Sparse learning machines provide 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 is presented in this paper. The utility and practicality of the proposed approaches have been demonstrated on the time series of the Great Salt Lake (GSL) biweekly volumes from 1848 to 2004. A comparison of the two methods is made based on their predictive power and robustness. 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. In this paper, efforts are also made to assess the un...
We use concepts from chaos theory in order to model nonlinear dynamical systems that exhibit determi...
We consider problems in the forecasting of large, complex, spatiotemporal chaotic systems and the po...
Integrating dynamic systems modeling and machine learning generates an exploratory nonlinear solutio...
[1] The reconstruction of low-order nonlinear dynamics from the time series of a state variable has ...
This work presents a methodology for dynamic reconstruction of chaotic systems from inter-spike inte...
This paper extends the subjects dicussed in the Data Analysis and Dynamical Systems courses by looki...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
This work presents a methodology for dynamic reconstruction of chaotic systems from inter-spike inte...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
The applicability of machine learning for predicting chaotic dynamics relies heavily upon the data u...
In this article, two models of the forecast of time series obtained from the chaotic dynamic systems...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
A data-driven sparse identification method is developed to discover the underlying governing equatio...
This work concerns the analysis of chaotic multi-variate time-series from spatio-temporal dynamical ...
The prediction of chaotic dynamical systems’ future evolution is widely debated and represents a hot...
We use concepts from chaos theory in order to model nonlinear dynamical systems that exhibit determi...
We consider problems in the forecasting of large, complex, spatiotemporal chaotic systems and the po...
Integrating dynamic systems modeling and machine learning generates an exploratory nonlinear solutio...
[1] The reconstruction of low-order nonlinear dynamics from the time series of a state variable has ...
This work presents a methodology for dynamic reconstruction of chaotic systems from inter-spike inte...
This paper extends the subjects dicussed in the Data Analysis and Dynamical Systems courses by looki...
Based on the phase space reconstruction theory and the statistical learning theory, multi-step predi...
This work presents a methodology for dynamic reconstruction of chaotic systems from inter-spike inte...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
The applicability of machine learning for predicting chaotic dynamics relies heavily upon the data u...
In this article, two models of the forecast of time series obtained from the chaotic dynamic systems...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
A data-driven sparse identification method is developed to discover the underlying governing equatio...
This work concerns the analysis of chaotic multi-variate time-series from spatio-temporal dynamical ...
The prediction of chaotic dynamical systems’ future evolution is widely debated and represents a hot...
We use concepts from chaos theory in order to model nonlinear dynamical systems that exhibit determi...
We consider problems in the forecasting of large, complex, spatiotemporal chaotic systems and the po...
Integrating dynamic systems modeling and machine learning generates an exploratory nonlinear solutio...