Fast and accurate approximation to informed Bayes factors for focal parameters
We outline an approximation to informed Bayes factors for a focal parameter θ that requires only the maximum likelihood estimate θ̂ and its standard error. The approximation uses an estimated likelihood of θ and assumes that the posterior distribution for θ is unaffected by the choice of prior distribution for the nuisance parameters. The resulting Bayes factor for the null hypothesis ℋ_0: θ = θ_0 versus the alternative hypothesis ℋ_1: θ∼ g(θ) is then easily obtained using the Savage–Dickey density ratio. Three real-data examples highlight the speed and closeness of the approximation compared to bridge sampling and Laplace's method. The proposed approximation facilitates Bayesian reanalyses of standard frequentist results, encourages application of Bayesian tests with informed priors, and alleviates the computational challenges that often frustrate both Bayesian sensitivity analyses and Bayes factor design analyses. The approximation is shown to fail under small sample sizes and when the posterior distribution of the focal parameter is substantially influenced by the prior distributions on the nuisance parameters. The methodology may also be used to approximate the posterior distribution for θ under ℋ_1.
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