Article ID: | iaor1988395 |
Country: | United Kingdom |
Volume: | 7 |
Issue: | 4 |
Start Page Number: | 259 |
End Page Number: | 272 |
Publication Date: | Oct 1988 |
Journal: | International Journal of Forecasting |
Authors: | Wiorkowski J.J. |
This paper focuses on the general problem of forecasting the maximum value of a time series which by the nature of the data must approach an asymptotic value. Examples of such series include the growth of organisms, the concentration of a chemical reagent durint a reaction occurring over time or the amount of a fossil fuel resource which has been discovered or produced as a function of time. The approach taken below differs from the usual models for this type of data in that it assumes that an unobserved time series is actually driving the process, and that the observed data series is a function of the unobserved process. In the case of fossil fuels the unobserved series might be a measure of the exploratory drilling, the number of production days in a given time period or even the amount of fiscal resources devoted to exploratory activities. A maximum likelihood method is developed for estimating the parameters of the process, especially the maximum