Time Series Modeling and Computation
Description:
Time series data arise in diverse applications and their modeling poses several challenges to the data analyst. This track is concerned with the use of time series models and the associated computational methods for estimating them and assessing their fit. Special attention will be given to more recently proposed methods and models whose development made possible to attack data structures that cannot be modeled by standard methodology. Examples can arise from finance, marketing, medicine, meteorology etc. Both time and spectral domain methods can be presented.
Co-Chairs:
- Konstantinos Fokianos, University of Cyprus, Cyprus.
- Roland Fried, University of Dortmund, Germany.
Created by Computing & Statistics 2007