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Computing Bayes factors to measure evidence from experiments: An extension of the BIC approximation
2018
Biometrical Letters
Bayesian inference affords scientists powerful tools for testing hypotheses. One of these tools is the Bayes factor, which indexes the extent to which support for one hypothesis over another is updated after seeing the data. Part of the hesitance to adopt this approach may stem from an unfamiliarity with the computational tools necessary for computing Bayes factors. Previous work has shown that closed-form approximations of Bayes factors are relatively easy to obtain for between-groups methods,
doi:10.2478/bile-2018-0003
fatcat:hiln5fljkneh5bua34qvi4gqau