We develop a new outlook on the use of experts’ probabilities for inference, distinguishing the information content available to the experts from their probability assertions based on that information. Considered as functions of the data, the experts’ assessment functions provide statistics relevant to the event of interest. This allows us to specify a flexible combining function that represents a posterior probability of interest conditioned on all the information available to any of the experts; but it is computed as a function of their probability assertions. We work here in the restricted case of two experts, but the results areextendible in a variety of ways. Their probability assertions are shown to be almost sufficient for the direct...
In this chapter we discuss the process of eliciting an expert’s probability distribution: ex-tractin...
In this chapter, we consider the problem of the elicitation and specification of an uncertainty dist...
The elicitation of uncertainty is a topic of interest in a range of disciplines. The conversion of e...
We develop a new outlook on the use of experts ’ probabilities for inference, distinguish-ing the in...
We develop a new outlook on the use of experts' probabilities for inference, distinguishing the info...
We resolve a useful formulation of the question how a statistician can coherently incorporate the in...
Expert opinion and judgment enter into the practice of statistical inference and decision-making in ...
A key task in the elicitation of expert knowledge is to construct a distribution from the finite, an...
Expert systems often employ a weight on rules to capture conditional probabilities. For example, in ...
Our methodology is based on the premise that expertise does not reside in the stochastic characteris...
A supra-Bayesian (SB) wants to combine the information from a group of k experts to produce her dist...
An introduction to elicitation of experts' probabilities, which illustrates common problems with rea...
An overview of key issues associated with the elicitation of a prior probability distribution is pro...
Information that is elicited from experts can be treated as `data', so can be analysed using a Bayes...
Summary. Randomness in scientific estimation is generally assumed to arise from unmea-sured or uncon...
In this chapter we discuss the process of eliciting an expert’s probability distribution: ex-tractin...
In this chapter, we consider the problem of the elicitation and specification of an uncertainty dist...
The elicitation of uncertainty is a topic of interest in a range of disciplines. The conversion of e...
We develop a new outlook on the use of experts ’ probabilities for inference, distinguish-ing the in...
We develop a new outlook on the use of experts' probabilities for inference, distinguishing the info...
We resolve a useful formulation of the question how a statistician can coherently incorporate the in...
Expert opinion and judgment enter into the practice of statistical inference and decision-making in ...
A key task in the elicitation of expert knowledge is to construct a distribution from the finite, an...
Expert systems often employ a weight on rules to capture conditional probabilities. For example, in ...
Our methodology is based on the premise that expertise does not reside in the stochastic characteris...
A supra-Bayesian (SB) wants to combine the information from a group of k experts to produce her dist...
An introduction to elicitation of experts' probabilities, which illustrates common problems with rea...
An overview of key issues associated with the elicitation of a prior probability distribution is pro...
Information that is elicited from experts can be treated as `data', so can be analysed using a Bayes...
Summary. Randomness in scientific estimation is generally assumed to arise from unmea-sured or uncon...
In this chapter we discuss the process of eliciting an expert’s probability distribution: ex-tractin...
In this chapter, we consider the problem of the elicitation and specification of an uncertainty dist...
The elicitation of uncertainty is a topic of interest in a range of disciplines. The conversion of e...