Literature DB >> 22330817

Does partial Granger causality really eliminate the influence of exogenous inputs and latent variables?

Bjorn Roelstraete1, Yves Rosseel.   

Abstract

Partial Granger causality was introduced by Guo et al. (2008) who showed that it could better eliminate the influence of latent variables and exogenous inputs than conditional G-causality. In the recent literature we can find some reviews and applications of this type of Granger causality (e.g. Smith et al., 2011; Bressler and Seth, 2010; Barrett et al., 2010). These articles apparently do not take into account a serious flaw in the original work on partial G-causality, being the negative F values that were reported and even proven to be plausible. In our opinion, this undermines the credibility of the obtained results and thus the validity of the approach. Our study is aimed to further validate partial G-causality and to find an answer why negative partial Granger causality estimates were reported. Time series were simulated from the same toy model as used in the original paper and partial and conditional causal measures were compared in the presence of confounding variables. Inference was done parametrically and using non-parametric block bootstrapping. We counter the proof that partial Granger F values can be negative, but the main conclusion of the original article remains. In the presence of unknown latent and exogenous influences, it appears that partial G-causality will better eliminate their influence than conditional G-causality, at least when non-parametric inference is used.
Copyright © 2012 Elsevier B.V. All rights reserved.

Mesh:

Year:  2012        PMID: 22330817     DOI: 10.1016/j.jneumeth.2012.01.010

Source DB:  PubMed          Journal:  J Neurosci Methods        ISSN: 0165-0270            Impact factor:   2.390


  5 in total

1.  Temporal Information of Directed Causal Connectivity in Multi-Trial ERP Data using Partial Granger Causality.

Authors:  Vahab Youssofzadeh; Girijesh Prasad; Muhammad Naeem; KongFatt Wong-Lin
Journal:  Neuroinformatics       Date:  2016-01

Review 2.  Time motion studies in healthcare: what are we talking about?

Authors:  Marcelo Lopetegui; Po-Yin Yen; Albert Lai; Joseph Jeffries; Peter Embi; Philip Payne
Journal:  J Biomed Inform       Date:  2014-03-07       Impact factor: 6.317

3.  Dynamics of the human brain network revealed by time-frequency effective connectivity in fNIRS.

Authors:  Grégoire Vergotte; Kjerstin Torre; Venkata Chaitanya Chirumamilla; Abdul Rauf Anwar; Sergiu Groppa; Stéphane Perrey; Muthuraman Muthuraman
Journal:  Biomed Opt Express       Date:  2017-10-30       Impact factor: 3.732

4.  Construction of functional brain connectivity networks from fMRI data with driving and modulatory inputs: an extended conditional Granger causality approach.

Authors:  Evangelos Almpanis; Constantinos Siettos
Journal:  AIMS Neurosci       Date:  2020-04-10

5.  Disentangling personalized treatment effects from "time-of-the-day" confounding in mobile health studies.

Authors:  Elias Chaibub Neto; Thanneer M Perumal; Abhishek Pratap; Aryton Tediarjo; Brian M Bot; Lara Mangravite; Larsson Omberg
Journal:  PLoS One       Date:  2022-08-04       Impact factor: 3.752

  5 in total

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