Article ID: | iaor20073888 |
Country: | United States |
Volume: | 53 |
Issue: | 3 |
Start Page Number: | 549 |
End Page Number: | 559 |
Publication Date: | May 2005 |
Journal: | Operations Research |
Authors: | Nelson Barry L., Biller Bahar |
Keywords: | time series & forecasting methods |
Providing accurate and automated input-modeling support is one of the challenging problems in the application of computer simulation of stochastic systems. The models incorporated in current input-modeling software packages often fall short because they assume independent and identically distributed processes, even though dependent time-series input processes occur naturally in the simulation of many real-Iife systems. Therefore, this paper introduces a statistical methodology for fitting stochastic models to dependent time-series input processes. Specifically, an automated and statistically valid algorithm is presented to fit autoregressive-to-anything (ARTA) processes with marginal distributions from the Johnson translation system to stationary univariate time-series data. ARTA processes are particularly well suited to driving stochastic simulations. The use of this algorithm is illustrated with examples.