2005 Salt Lake City Annual Meeting (October 16–19, 2005)

Paper No. 7
Presentation Time: 3:35 PM

LEARNING WITH KERNELS: AN APPLICATION TO GREAT SALT LAKE VOLUME TIME SERIES


KHALIL, Abedalrazq F. and MCKEE, Mac, Civil and environmental engineering, Utah State University, 1600 Canyon Road, Logan, UT 84322, akhalil@cc.usu.edu

Learning with kernels provides a viable framework for modeling chaotic time-series systems. A powerful state-space reconstruction methodology using both support vector machines (SVM) and relevance vector machines (RVM) within a multiobjective optimization framework will be presented. The utility and practicality of the proposed approaches will be demonstrated on the time series of the Great Salt Lake (GSL) biweekly volumes from 1848 to 2004. The reconstruction of the dynamics of the Great Salt Lake volume time series is attained using the most relevant feature subset of the training data. Efforts are also made to assess the uncertainty and robustness of the machines in learning and forecasting as a function of model structure and bootstrapping samples. The resulting model will normally have a structure, including parameterization, that suits the information content of the available data, and can be used to develop time series forecasts for multiple lead times ranging from two weeks to several months.