Literature DB >> 23367907

Quantifying causal coupling strength: a lag-specific measure for multivariate time series related to transfer entropy.

Jakob Runge1, Jobst Heitzig, Norbert Marwan, Jürgen Kurths.   

Abstract

While it is an important problem to identify the existence of causal associations between two components of a multivariate time series, a topic addressed in Runge, Heitzig, Petoukhov, and Kurths [Phys. Rev. Lett. 108, 258701 (2012)], it is even more important to assess the strength of their association in a meaningful way. In the present article we focus on the problem of defining a meaningful coupling strength using information-theoretic measures and demonstrate the shortcomings of the well-known mutual information and transfer entropy. Instead, we propose a certain time-delayed conditional mutual information, the momentary information transfer (MIT), as a lag-specific measure of association that is general, causal, reflects a well interpretable notion of coupling strength, and is practically computable. Rooted in information theory, MIT is general in that it does not assume a certain model class underlying the process that generates the time series. As discussed in a previous paper [Runge, Heitzig, Petoukhov, and Kurths, Phys. Rev. Lett. 108, 258701 (2012)], the general framework of graphical models makes MIT causal in that it gives a nonzero value only to lagged components that are not independent conditional on the remaining process. Further, graphical models admit a low-dimensional formulation of conditions, which is important for a reliable estimation of conditional mutual information and, thus, makes MIT practically computable. MIT is based on the fundamental concept of source entropy, which we utilize to yield a notion of coupling strength that is, compared to mutual information and transfer entropy, well interpretable in that, for many cases, it solely depends on the interaction of the two components at a certain lag. In particular, MIT is, thus, in many cases able to exclude the misleading influence of autodependency within a process in an information-theoretic way. We formalize and prove this idea analytically and numerically for a general class of nonlinear stochastic processes and illustrate the potential of MIT on climatological data.

Year:  2012        PMID: 23367907     DOI: 10.1103/PhysRevE.86.061121

Source DB:  PubMed          Journal:  Phys Rev E Stat Nonlin Soft Matter Phys        ISSN: 1539-3755


  17 in total

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Journal:  PLoS One       Date:  2018-03-16       Impact factor: 3.240

6.  Common solar wind drivers behind magnetic storm-magnetospheric substorm dependency.

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7.  HERMES: towards an integrated toolbox to characterize functional and effective brain connectivity.

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8.  Understanding Policy Diffusion in the U.S.: An Information-Theoretical Approach to Unveil Connectivity Structures in Slowly Evolving Complex Systems.

Authors:  Ross P Anderson; Geronimo Jimenez; Jin Yung Bae; Diana Silver; James Macinko; Maurizio Porfiri
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9.  Quantifying 'causality' in complex systems: understanding transfer entropy.

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10.  Identifying causal gateways and mediators in complex spatio-temporal systems.

Authors:  Jakob Runge; Vladimir Petoukhov; Jonathan F Donges; Jaroslav Hlinka; Nikola Jajcay; Martin Vejmelka; David Hartman; Norbert Marwan; Milan Paluš; Jürgen Kurths
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