Article ID: | iaor200944730 |
Country: | United States |
Volume: | 5 |
Issue: | 3 |
Start Page Number: | 140 |
End Page Number: | 156 |
Publication Date: | Sep 2008 |
Journal: | Decision Analysis |
Authors: | Prange Michael, Bailey William J, Cout Benoit, Djikpesse Hugues, Armstrong Margaret, Galli Alain, Wilkinson David |
Keywords: | information |
This paper estimates the value of information for highly uncertain projects whose decisions have long-term impacts. We present a mathematically consistent framework using decision trees, Bayesian updating, and Monte Carlo simulation to value future information today, even when that future information is imperfect. One drawback of Monte Carlo methods in multivariate cases is the large number of samples required, which may result in prohibitive run times when considerable computer time is required to obtain each sample, as it is in our example. A polynomial chaos approach suitable for black-box functions is used to reduce these computations to manageable proportions. To our knowledge, this is the first exposition of polynomial chaos in the valuation literature. In our example it provides a speed-up of more than two orders of magnitude.