TY - JOUR
T1 - Effective network inference through multivariate information transfer estimation
AU - Dahlqvist, Carl Henrik
AU - Gnabo, Jean-Yves
N1 - Funding Information:
The authors acknowledge financial support of the ARC grant (Projet d’Actions de Recherche Concertées) #13/17-055 granted by the Académie universitaire Louvain. We would also like to thank Sophie Béreau, Marco Saerens, Renaud Lambiotte, Timoteo Carletti, Monica Billio, Kris Boudt, Daniel Felix Ahelegbey and participants at the Conference on Complex Systems 2015, FIXS Winter School: Networks in Economics and Finance, 3L Finance workshop, FIXS, CeReFiM and NaXys seminars for helpful comments. We also thank the editor and the two journal referees for their comments and constructive suggestions which helped us to improve our work. All remaining errors are ours.
Publisher Copyright:
© 2018 Elsevier B.V.
Copyright:
Copyright 2018 Elsevier B.V., All rights reserved.
PY - 2018/6/1
Y1 - 2018/6/1
N2 - Network representation has steadily gained in popularity over the past decades. In many disciplines such as finance, genetics, neuroscience or human travel to cite a few, the network may not directly be observable and needs to be inferred from time-series data, leading to the issue of separating direct interactions between two entities forming the network from indirect interactions coming through its remaining part. Drawing on recent contributions proposing strategies to deal with this problem such as the so-called “global silencing” approach of Barzel and Barabasi or “network deconvolution” of Feizi et al. (2013), we propose a novel methodology to infer an effective network structure from multivariate conditional information transfers. Its core principal is to test the information transfer between two nodes through a step-wise approach by conditioning the transfer for each pair on a specific set of relevant nodes as identified by our algorithm from the rest of the network. The methodology is model free and can be applied to high-dimensional networks with both inter-lag and intra-lag relationships. It outperforms state-of-the-art approaches for eliminating the redundancies and more generally retrieving simulated artificial networks in our Monte-Carlo experiments. We apply the method to stock market data at different frequencies (15 min, 1 h, 1 day) to retrieve the network of US largest financial institutions and then document how bank's centrality measurements relate to bank's systemic vulnerability.
AB - Network representation has steadily gained in popularity over the past decades. In many disciplines such as finance, genetics, neuroscience or human travel to cite a few, the network may not directly be observable and needs to be inferred from time-series data, leading to the issue of separating direct interactions between two entities forming the network from indirect interactions coming through its remaining part. Drawing on recent contributions proposing strategies to deal with this problem such as the so-called “global silencing” approach of Barzel and Barabasi or “network deconvolution” of Feizi et al. (2013), we propose a novel methodology to infer an effective network structure from multivariate conditional information transfers. Its core principal is to test the information transfer between two nodes through a step-wise approach by conditioning the transfer for each pair on a specific set of relevant nodes as identified by our algorithm from the rest of the network. The methodology is model free and can be applied to high-dimensional networks with both inter-lag and intra-lag relationships. It outperforms state-of-the-art approaches for eliminating the redundancies and more generally retrieving simulated artificial networks in our Monte-Carlo experiments. We apply the method to stock market data at different frequencies (15 min, 1 h, 1 day) to retrieve the network of US largest financial institutions and then document how bank's centrality measurements relate to bank's systemic vulnerability.
KW - Bank network
KW - Effective network
KW - Indirect link
KW - Systemic risk
UR - http://www.scopus.com/inward/record.url?scp=85042367491&partnerID=8YFLogxK
U2 - 10.1016/j.physa.2018.02.053
DO - 10.1016/j.physa.2018.02.053
M3 - Article
AN - SCOPUS:85042367491
SN - 0378-4371
VL - 499
SP - 376
EP - 394
JO - Physica A
JF - Physica A
ER -