Forecast Accuracy Measures for Exception Reporting Using Receiver Operating Characteristic Curves
journal contribution
posted on 2008-07-20, 00:00authored byWilpen Gorr
This paper identifies forecasts of exceptions in product or service demand (i.e., large changes or extreme
values) as a special need in forecasting, requiring new forecast accuracy measures based on the tails of
sampled forecast error distributions. For this purpose, the paper introduces application of the receiver
operating characteristic (ROC) framework, which has been used to assess exceptional behavior or cases in
many fields. The “exception principle” of management reporting provides the corresponding forecast
requirements. Seasonality estimates in univariate forecast models and leading independent variables in
multivariate forecast models are among the approaches to forecasting exceptions. In a case study on
serious violent crime in Pittsburgh, Pennsylvania across small sub-areas of the city, the simplest, nonnaïve
univariate forecast method is best for forecasting ordinary conditions, as found in previous research
using conventional forecast accuracy measures, but the most complex multivariate model is best for
forecasting exceptional conditions, using ROC forecast accuracy measures.