Bayesian inference is limited in scope because it cannot be applied in idealized contexts where none of the hypotheses under consideration is true and because it is committed to always using the likelihood as a measure of evidential favoring, even when that is inappropriate. The purpose of this paper is to study inductive inference in a very general setting where finding the truth is not necessarily the goal and where the measure of evidential favoring is not necessarily the likelihood. I use an accuracy argument to argue for probabilism and I develop a new kind of argument to argue for two general updating rules, both of which are reasonable in different contexts. One of the updating rules has standard Bayesian updating, Bissiri et al.'s (...
Despite a shared commitment to using Bayes ’ theorem as the basis for inductive inference, Bayesian ...
Scientists and Bayesian statisticians often study hypotheses that they know to be false. This create...
Unquantified uncertainty about probabilistic model assumptions tends to inflate claims of statistica...
Bayesian inference is limited in scope because it cannot be applied in idealized contexts where none...
Reasoning from inconclusive evidence, or ‘induction’, is central to science and any applications we ...
It has recently been argued that a non-Bayesian probabilistic version of inference to the best expla...
It has recently been argued that a non-Bayesian probabilistic version of inference to the best expla...
Bayesian orthodoxy posits a tight relationship between con-ditional probability and updating. Namely...
Some of the most interesting recent work in formal epistemology has focused on developing accuracy-b...
Below we will consider the relations between inductive logic and statistics. More specifically, we w...
Bayesian epistemology postulates a probabilistic analysis of many sorts of ordinary and scientific r...
Unquantified uncertainty about probabilistic model assumptions tends to inflate claims of statistica...
While Bayesian analysis has enjoyed notable success with many particular problems of inductive infer...
Bayesian epistemology provides formal norms that govern our degrees of belief both at a time and ove...
A substantial school in the philosophy of science identifies Bayesian inference with inductive infer...
Despite a shared commitment to using Bayes ’ theorem as the basis for inductive inference, Bayesian ...
Scientists and Bayesian statisticians often study hypotheses that they know to be false. This create...
Unquantified uncertainty about probabilistic model assumptions tends to inflate claims of statistica...
Bayesian inference is limited in scope because it cannot be applied in idealized contexts where none...
Reasoning from inconclusive evidence, or ‘induction’, is central to science and any applications we ...
It has recently been argued that a non-Bayesian probabilistic version of inference to the best expla...
It has recently been argued that a non-Bayesian probabilistic version of inference to the best expla...
Bayesian orthodoxy posits a tight relationship between con-ditional probability and updating. Namely...
Some of the most interesting recent work in formal epistemology has focused on developing accuracy-b...
Below we will consider the relations between inductive logic and statistics. More specifically, we w...
Bayesian epistemology postulates a probabilistic analysis of many sorts of ordinary and scientific r...
Unquantified uncertainty about probabilistic model assumptions tends to inflate claims of statistica...
While Bayesian analysis has enjoyed notable success with many particular problems of inductive infer...
Bayesian epistemology provides formal norms that govern our degrees of belief both at a time and ove...
A substantial school in the philosophy of science identifies Bayesian inference with inductive infer...
Despite a shared commitment to using Bayes ’ theorem as the basis for inductive inference, Bayesian ...
Scientists and Bayesian statisticians often study hypotheses that they know to be false. This create...
Unquantified uncertainty about probabilistic model assumptions tends to inflate claims of statistica...