We propose a framework for general Bayesian inference. We argue that a valid update of a prior belief distribution to a posterior can be made for parameters which are connected to observations through a loss function rather than the traditional likelihood function, which is recovered as a special case. Modern application areas make it increasingly challenging for Bayesians to attempt to model the true data-generating mechanism. For instance, when the object of interest is low dimensional, such as a mean or median, it is cumbersome to have to achieve this via a complete model for the whole data distribution. More importantly, there are settings where the parameter of interest does not directly index a family of density functions and thus the...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
We introduce a tractable family of Bayesian generalization functions. The family extends the basic m...
Four main results are arrived at in this paper. (1) Closed convex sets of classical probability fun...
We propose a framework for general Bayesian inference. We argue that a valid update of a prior belie...
Bissiri et al. (2016) propose a framework for general Bayesian inference using loss functions which ...
International audienceThe General Bayes Theorem (GBT) as a generalization of Bayes theorem to the be...
This paper addresses the problem that Bayesian statistical inference cannot accommodate theory chang...
We provide a decision theoretic approach to the construction of a learning process in the presence o...
In Bayesian statistics probability distributions express beliefs. However, for many problems the bel...
The present article shows how Bayesians should shift beliefs among a family of models concerning the...
In a probability-based reasoning system, Bayes' theorem and its variations are often used to re...
Some of the information we receive comes to us in an explicitly conditional form. It is an open ques...
This paper reports our investigation on the problem of belief update in Bayesian networks (BN) using...
This paper uses a decision theoretic approach for updating a probability measure representing belief...
Quitting Certainties is an extremely ambitious treatise on Bayesian formal epistemology. The centrep...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
We introduce a tractable family of Bayesian generalization functions. The family extends the basic m...
Four main results are arrived at in this paper. (1) Closed convex sets of classical probability fun...
We propose a framework for general Bayesian inference. We argue that a valid update of a prior belie...
Bissiri et al. (2016) propose a framework for general Bayesian inference using loss functions which ...
International audienceThe General Bayes Theorem (GBT) as a generalization of Bayes theorem to the be...
This paper addresses the problem that Bayesian statistical inference cannot accommodate theory chang...
We provide a decision theoretic approach to the construction of a learning process in the presence o...
In Bayesian statistics probability distributions express beliefs. However, for many problems the bel...
The present article shows how Bayesians should shift beliefs among a family of models concerning the...
In a probability-based reasoning system, Bayes' theorem and its variations are often used to re...
Some of the information we receive comes to us in an explicitly conditional form. It is an open ques...
This paper reports our investigation on the problem of belief update in Bayesian networks (BN) using...
This paper uses a decision theoretic approach for updating a probability measure representing belief...
Quitting Certainties is an extremely ambitious treatise on Bayesian formal epistemology. The centrep...
Most research on rule-based inference under uncertainty has focused on the normative validity and ef...
We introduce a tractable family of Bayesian generalization functions. The family extends the basic m...
Four main results are arrived at in this paper. (1) Closed convex sets of classical probability fun...