Interval- and set-valued decisions are an essential part of statistical inference. Despite this, the justification behind them is often unclear, leading in practice to a great deal of confusion about exactly what is being presented. In this paper we review and attempt to unify several competing methods of interval-construction, within a formal decision-theoretic framework. The result is a new emphasis on interval-estimation as a distinct goal, and not as an afterthought to point estimation. We also see that representing intervals as trade-offs between measures of precision and bias unifies many existing approaches -- as well as suggesting interpretable criteria to calibrate this trade-off. The novel statistical arguments produced allow many...
This paper focuses on a situation where the decision-maker prefers to make a point-decision when the...
While very useful in the realm of decision theory, it is widely understood that when applied to inte...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
This essay tries to expound a conception of interval measures that pennits a particular approach to ...
In many real-life situations, we need to make decisions in situations when we do not have full infor...
AbstractIn real-life decision analysis, the probabilities and utilities of consequences are in gener...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
There are three main ways in which judgmental predictions are expressed: point forecasts; interval f...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
Experts\u27 estimates are approximate. To make decisions based on these estimates, we need to know h...
In multicriteria decision-making methods, such as the Analytic Hierarchy Process (AHP), single valu...
This paper focuses on a situation where the decision-maker prefers to make a point-decision when the...
While very useful in the realm of decision theory, it is widely understood that when applied to inte...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
This essay tries to expound a conception of interval measures that pennits a particular approach to ...
In many real-life situations, we need to make decisions in situations when we do not have full infor...
AbstractIn real-life decision analysis, the probabilities and utilities of consequences are in gener...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
There are three main ways in which judgmental predictions are expressed: point forecasts; interval f...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...
Experts\u27 estimates are approximate. To make decisions based on these estimates, we need to know h...
In multicriteria decision-making methods, such as the Analytic Hierarchy Process (AHP), single valu...
This paper focuses on a situation where the decision-maker prefers to make a point-decision when the...
While very useful in the realm of decision theory, it is widely understood that when applied to inte...
Interval estimates – estimates of parameters that include an allowance for sampling uncertainty – ha...