This thesis concerns characterizing complex time series from the scaling of prediction error. We use the global modeling technique of radial basis function approximation to build models from a state-space reconstruction of a time series that otherwise appears complicated or random (i.e. aperiodic, irregular). Prediction error as a function of prediction horizon is obtained from the model using the direct method. The relationship between the underlying dynamics of the time series and the logarithmic scaling of prediction error as a function of prediction horizon is investigated. We use this relationship to characterize the dynamics of both a model chaotic system and physical data from the optic tectum of an attentive pigeon exhibiting the im...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
Abstract: One of the main aspects of brain activity is the ability to predict. Large effo...
This thesis concerns characterizing complex time series from the scaling of prediction error. We use...
The main advantage of detecting chaos is that the time series is short term predictable. The predict...
We use concepts from chaos theory in order to model nonlinear dynamical systems that exhibit determi...
I investigate the importance of determining the exact dimensionality of a nonlinear system in time s...
In this book, we compared different neural approaches in the forecasting of chaotic dynamics, which ...
In contrast to recent work aimed at using neural networks for relatively ‘long term’ prediction of t...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
The prediction of chaotic dynamical systems’ future evolution is widely debated and represents a hot...
A fundamental problem with the modeling of chaotic time series data is that minimizing short-term pr...
This paper describes a procedure for making short term predictions by examining trajectories on a re...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
Abstract: One of the main aspects of brain activity is the ability to predict. Large effo...
This thesis concerns characterizing complex time series from the scaling of prediction error. We use...
The main advantage of detecting chaos is that the time series is short term predictable. The predict...
We use concepts from chaos theory in order to model nonlinear dynamical systems that exhibit determi...
I investigate the importance of determining the exact dimensionality of a nonlinear system in time s...
In this book, we compared different neural approaches in the forecasting of chaotic dynamics, which ...
In contrast to recent work aimed at using neural networks for relatively ‘long term’ prediction of t...
Recent advances in nonlinear time-series prediction demonstrated the ability of recurrent neural net...
The prediction of chaotic dynamical systems’ future evolution is widely debated and represents a hot...
A fundamental problem with the modeling of chaotic time series data is that minimizing short-term pr...
This paper describes a procedure for making short term predictions by examining trajectories on a re...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
Abstract: One of the main aspects of brain activity is the ability to predict. Large effo...