This book provides a thorough review of a class of powerful algorithms for the numerical analysis of complex time series data which were obtained from dynamical systems. These algorithms are based on the concept of state space representations of the underlying dynamics, as introduced by nonlinear dy
Topics in nonlinear time series analysis : with implications for EEG analysis
โ Scribed by Andreas Galka
- Publisher
- World Scientific
- Year
- 2000
- Tongue
- English
- Series
- Advanced series in nonlinear dynamics, v. 14
- Category
- Library
No coin nor oath required. For personal study only.
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