Nowadays, scientists are increasingly asked to investigate problems, which require the analysis of irregular, chaotic, non-stationary and corrupted time series. Assessing the causal relations between such signals is particularly challenging and, in many instances, interventions and experiments are impossible or impractical. The present work is a contribution to the development of indicators to quantify the mutual influences between time series. The criterion is called Cross Markov Matrix and belongs to the strand of techniques based on the conversion of time series into complex networks and the subsequent analysis of their topological properties. The proposed indicator is quite competitive with the available tools and can complement them very effectively. Indeed, all techniques have their strong and weak points and therefore corroborating the conclusions with mathematically independent methods is a recommended practice. The properties of the Cross Markov Matrix have been investigated with the help of a systematic series of numerical tests using synthetic data. The potential of the approach is then substantiated by the analysis of various real-life examples, ranging from environmental and global climate problems to the mutual influence between media coverage of Brexit and the pound-euro exchange rate.
Detecting causal relations in time series with the new cross Markov Matrix technique
Craciunescu T.; Murari A.
Journal:
Nonlinear dynamics (Dordr., Online) 103 (2),
pp. 1937 - 1953
Year:
2021
ISTP Authors: Andrea Murari
Keywords: time series, complex networks, Causality, Markov Matrix, ENSO, Brexit
Research Activitie: JOURNAL ARTICLES
Related products
-
Acta astronautica 191 pp. 178 - 192 Year: 2021 DOI: 10.1016/j.actaastro.2021.10.040
Unsteady behavior and thermochemical non equilibrium effects in hypersonic double-wedge flows
Ninni D.; Bonelli F.; Colonna G.; Pascazio G.
-
Journal of plasma physics (Print) 87 (1), pp. 825870101-1 - 825870101-20 Year: 2021 DOI: 10.1017/S0022377820001567
Local and global properties of energy transfer in models of plasma turbulence
Vasconez, Christian L.; Perrone, D.; Marino, R.; Laveder, D.; Valentini, F.; Servidio, S.; Mininni, P.; Sorriso-Valvo, L.
-
Atomic spectroscopy 42 (1), pp. 18 - 24 Year: 2021 DOI: 10.46770/AS.2020.202
Spark discharge-libs: Evaluation of one-point and multi-voltage calibration for p and al determination
Vieira A.L.; Ferreira E.C.; Junior D.S.; Senesi G.S.; Neto J.A.G.
-
Applied geochemistry 128 pp. 104929-1 - 104929-55 Year: 2021 DOI: 10.1016/j.apgeochem.2021.104929
Laser-Induced Breakdown Spectroscopy – A geochemical tool for the 21st century
Harmon R.S.; Senesi G.S.
English
Italiano