We discuss precise assumptions entailing Bayesianism in the line of investigations started by Cox, and relate them to a recent critique by Halpern. We show that every finite model which cannot be rescaled to probability violates a natural and simple refinability principle. A new condition, separability, was found sufficient and necessary for rescalability of infinite models.We finally characterise the acceptable ways to handle uncertainty in infinite models based on Cox's assumptions. Certain closure properties must be assumed before all the axioms of ordered fields are satisfied. Once this is done, a proper plausibility model can be embedded in an ordered field containing the reals, namely either standard probability (field of reals) for a...
This talk proposes a logic for reasoning about (multi-agent) epistemic probability models, and for e...
In the paper [http://philsci-archive.pitt.edu/14136] a hierarchy of modal logics have been defined t...
This thesis presents a systematic study of the model theory of probability algebras, random variabl...
Some philosophers have claimed that it is meaningless or paradoxical to consider the probability of ...
This dissertation is a contribution to formal and computational philosophy. In ...
Although it is known that Bayesian estimators may fail to converge or may con-verge towards the wron...
It has been argued that an infinite regress of entailments cannot justify a proposition, q. For if i...
AbstractAt the foundations of probability theory lies a question that has been open since de Finetti...
Coherent reasoning under uncertainty can be represented in a very general manner by coherent sets of...
Relational Bayesian networks extend standard Bayesian networks by integrating some of the expressive...
A Bayesian model has two parts. The first part is a family of sampling distributions that could have...
AbstractThis paper presents an extension of the theory of finite random sets to infinite random sets...
Bovens and Hartmann present an “impossibility result ” against Bayesian Coherentism. This result put...
In this article we analyze the claim that a probabilistic interpretation of the infinite epistemic r...
International audienceThe authors have proposed in their previous works to view a set of default pie...
This talk proposes a logic for reasoning about (multi-agent) epistemic probability models, and for e...
In the paper [http://philsci-archive.pitt.edu/14136] a hierarchy of modal logics have been defined t...
This thesis presents a systematic study of the model theory of probability algebras, random variabl...
Some philosophers have claimed that it is meaningless or paradoxical to consider the probability of ...
This dissertation is a contribution to formal and computational philosophy. In ...
Although it is known that Bayesian estimators may fail to converge or may con-verge towards the wron...
It has been argued that an infinite regress of entailments cannot justify a proposition, q. For if i...
AbstractAt the foundations of probability theory lies a question that has been open since de Finetti...
Coherent reasoning under uncertainty can be represented in a very general manner by coherent sets of...
Relational Bayesian networks extend standard Bayesian networks by integrating some of the expressive...
A Bayesian model has two parts. The first part is a family of sampling distributions that could have...
AbstractThis paper presents an extension of the theory of finite random sets to infinite random sets...
Bovens and Hartmann present an “impossibility result ” against Bayesian Coherentism. This result put...
In this article we analyze the claim that a probabilistic interpretation of the infinite epistemic r...
International audienceThe authors have proposed in their previous works to view a set of default pie...
This talk proposes a logic for reasoning about (multi-agent) epistemic probability models, and for e...
In the paper [http://philsci-archive.pitt.edu/14136] a hierarchy of modal logics have been defined t...
This thesis presents a systematic study of the model theory of probability algebras, random variabl...