Abstract
The notion of Granger causality between two time series examines if the prediction of one series could be improved by incorporating information of the other. In particular, if the prediction error of the first time series is reduced by including measurements from the second time series, then the second time series is said to have a causal influence on the first one. We propose a radial basis function approach to nonlinear Granger causality. The proposed model is not constrained to be additive in variables from the two time series and can approximate any function of these variables, still being suitable to evaluate causality. Usefulness of this measure of causality is shown in two applications. In the first application, a physiological one, we consider time series of heart rate and blood pressure in congestive heart failure patients and patients affected by sepsis: we find that sepsis patients, unlike congestive heart failure patients, show symmetric causal relationships between the two time series. In the second application, we consider the feedback loop in a model of excitatory and inhibitory neurons: we find that in this system causality measures the combined influence of couplings and membrane time constants. © 2006 The American Physical Society.
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CITATION STYLE
Marinazzo, D., Pellicoro, M., & Stramaglia, S. (2006). Nonlinear parametric model for Granger causality of time series. Physical Review E - Statistical, Nonlinear, and Soft Matter Physics, 73(6). https://doi.org/10.1103/PhysRevE.73.066216
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