In this chapter, we consider the problem of the elicitation and specification of an uncertainty distribution based on expert judgements, which may be a subjective prior distribution in a Bayesian analysis, for a set of probabilities which are constrained to sum to one. A typical context for this is as a prior distribution for the probabilities in a multinomial model. The Dirichlet distribution has long been advocated as a natural way to represent the uncertainty distribution over the probabilities in this context. The relatively small number of parameters allows for specification based on relatively few elicited quantities but at the expense of a very restrictive structure. We detail recent advances in elicitation for the Dirichlet distribu...
A belief function can be viewed as a generalized probability function and the belief and plausibilit...
In decision and risk analysis problems, modelling uncertainty probabilistically provides key insight...
In decision and risk analysis problems, modelling uncertainty probabilistically provides key insight...
This paper addresses the task of eliciting an informative prior distribution for multinomial models....
In this paper, we propose novel methods of quantifying expert opinion about prior distributions for ...
A key task in the elicitation of expert knowledge is to construct a distribution from the finite, an...
AbstractThe imprecise Dirichlet model (IDM) was recently proposed by Walley as a model for objective...
This short note contains an explicit proof of the Dirichlet distribution being the conjugate prior t...
Alternatives to the Dirichlet prior for multinomial probabilities are explored. The Dirichlet prior ...
Most models of aggregating expert judgments assume that there is available some infor-mation charact...
This short note contains an explicit proof of the Dirichlet distribu-tion being the conjugate prior ...
In the context of Bayesian statistical analysis, elicitation is the process of formulating a prior d...
In practical elicitation problems, we very often wish to elicit from the expert her knowledge about ...
To incorporate expert opinion into a Bayesian analysis, it must be quantified as a prior distributio...
Our main aim in this thesis is to obtain an elicitation method for quantifying uncertainty about a p...
A belief function can be viewed as a generalized probability function and the belief and plausibilit...
In decision and risk analysis problems, modelling uncertainty probabilistically provides key insight...
In decision and risk analysis problems, modelling uncertainty probabilistically provides key insight...
This paper addresses the task of eliciting an informative prior distribution for multinomial models....
In this paper, we propose novel methods of quantifying expert opinion about prior distributions for ...
A key task in the elicitation of expert knowledge is to construct a distribution from the finite, an...
AbstractThe imprecise Dirichlet model (IDM) was recently proposed by Walley as a model for objective...
This short note contains an explicit proof of the Dirichlet distribution being the conjugate prior t...
Alternatives to the Dirichlet prior for multinomial probabilities are explored. The Dirichlet prior ...
Most models of aggregating expert judgments assume that there is available some infor-mation charact...
This short note contains an explicit proof of the Dirichlet distribu-tion being the conjugate prior ...
In the context of Bayesian statistical analysis, elicitation is the process of formulating a prior d...
In practical elicitation problems, we very often wish to elicit from the expert her knowledge about ...
To incorporate expert opinion into a Bayesian analysis, it must be quantified as a prior distributio...
Our main aim in this thesis is to obtain an elicitation method for quantifying uncertainty about a p...
A belief function can be viewed as a generalized probability function and the belief and plausibilit...
In decision and risk analysis problems, modelling uncertainty probabilistically provides key insight...
In decision and risk analysis problems, modelling uncertainty probabilistically provides key insight...