Abstract
We propose a simple and general model of experimentation in which reaching untried levels of a stock variable may, after a stochastic delay, lead to a catastrophe. Hence, at any point in time a catastrophe might well be under way, due to past experiments. We show how to measure this legacy of the past from prior beliefs and the chronicle of stock levels. We characterize the optimal policy as a function of the legacy and show that it leads to a new protocol for planning that applies to a general class of problems, encompassing the study of pandemics or climate change. Several original policy predictions follow, e.g., experimentation can stop but resume later.
Keywords
catastrophes, experimentation, delays;
JEL codes
- C61: Optimization Techniques • Programming Models • Dynamic Analysis
- D81: Criteria for Decision-Making under Risk and Uncertainty
- Q54: Climate • Natural Disasters • Global Warming
Reference
Matti Liski, and François Salanié, “Catastrophes, delays, and learning”, TSE Working Paper, n. 20-1148, September 2020, revised September 2023.
See also
Published in
TSE Working Paper, n. 20-1148, September 2020, revised September 2023