Literature DB >> 33875707

Fast and effective pseudo transfer entropy for bivariate data-driven causal inference.

Riccardo Silini1, Cristina Masoller2.   

Abstract

Identifying, from time series analysis, reliable indicators of causal relationships is essential for many disciplines. Main challenges are distinguishing correlation from causality and discriminating between direct and indirect interactions. Over the years many methods for data-driven causal inference have been proposed; however, their success largely depends on the characteristics of the system under investigation. Often, their data requirements, computational cost or number of parameters limit their applicability. Here we propose a computationally efficient measure for causality testing, which we refer to as pseudo transfer entropy (pTE), that we derive from the standard definition of transfer entropy (TE) by using a Gaussian approximation. We demonstrate the power of the pTE measure on simulated and on real-world data. In all cases we find that pTE returns results that are very similar to those returned by Granger causality (GC). Importantly, for short time series, pTE combined with time-shifted (T-S) surrogates for significance testing strongly reduces the computational cost with respect to the widely used iterative amplitude adjusted Fourier transform (IAAFT) surrogate testing. For example, for time series of 100 data points, pTE and T-S reduce the computational time by [Formula: see text] with respect to GC and IAAFT. We also show that pTE is robust against observational noise. Therefore, we argue that the causal inference approach proposed here will be extremely valuable when causality networks need to be inferred from the analysis of a large number of short time series.

Entities:  

Year:  2021        PMID: 33875707     DOI: 10.1038/s41598-021-87818-3

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  23 in total

1.  Partial directed coherence: a new concept in neural structure determination.

Authors:  L A Baccalá; K Sameshima
Journal:  Biol Cybern       Date:  2001-06       Impact factor: 2.086

Review 2.  Nonlinear multivariate analysis of neurophysiological signals.

Authors:  Ernesto Pereda; Rodrigo Quian Quiroga; Joydeep Bhattacharya
Journal:  Prog Neurobiol       Date:  2005-11-14       Impact factor: 11.685

3.  Estimating Granger causality from fourier and wavelet transforms of time series data.

Authors:  Mukeshwar Dhamala; Govindan Rangarajan; Mingzhou Ding
Journal:  Phys Rev Lett       Date:  2008-01-10       Impact factor: 9.161

4.  The MVGC multivariate Granger causality toolbox: a new approach to Granger-causal inference.

Authors:  Lionel Barnett; Anil K Seth
Journal:  J Neurosci Methods       Date:  2013-11-05       Impact factor: 2.390

5.  Kernel method for nonlinear granger causality.

Authors:  Daniele Marinazzo; Mario Pellicoro; Sebastiano Stramaglia
Journal:  Phys Rev Lett       Date:  2008-04-11       Impact factor: 9.161

6.  Granger causality analysis in neuroscience and neuroimaging.

Authors:  Anil K Seth; Adam B Barrett; Lionel Barnett
Journal:  J Neurosci       Date:  2015-02-25       Impact factor: 6.167

7.  Inferring directed climatic interactions with renormalized partial directed coherence and directed partial correlation.

Authors:  Giulio Tirabassi; Linda Sommerlade; Cristina Masoller
Journal:  Chaos       Date:  2017-03       Impact factor: 3.642

8.  Symbolic transfer entropy.

Authors:  Matthäus Staniek; Klaus Lehnertz
Journal:  Phys Rev Lett       Date:  2008-04-14       Impact factor: 9.161

Review 9.  Inferring causation from time series in Earth system sciences.

Authors:  Jakob Runge; Sebastian Bathiany; Erik Bollt; Gustau Camps-Valls; Dim Coumou; Ethan Deyle; Clark Glymour; Marlene Kretschmer; Miguel D Mahecha; Jordi Muñoz-Marí; Egbert H van Nes; Jonas Peters; Rick Quax; Markus Reichstein; Marten Scheffer; Bernhard Schölkopf; Peter Spirtes; George Sugihara; Jie Sun; Kun Zhang; Jakob Zscheischler
Journal:  Nat Commun       Date:  2019-06-14       Impact factor: 14.919

10.  Measuring information-transfer delays.

Authors:  Michael Wibral; Nicolae Pampu; Viola Priesemann; Felix Siebenhühner; Hannes Seiwert; Michael Lindner; Joseph T Lizier; Raul Vicente
Journal:  PLoS One       Date:  2013-02-28       Impact factor: 3.240

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