We introduce a set of transformations on the set of all probability distributions over a finite state space, and show that these transformations are the only ones that preserve certain elementary probabilistic relationships. This result provides a new perspective on a variety of probabilistic inference problems in which invariance considerations play a role. Two particular applications we consider in this paper are the development of an equivariance-based approach to the problem of measure selection, and a new justification for Haldane's prior as the distribution that encodes prior ignorance about the parameter of a multinomial distribution
This paper addresses the task of eliciting an informative prior distribution for multinomial models....
The Jeffreys noninformative prior distribution for a single unknown parameter is the distribution co...
We study various axioms of discrete probabilistic choice, measuring how restrictive they are, both a...
We introduce a set of transformations on the set of all probability distributions over a finite stat...
AbstractWe introduce a set of transformations on the set of all probability distributions over a fin...
Udgivelsesdato: MARWe introduce a set of transformations on the set of all probability distributions...
We introduce a set of transformations on the set of all probability distributions over a finite stat...
In a given problem, the Bayesian statistical paradigm requires the specification of a prior distribu...
e case of location and scale parameters, rate constants, and in Bernoulli trials with unknown probab...
The problem of finding a non-informative prior distribution for a parameter is approached using the ...
The selection of prior distributions is a problem that has been heavily discussed since Bayes and Pr...
If p is an unknown probability parameter, prior ignorance of its value is appropriately expressed by...
We take another look at the general problem of selecting a preferred probability measure among those...
The definition and investigation of general classes of non-parametric priors has recently been an ac...
This paper considers a new class \Gamma specified under uncertainty on the relative weights of some ...
This paper addresses the task of eliciting an informative prior distribution for multinomial models....
The Jeffreys noninformative prior distribution for a single unknown parameter is the distribution co...
We study various axioms of discrete probabilistic choice, measuring how restrictive they are, both a...
We introduce a set of transformations on the set of all probability distributions over a finite stat...
AbstractWe introduce a set of transformations on the set of all probability distributions over a fin...
Udgivelsesdato: MARWe introduce a set of transformations on the set of all probability distributions...
We introduce a set of transformations on the set of all probability distributions over a finite stat...
In a given problem, the Bayesian statistical paradigm requires the specification of a prior distribu...
e case of location and scale parameters, rate constants, and in Bernoulli trials with unknown probab...
The problem of finding a non-informative prior distribution for a parameter is approached using the ...
The selection of prior distributions is a problem that has been heavily discussed since Bayes and Pr...
If p is an unknown probability parameter, prior ignorance of its value is appropriately expressed by...
We take another look at the general problem of selecting a preferred probability measure among those...
The definition and investigation of general classes of non-parametric priors has recently been an ac...
This paper considers a new class \Gamma specified under uncertainty on the relative weights of some ...
This paper addresses the task of eliciting an informative prior distribution for multinomial models....
The Jeffreys noninformative prior distribution for a single unknown parameter is the distribution co...
We study various axioms of discrete probabilistic choice, measuring how restrictive they are, both a...