Probability Forecasts Made at Multiple Lead Times
Abstract
Many probability forecasts are revised as new information becomes available, generating a time series of forecasts for a single event. Although methods for evaluating probability forecasts have been extensively studied, they apply to a single forecast per event. This paper is the first to evaluate probability forecasts that are made—and therefore revised—at many lead times for a single event. I postulate a norm for multi-period probability-forecasting systems and derive properties that should hold regardless of the forecasting process. I use these properties to develop methods for evaluating a forecasting system based on a sample. I apply these methods to the National Hurricane Center’s wind-speed probability forecasts and to statistical election forecasts, finding evidence that both can be improved using the current set of predictors.
This paper was accepted by Manel Baucells, decision analysis.
This article appears in INFORMS Analytics Collections Vol. 3: Elections: Analytics and Beyond, 2nd Edition.
Visit this collection for free access to more articles showcasing how advanced analytics are used during elections.

