4.6 Article

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

期刊

PEERJ COMPUTER SCIENCE
卷 -, 期 -, 页码 -

出版社

PEERJ INC
DOI: 10.7717/peerj-cs.429

关键词

Granger causality; State-space models; Vector autoregressive model; Artificial neural networks; Stochastic gradient descent L1; Multivariate time series analysis; Network physiology; Remote synchronization; Chaotic oscillators; Penalized regression techniques

资金

  1. Sapienza University of Rome-Progetti di Ateneo 2017 [RM11715C82606455]
  2. Sapienza University of Rome-Progetti di Ateneo 2018 [RM11916B88C3E2DE]
  3. Sapienza University of Rome-Progetti di Ateneo 2019 [RM11916B88C3E2DE]
  4. Sapienza University of Rome-Progetti di Avvio alla Ricerca 2019 [AR11916B88F7079E]
  5. Stiftelsen Promobilia, Research Project DISCLOSE
  6. Ministero dell'Istruzione, dell'Universita e della RicercaPRIN 2017 [PRJ-0167]
  7. Stochastic forecasting in complex systems, Dipartimenti di eccellenza, PON R&I 2014-2020 AIM project [AIM1851228-2]
  8. BitBrain award (B2B Project) [2962]

向作者/读者索取更多资源

Studying the application of artificial neural networks and stochastic gradient descent algorithm in Granger causality analysis can effectively address the issue of reduced accuracy in situations with low data points and VAR parameters ratio. Additionally, the selection of different parameter combinations has a significant impact on the performance of GC estimation, indicating that choosing the appropriate regularization parameter can enhance the sparsity and accuracy of network estimation.
One of the most challenging problems in the study of complex dynamical systems is to find the statistical interdependencies among the system components. Granger causality (GC) represents one of the most employed approaches, based on modeling the system dynamics with a linear vector autoregressive (VAR) model and on evaluating the information flow between two processes in terms of prediction error variances. In its most advanced setting, GC analysis is performed through a statespace (SS) representation of the VAR model that allows to compute both conditional and unconditional forms of GC by solving only one regression problem. While this problem is typically solved through Ordinary Least Square (OLS) estimation, a viable alternative is to use Artificial Neural Networks (ANNs) implemented in a simple structure with one input and one output layer and trained in a way such that the weights matrix corresponds to the matrix of VAR parameters. In this work, we introduce an ANN combined with SS models for the computation of GC. The ANN is trained through the Stochastic Gradient Descent L1 (SGD-L1) algorithm, and a cumulative penalty inspired from penalized regression is applied to the network weights to encourage sparsity. Simulating networks of coupled Gaussian systems, we show how the combination of ANNs and SGD-L1 allows to mitigate the strong reduction in accuracy of OLS identification in settings of low ratio between number of time series points and of VAR parameters. We also report how the performances in GC estimation are influenced by the number of iterations of gradient descent and by the learning rate used for training the ANN. We recommend using some specific combinations for these parameters to optimize the performance of GC estimation. Then, the performances of ANN and OLS are compared in terms of GC magnitude and statistical significance to highlight the potential of the new approach to reconstruct causal coupling strength and network topology even in challenging conditions of data paucity. The results highlight the importance of of a proper selection of regularization parameter which determines the degree of sparsity in the estimated network. Furthermore, we apply the two approaches to real data scenarios, to study the physiological network of brain and peripheral interactions in humans under different conditions of rest and mental stress, and the effects of the newly emerged concept of remote synchronization on the information exchanged in a ring of electronic oscillators. The results highlight how ANNs provide a mesoscopic description of the information exchanged in networks of multiple interacting physiological systems, preserving the most active causal interactions between cardiovascular, respiratory and brain systems. Moreover, ANNs can reconstruct the flow of directed information in a ring of oscillators whose statistical properties can be related to those of physiological networks.

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