Introduction to Focus Issue: Causation inference and information flow in dynamical systems: Theory and applications.

Questions of causation are foundational across science and often relate further to problems of control, policy decisions, and forecasts. In nonlinear dynamics and complex systems science, causation inference and information flow are closely related concepts, whereby "information" or knowledge of certain states can be thought of as coupling influence onto the future states of other processes in a complex system. While causation inference and information flow are by now classical topics, incorporating methods from statistics and time series analysis, information theory, dynamical systems, and statistical mechanics, to name a few, there remain important advancements in continuing to strengthen the theory, and pushing the context of applications, especially with the ever-increasing abundance of data collected across many fields and systems. This Focus Issue considers different aspects of these questions, both in terms of founding theory and several topical applications.

[1]  Joseph T. Lizier,et al.  Directed Information Measures in Neuroscience , 2014 .

[2]  Schreiber,et al.  Measuring information transfer , 2000, Physical review letters.

[3]  Richard Kleeman,et al.  Information transfer between dynamical system components. , 2005, Physical review letters.

[4]  C. Granger Investigating Causal Relations by Econometric Models and Cross-Spectral Methods , 1969 .

[5]  Dane Taylor,et al.  Causal Network Inference by Optimal Causation Entropy , 2014, SIAM J. Appl. Dyn. Syst..

[6]  C. Granger Investigating causal relations by econometric models and cross-spectral methods , 1969 .

[7]  Erik M Bollt,et al.  Open or closed? Information flow decided by transfer operators and forecastability quality metric. , 2018, Chaos.

[8]  A. Seth,et al.  Granger causality and transfer entropy are equivalent for Gaussian variables. , 2009, Physical review letters.

[9]  Jakob Runge,et al.  Quantifying the Strength and Delay of Climatic Interactions: The Ambiguities of Cross Correlation and a Novel Measure Based on Graphical Models , 2014 .

[10]  Yi Deng,et al.  Causal Discovery from Spatio-Temporal Data with Applications to Climate Science , 2014, 2014 13th International Conference on Machine Learning and Applications.

[11]  Niels Wessel,et al.  Quantifying the causal strength of multivariate cardiovascular couplings with momentary information transfer , 2014, 2014 8th Conference of the European Study Group on Cardiovascular Oscillations (ESGCO).

[12]  Doheon Lee,et al.  Inferring Gene Regulatory Networks from Microarray Time Series Data Using Transfer Entropy , 2007, Twentieth IEEE International Symposium on Computer-Based Medical Systems (CBMS'07).

[13]  Victor O. K. Li,et al.  A Gaussian Bayesian model to identify spatio-temporal causalities for air pollution based on urban big data , 2016, 2016 IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS).

[14]  Benjamin Jantzen,et al.  Detecting causality using symmetry transformations. , 2018, Chaos.

[15]  Ryan G. James,et al.  Inter-scale information flow as a surrogate for downward causation that maintains spiral waves. , 2017, Chaos.

[16]  Jonathan F. Donges,et al.  Using Causal Effect Networks to Analyze Different Arctic Drivers of Midlatitude Winter Circulation , 2016 .

[17]  Erik M. Bollt,et al.  Synchronization as a Process of Sharing and Transferring Information , 2012, Int. J. Bifurc. Chaos.

[18]  A. Kraskov,et al.  Estimating mutual information. , 2003, Physical review. E, Statistical, nonlinear, and soft matter physics.

[19]  X. Liang,et al.  Causation and information flow with respect to relative entropy. , 2018, Chaos.

[20]  Dennis D. Baldocchi,et al.  Identifying scale‐emergent, nonlinear, asynchronous processes of wetland methane exchange , 2016 .

[21]  Daniel Dajun Zeng,et al.  Identifying Peer Influence in Online Social Networks Using Transfer Entropy , 2013, PAISI.

[22]  James P. Crutchfield,et al.  Information Flows? A Critique of Transfer Entropies , 2015, Physical review letters.

[23]  Imme Ebert-Uphoff,et al.  Causal Discovery for Climate Research Using Graphical Models , 2012 .

[24]  Atreyee Bhattacharya,et al.  Carbon dioxide drove climate change during longest interglacial , 2012 .

[25]  Aram Galstyan,et al.  Information transfer in social media , 2011, WWW.

[26]  Kazuyuki Aihara,et al.  Identifying hidden common causes from bivariate time series: a method using recurrence plots. , 2010, Physical review. E, Statistical, nonlinear, and soft matter physics.

[27]  Erik M. Bollt,et al.  Causation entropy identifies indirect influences, dominance of neighbors and anticipatory couplings , 2014, 1504.03769.

[28]  I. Ebert‐Uphoff,et al.  A new type of climate network based on probabilistic graphical models: Results of boreal winter versus summer , 2012 .

[29]  Jürgen Kurths,et al.  Quantifying Causal Coupling Strength: A Lag-specific Measure For Multivariate Time Series Related To Transfer Entropy , 2012, Physical review. E, Statistical, nonlinear, and soft matter physics.

[30]  Michael C. Mackey,et al.  Chaos, Fractals, and Noise , 1994 .

[31]  Jie Sun,et al.  Anatomy of leadership in collective behaviour. , 2018, Chaos.

[32]  James P. Crutchfield,et al.  Anatomy of a Bit: Information in a Time Series Observation , 2011, Chaos.

[33]  Jie Sun,et al.  Causation entropy from symbolic representations of dynamical systems. , 2015, Chaos.

[34]  Olaf Sporns,et al.  Complex network measures of brain connectivity: Uses and interpretations , 2010, NeuroImage.

[35]  R. Burke,et al.  Detecting dynamical interdependence and generalized synchrony through mutual prediction in a neural ensemble. , 1996, Physical review. E, Statistical physics, plasmas, fluids, and related interdisciplinary topics.

[36]  Jochen Kaiser,et al.  Transfer entropy in magnetoencephalographic data: quantifying information flow in cortical and cerebellar networks. , 2011, Progress in biophysics and molecular biology.

[37]  B. Pompe,et al.  Momentary information transfer as a coupling measure of time series. , 2011, Physical review. E, Statistical, nonlinear, and soft matter physics.

[38]  P. Grassberger,et al.  A robust method for detecting interdependences: application to intracranially recorded EEG , 1999, chao-dyn/9907013.

[39]  Adam Rupe,et al.  Local Causal States and Discrete Coherent Structures , 2018, Chaos.

[40]  Jie Sun,et al.  Inference of Causal Information Flow in Collective Animal Behavior , 2016, IEEE Transactions on Molecular, Biological and Multi-Scale Communications.

[41]  Erik Bollt,et al.  Information-theoretical noninvasive damage detection in bridge structures. , 2016, Chaos.

[42]  D. Sejdinovic,et al.  Detecting causal associations in large nonlinear time series datasets , 2018 .

[43]  Shamim Nemati,et al.  Respiration and heart rate complexity: Effects of age and gender assessed by band-limited transfer entropy , 2013, Respiratory Physiology & Neurobiology.

[44]  Jürgen Kurths,et al.  Escaping the curse of dimensionality in estimating multivariate transfer entropy. , 2012, Physical review letters.

[45]  Jürgen Kurths,et al.  Optimal model-free prediction from multivariate time series. , 2015, Physical review. E, Statistical, nonlinear, and soft matter physics.

[46]  J Runge,et al.  Causal network reconstruction from time series: From theoretical assumptions to practical estimation. , 2018, Chaos.

[47]  Jonathan D. Rogers,et al.  Causation Entropy Identifies Sparsity Structure for Parameter Estimation of Dynamic Systems , 2017 .

[48]  Kazuyuki Aihara,et al.  Detecting Causality by Combined Use of Multiple Methods: Climate and Brain Examples , 2016, PloS one.

[49]  Milan Paluš,et al.  Causality, dynamical systems and the arrow of time. , 2018, Chaos.

[50]  S. Bressler,et al.  Granger Causality: Basic Theory and Application to Neuroscience , 2006, q-bio/0608035.

[51]  Moritz Grosse-Wentrup,et al.  Quantifying causal influences , 2012, 1203.6502.

[52]  Massimo Materassi,et al.  An information theory approach to the storm-substorm relationship , 2011 .

[53]  F. Takens Detecting strange attractors in turbulence , 1981 .

[54]  R. Quiroga,et al.  Learning driver-response relationships from synchronization patterns. , 1999, Physical review. E, Statistical physics, plasmas, fluids, and related interdisciplinary topics.

[55]  H. White,et al.  The entropy of a continuous distribution. , 1965, The Bulletin of mathematical biophysics.

[56]  James P. Bagrow,et al.  The quoter model: a paradigmatic model of the social flow of written information , 2017, Chaos.

[57]  Leonidas Sandoval,et al.  Structure of a Global Network of Financial Companies Based on Transfer Entropy , 2014, Entropy.

[58]  Jakob Runge,et al.  Early prediction of extreme stratospheric polar vortex states based on causal precursors , 2017 .

[59]  D. Smirnov Transient and equilibrium causal effects in coupled oscillators. , 2018, Chaos.

[60]  William A. Sethares,et al.  Conditional Granger causality and partitioned Granger causality: differences and similarities , 2015, Biological Cybernetics.

[61]  Steven L. Bressler,et al.  Wiener–Granger Causality: A well established methodology , 2011, NeuroImage.

[62]  N Marwan,et al.  Complex networks for tracking extreme rainfall during typhoons. , 2018, Chaos.

[63]  David F. Hendry,et al.  The Nobel Memorial Prize for Clive W. J. Granger , 2004 .

[64]  Y. Yoshikawa,et al.  Causality detected by transfer entropy leads acquisition of joint attention , 2007, 2007 IEEE 6th International Conference on Development and Learning.

[65]  Jürgen Kurths,et al.  Identifying causal gateways and mediators in complex spatio-temporal systems , 2015, Nature Communications.

[66]  Jakob Runge,et al.  The role of the North Atlantic overturning and deep ocean for multi-decadal global-mean-temperature variability , 2014 .

[67]  Erik Laminski,et al.  Topological Causality in Dynamical Systems. , 2016, Physical review letters.

[68]  Yoshito Hirata,et al.  Detecting directional couplings from multivariate flows by the joint distance distribution. , 2018, Chaos.

[69]  Jakob Runge,et al.  Quantifying information transfer and mediation along causal pathways in complex systems. , 2015, Physical review. E, Statistical, nonlinear, and soft matter physics.

[70]  X. San Liang,et al.  The Liang-Kleeman Information Flow: Theory and Applications , 2013, Entropy.

[71]  George Sugihara,et al.  Detecting Causality in Complex Ecosystems , 2012, Science.