An unifying approach evaluating complex dynamics and dynamical interactions in short bivariate time series is presented. The method performs nearest neighbor local linear prediction to estimate regularity, synchronization and directionality of two interacting time series. It was implemented through a specific cross-validation procedure which allowed an unconstrained embedding of the series and a full exploitation of the available data to maximize the accuracy of prediction. The approach was evaluated by simulations of stochastic (autoregressive processes) and deterministic (Henon maps) models in which uncoupled, unidirectionally coupled and bidirectionally coupled dynamics were generated. The method was then applied to representative exampl...
A model-based approach to perform mutual nonlinear prediction of short cardiovascular variability se...
A model-based approach to perform mutual nonlinear prediction of short cardiovascular variability se...
We investigated the ability of mutual nonlinear prediction methods to assess causal interactions in ...
An unifying approach evaluating complex dynamics and dynamical interactions in short bivariate time ...
A nonlinear prediction method for investigating the dynamic interdependence between short length tim...
A nonlinear prediction method for investigating the dynamic interdependence between short length tim...
We compare the different existing strategies of mutual nonlinear prediction regarding their ability ...
We compare the different existing strategies of mutual nonlinear prediction regarding their ability ...
We compare the different existing strategies of mutual nonlinear prediction regarding their ability ...
We compare the different existing strategies of mutual nonlinear prediction regarding their ability ...
A method to evaluate the direction and strength of causal interactions in bivariate cardiovascular a...
A model-based approach to perform mutual nonlinear prediction of short cardiovascular variability se...
A model-based approach to perform mutual nonlinear prediction of short cardiovascular variability se...
A method to evaluate the direction and strength of causal interactions in bivariate cardiovascular a...
A method to evaluate the direction and strength of causal interactions in bivariate cardiovascular a...
A model-based approach to perform mutual nonlinear prediction of short cardiovascular variability se...
A model-based approach to perform mutual nonlinear prediction of short cardiovascular variability se...
We investigated the ability of mutual nonlinear prediction methods to assess causal interactions in ...
An unifying approach evaluating complex dynamics and dynamical interactions in short bivariate time ...
A nonlinear prediction method for investigating the dynamic interdependence between short length tim...
A nonlinear prediction method for investigating the dynamic interdependence between short length tim...
We compare the different existing strategies of mutual nonlinear prediction regarding their ability ...
We compare the different existing strategies of mutual nonlinear prediction regarding their ability ...
We compare the different existing strategies of mutual nonlinear prediction regarding their ability ...
We compare the different existing strategies of mutual nonlinear prediction regarding their ability ...
A method to evaluate the direction and strength of causal interactions in bivariate cardiovascular a...
A model-based approach to perform mutual nonlinear prediction of short cardiovascular variability se...
A model-based approach to perform mutual nonlinear prediction of short cardiovascular variability se...
A method to evaluate the direction and strength of causal interactions in bivariate cardiovascular a...
A method to evaluate the direction and strength of causal interactions in bivariate cardiovascular a...
A model-based approach to perform mutual nonlinear prediction of short cardiovascular variability se...
A model-based approach to perform mutual nonlinear prediction of short cardiovascular variability se...
We investigated the ability of mutual nonlinear prediction methods to assess causal interactions in ...