Title :
Modeling and measuring the effects of vagueness in decision models
Author_Institution :
Dept. of Eng.-Econ. Syst., Stanford Univ., CA
fDate :
5/1/1996 12:00:00 AM
Abstract :
Because subjective probability assessments do not represent measurements of empirical quantities, they often exhibit vagueness, or ambiguity. We adopt a standard approach to modeling vagueness as a second-order probability (SOP) on a first-order probability. We define the expected value of including vagueness (EVIV) as the change in expected value due to explicit probabilistic representation of vagueness. We show that, under general conditions, the EVIV is always zero, regardless of the SOP or the loss or utility function. This shows that representing higher-order uncertainty as SOP never changes the output of a decision model. We analyze the value of reducing vagueness, and we provide a framework for measuring the expected value of reducing vagueness (EVRV) on a probability assessment using equivalent sample size and relative information multiple (RIM). We use influence diagrams to represent the flow of potential but unobserved evidence from a vagueness-reducing activity. We demonstrate our results for a simple problem implemented in Demos, a decision modeling software environment
Keywords :
decision theory; statistical analysis; uncertainty handling; Demos; ambiguity; decision models; equivalent sample size; expected value; first-order probability; influence diagrams; potential flow; relative information multiple; second-order probability; subjective probability assessments; vagueness; Bridges; Decision theory; Encoding; Information analysis; Probability; Psychology; Size measurement; Statistical analysis; Statistical distributions; Uncertainty;
Journal_Title :
Systems, Man and Cybernetics, Part A: Systems and Humans, IEEE Transactions on
DOI :
10.1109/3468.487957