Understanding the details of the correlation between time series is an essential step on the route to assessing the causal relation between systems. Traditional statistical indicators, such as the Pearson correlation coefficient and the mutual information, have some significant limitations. More recently, transfer entropy has been proposed as a powerful tool to understand the flow of information between signals. In this paper, the comparative advantages of transfer entropy, for determining the time horizon of causal influence, are illustrated with the help of synthetic data. The technique has been specifically revised for the analysis of synchronization experiments. The investigation of experimental data from thermonuclear plasma diagnostics proves the potential and limitations of the developed approach.

Murari, A., Lungaroni, M., Peluso, E., Gaudio, P., Lerche, E., Garzotti, L., et al. (2018). On the use of transfer entropy to investigate the time horizon of causal influences between signals. ENTROPY, 20(9), 627 [10.3390/e20090627].

On the use of transfer entropy to investigate the time horizon of causal influences between signals

Lungaroni M.
Formal Analysis
;
Peluso E.
Formal Analysis
;
Gaudio P.
Funding Acquisition
;
Gelfusa M.
Supervision
2018-01-01

Abstract

Understanding the details of the correlation between time series is an essential step on the route to assessing the causal relation between systems. Traditional statistical indicators, such as the Pearson correlation coefficient and the mutual information, have some significant limitations. More recently, transfer entropy has been proposed as a powerful tool to understand the flow of information between signals. In this paper, the comparative advantages of transfer entropy, for determining the time horizon of causal influence, are illustrated with the help of synthetic data. The technique has been specifically revised for the analysis of synchronization experiments. The investigation of experimental data from thermonuclear plasma diagnostics proves the potential and limitations of the developed approach.
2018
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore FIS/01 - FISICA SPERIMENTALE
English
transfer entropy; mutual information; Pearson correlation coefficient; time series; causality detection; sawteeth; pacing; ELMs; pellets
Murari, A., Lungaroni, M., Peluso, E., Gaudio, P., Lerche, E., Garzotti, L., et al. (2018). On the use of transfer entropy to investigate the time horizon of causal influences between signals. ENTROPY, 20(9), 627 [10.3390/e20090627].
Murari, A; Lungaroni, M; Peluso, E; Gaudio, P; Lerche, E; Garzotti, L; Gelfusa, M
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/210747
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