Literature DB >> 26356599

Neural networks with non-uniform embedding and explicit validation phase to assess Granger causality.

Alessandro Montalto1, Sebastiano Stramaglia2, Luca Faes3, Giovanni Tessitore4, Roberto Prevete5, Daniele Marinazzo6.   

Abstract

A challenging problem when studying a dynamical system is to find the interdependencies among its individual components. Several algorithms have been proposed to detect directed dynamical influences between time series. Two of the most used approaches are a model-free one (transfer entropy) and a model-based one (Granger causality). Several pitfalls are related to the presence or absence of assumptions in modeling the relevant features of the data. We tried to overcome those pitfalls using a neural network approach in which a model is built without any a priori assumptions. In this sense this method can be seen as a bridge between model-free and model-based approaches. The experiments performed will show that the method presented in this work can detect the correct dynamical information flows occurring in a system of time series. Additionally we adopt a non-uniform embedding framework according to which only the past states that actually help the prediction are entered into the model, improving the prediction and avoiding the risk of overfitting. This method also leads to a further improvement with respect to traditional Granger causality approaches when redundant variables (i.e. variables sharing the same information about the future of the system) are involved. Neural networks are also able to recognize dynamics in data sets completely different from the ones used during the training phase.
Copyright © 2015 Elsevier Ltd. All rights reserved.

Keywords:  Granger causality; Neural networks; Non-uniform embedding

Mesh:

Year:  2015        PMID: 26356599     DOI: 10.1016/j.neunet.2015.08.003

Source DB:  PubMed          Journal:  Neural Netw        ISSN: 0893-6080


  7 in total

1.  Estimation of Granger causality through Artificial Neural Networks: applications to physiological systems and chaotic electronic oscillators.

Authors:  Yuri Antonacci; Ludovico Minati; Luca Faes; Riccardo Pernice; Giandomenico Nollo; Jlenia Toppi; Antonio Pietrabissa; Laura Astolfi
Journal:  PeerJ Comput Sci       Date:  2021-05-18

2.  Vector Auto-Regressive Deep Neural Network: A Data-Driven Deep Learning-Based Directed Functional Connectivity Estimation Toolbox.

Authors:  Takuto Okuno; Alexander Woodward
Journal:  Front Neurosci       Date:  2021-11-23       Impact factor: 4.677

3.  The influence of filtering and downsampling on the estimation of transfer entropy.

Authors:  Immo Weber; Esther Florin; Michael von Papen; Lars Timmermann
Journal:  PLoS One       Date:  2017-11-17       Impact factor: 3.240

4.  Analyzing Brain Connectivity in the Mutual Regulation of Emotion-Movement Using Bidirectional Granger Causality.

Authors:  Ting Li; Guoqi Li; Tao Xue; Jinhua Zhang
Journal:  Front Neurosci       Date:  2020-05-06       Impact factor: 4.677

5.  Variability and Reproducibility of Directed and Undirected Functional MRI Connectomes in the Human Brain.

Authors:  Allegra Conti; Andrea Duggento; Maria Guerrisi; Luca Passamonti; Iole Indovina; Nicola Toschi
Journal:  Entropy (Basel)       Date:  2019-07-06       Impact factor: 2.524

6.  Risk Evaluation for a Manufacturing Process Based on a Directed Weighted Network.

Authors:  Lixiang Wang; Wei Dai; Dongmei Sun; Yu Zhao
Journal:  Entropy (Basel)       Date:  2020-06-23       Impact factor: 2.524

7.  Inference of biological networks using Bi-directional Random Forest Granger causality.

Authors:  Mohammad Shaheryar Furqan; Mohammad Yakoob Siyal
Journal:  Springerplus       Date:  2016-04-26
  7 in total

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