due to uncertainty in prior mass shrinkage), but bias-free Promising alternative to MC, more research needed