Click here for full text:
Dynamic Modeling and Forecasting on Enterprise Revenue with Derived Granularities
Shan, Jerry Z.; Tang, Hsiu-Khuern; Wu, Ren; Safai, Fereydoon
HPL-2005-90
Keyword(s): Bayesian inference; data granularity; modeling and forecasting; seasonal ARIMA models
Abstract: Timely and accurate forecasts are crucial in decision-making processes and have significant impacts on many business aspects. We at HP Labs have developed a complete set of quantitative forecasting methods that can enable the establishment of a reliable predictive reporting system, so that executives can discern as early as possible where the company is heading financially. This paper reports some of our technical developments in building such a predictive reporting system. Notes: Copyright IEEE. To be published in and presented at IEEE International Conference on Granular Computing (IEEE GrC 2005), 25- 27 July 2005, Beijing, China
6 Pages
Back to Index
|