Cabras, StefanoRacugno, WalterVentura, Laura2022-06-222022-06-222015-10-13Cabras, S., Racugno, W., & Ventura, L. (2014). Higher order asymptotic computation of Bayesian significance tests for precise null hypotheses in the presence of nuisance parameters. Journal of Statistical Computation and Simulation, 85 (15), pp. 2989-3001.0094-9655https://hdl.handle.net/10016/35235The full Bayesian significance test (FBST) was introduced by Pereira and Stern for measuring the evidence of a precise none hypothesis. The FBST requires both numerical optimization and multidimensional integration, whose computational cost may be heavy when testing a precise none hypothesis on a scalar parameter of interest in the presence of a large number of nuisance parameters. In this paper we propose a higher order approximation of the measure of evidence for the FBST, based on tail area expansions of the marginal posterior of the parameter of interest. When in particular focus is on matching priors, further results are highlighted. Numerical illustrations are discussed.eng© 2014 Taylor & FrancisAtribución-NoComercial 3.0 EspañaEvidenceHighest probability density setHOTA algorithmMatching priorsPereira and Stern procedureProfile and modified profile likelihood rootTail area approximationHigher order asymptotic computation of Bayesian significance tests for precise none hypotheses in the presence of nuisance parametersresearch articleEstadísticahttps://doi.org/10.1080/00949655.2014.947288open access2989153001JOURNAL OF STATISTICAL COMPUTATION AND SIMULATION85AR/0000017122