This paper considers point null hypothesis testing when the sampling distri
bution belongs to a particular class, defined in Gleser & Hwang (1987). We
discuss the drawbacks of frequentist and likelihood solutions and we show h
ow proper Bayesian analysis encounters relatively similar difficulties. We
explore the performance of several noninformative Bayesian approaches to te
sting, namely asymptotic approximations of Bayes factors and default Bayes
factors. We argue that in a default Bayesian analysis of Fieller's problem
the choice of the 'correct' prior distribution is crucial. Although standar
d and default Bayes factors based on Jeffreys' priors show, to a lesser ext
ent, pathologies similar to those arising in a classical framework, default
Bayes factors based on reference priors seem to correct the bias and provi
de sensible results in term of robustness and consistency.