Literature DB >> 28364746

Small-world bias of correlation networks: From brain to climate.

Jaroslav Hlinka1, David Hartman1, Nikola Jajcay1, David Tomeček1, Jaroslav Tintěra2, Milan Paluš1.   

Abstract

Complex systems are commonly characterized by the properties of their graph representation. Dynamical complex systems are then typically represented by a graph of temporal dependencies between time series of state variables of their subunits. It has been shown recently that graphs constructed in this way tend to have relatively clustered structure, potentially leading to spurious detection of small-world properties even in the case of systems with no or randomly distributed true interactions. However, the strength of this bias depends heavily on a range of parameters and its relevance for real-world data has not yet been established. In this work, we assess the relevance of the bias using two examples of multivariate time series recorded in natural complex systems. The first is the time series of local brain activity as measured by functional magnetic resonance imaging in resting healthy human subjects, and the second is the time series of average monthly surface air temperature coming from a large reanalysis of climatological data over the period 1948-2012. In both cases, the clustering in the thresholded correlation graph is substantially higher compared with a realization of a density-matched random graph, while the shortest paths are relatively short, showing thus distinguishing features of small-world structure. However, comparable or even stronger small-world properties were reproduced in correlation graphs of model processes with randomly scrambled interconnections. This suggests that the small-world properties of the correlation matrices of these real-world systems indeed do not reflect genuinely the properties of the underlying interaction structure, but rather result from the inherent properties of correlation matrix.

Entities:  

Year:  2017        PMID: 28364746     DOI: 10.1063/1.4977951

Source DB:  PubMed          Journal:  Chaos        ISSN: 1054-1500            Impact factor:   3.642


  5 in total

1.  Network Inference and Maximum Entropy Estimation on Information Diagrams.

Authors:  Elliot A Martin; Jaroslav Hlinka; Alexander Meinke; Filip Děchtěrenko; Jaroslav Tintěra; Isaura Oliver; Jörn Davidsen
Journal:  Sci Rep       Date:  2017-08-01       Impact factor: 4.379

2.  Topological structures are consistently overestimated in functional complex networks.

Authors:  Massimiliano Zanin; Seddik Belkoura; Javier Gomez; César Alfaro; Javier Cano
Journal:  Sci Rep       Date:  2018-08-10       Impact factor: 4.379

3.  Is Graph Theoretical Analysis a Useful Tool for Quantification of Connectivity Obtained by Means of EEG/MEG Techniques?

Authors:  Maciej Kaminski; Katarzyna J Blinowska
Journal:  Front Neural Circuits       Date:  2018-09-26       Impact factor: 3.492

4.  The Neglected Pieces of Designing Collective Decision-Making Processes.

Authors:  Yara Khaluf; Pieter Simoens; Heiko Hamann
Journal:  Front Robot AI       Date:  2019-03-26

5.  Stability of graph theoretical measures in structural brain networks in Alzheimer's disease.

Authors:  Gustav Mårtensson; Joana B Pereira; Patrizia Mecocci; Bruno Vellas; Magda Tsolaki; Iwona Kłoszewska; Hilkka Soininen; Simon Lovestone; Andrew Simmons; Giovanni Volpe; Eric Westman
Journal:  Sci Rep       Date:  2018-08-02       Impact factor: 4.379

  5 in total

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