Handbook of Time Series Analysis
Recent Theoretical Developments and Applications
1. Edition September 2006
XVIII, 496 Pages, Hardcover
162 Pictures (3 Colored Figures)
19 tables
Handbook/Reference Book
Short Description
This handbook provides an up-to-date survey of current research topics and applications of Time Series Analysis written by leading experts in their fields.
This handbook provides an up-to-date survey of current research topics and applications of time series analysis methods written by leading experts in their fields. It covers recent developments in univariate as well as bivariate and multivariate time series analysis techniques ranging from physics' to life sciences' applications. Each chapter comprises both methodological aspects and applications to real world complex systems, such as the human brain or Earth's climate. Covering an exceptionally broad spectrum of topics, beginners, experts and practitioners who seek to understand the latest developments will profit from this handbook.
(B. Schelter, M. Winterhalder, and J. Timmer)
2 Nonlinear Analysis of Time Series Data
(Henry D. I. Abarbanel and Ulrich Parlitz)
3 Local and Cluster Weighted Modeling for Time Series Prediction
(David Engster and Ulrich Parlitz)
4 Deterministic and probabilistic forecasting in reconstructed state spaces
(Holger Kantz and Eckehard Olbrich)
5 Dealing with randomness in biosignals
(Patrick Celka, Rolf Vetter, Elly Gysels, and Trevor Hine)
6 Robust detail-preserving signal extraction
(Ursula Gather, Roland Fried, and Vivian Lanius)
7 Coupled oscillators approach in analysis of bivariate data
(Michael Rosenblum, Laura Cimponeriu, and Arkady Pikovsky)
8 Nonlinear dynamical models from chaotic time series: methods and applications
(D.A. Smirnov and B.P. Bezruchko)
9 Data-driven analysis of nonstationary brain signals
(Mario Chavez, Claude Adam, Stefano Boccaletti, and Jacques Martinerie)
10 Synchronization Analysis and Recurrence in Complex Systems
(M. C. Romano, M. Thiel, J. Kurths, M. Rolfs, R. Engbert, and R. Kliegl)
11 Detecting coupling in the presence of noise and nonlinearity
(Theoden I. Netoff, Thomas L. Carroll, Louis M. Pecora, and Steven J. Schiff)
12 Linear models for mutivariate time series
(Manfred Deistler)
13 Spatio-TemporalModeling for Biosurveillance Using a Spatially Constrained State Space Model
(David S. Stoffer and Myron J. Katzoff)
14 Graphical modeling of dynamic relationships in multivariate time series
(Michael Eichler)
15 Multivariate Signal Analysis by ParametricModels
(K. J. Blinowska and M. Kaminski)
16 Computer Intensive Testing for the Influence between Time Series
(Luiz A. Baccalá, Daniel Y. Takahashi, and Koichi Sameshima)
17 Granger Causality: Basic Theory and Application to Neuroscience
(Mingzhou Ding, Yonghong Chen, and Steven L. Bressler)
18 Granger Causality on Spatial Manifolds: applications to Neuroimaging
(P. A. Valdés-Sosa, J.M. Bornot-Sánchez, M. Vega-Hernández, L. Melie-García, A. Lage-Castellanos, and E. Canales-Rodríguez)