38 research outputs found
Inferring complex networks from time series of dynamical systems: Pitfalls, misinterpretations, and possible solutions
Understanding the dynamics of spatially extended systems represents a
challenge in diverse scientific disciplines, ranging from physics and
mathematics to the earth and climate sciences or the neurosciences. This
challenge has stimulated the development of sophisticated data analysis
approaches adopting concepts from network theory: systems are considered to be
composed of subsystems (nodes) which interact with each other (represented by
edges). In many studies, such complex networks of interactions have been
derived from empirical time series for various spatially extended systems and
have been repeatedly reported to possess the same, possibly desirable,
properties (e.g. small-world characteristics and assortativity). In this thesis
we study whether and how interaction networks are influenced by the analysis
methodology, i.e. by the way how empirical data is acquired (the spatial and
temporal sampling of the dynamics) and how nodes and edges are derived from
multivariate time series. Our modeling and numerical studies are complemented
by field data analyses of brain activities that unfold on various spatial and
temporal scales. We demonstrate that indications of small-world characteristics
and assortativity can already be expected due solely to the analysis
methodology, irrespective of the actual interaction structure of the system. We
develop and discuss strategies to distinguish the properties of interaction
networks related to the dynamics from those spuriously induced by the analysis
methodology. We show how these strategies can help to avoid misinterpretations
when investigating the dynamics of spatially extended systems.Comment: PhD thesis, University of Bonn (Germany), published in 2012, 141
page
Statistical Learning for Resting-State fMRI: Successes and Challenges
International audienceIn the absence of external stimuli, fluctuations in cerebral activity can be used to reveal intrinsic structures. Well-conditioned probabilistic models of this so-called resting-state activity are needed to support neuroscientific hypotheses. Exploring two specific descriptions of resting-state fMRI, namely spatial analysis and connectivity graphs, we discuss the progress brought by statistical learning techniques, but also the neuroscientific picture that they paint, and possible modeling pitfalls
Identifying phase synchronization clusters in spatially extended dynamical systems
We investigate two recently proposed multivariate time series analysis
techniques that aim at detecting phase synchronization clusters in spatially
extended, nonstationary systems with regard to field applications. The starting
point of both techniques is a matrix whose entries are the mean phase coherence
values measured between pairs of time series. The first method is a mean field
approach which allows to define the strength of participation of a subsystem in
a single synchronization cluster. The second method is based on an eigenvalue
decomposition from which a participation index is derived that characterizes
the degree of involvement of a subsystem within multiple synchronization
clusters. Simulating multiple clusters within a lattice of coupled Lorenz
oscillators we explore the limitations and pitfalls of both methods and
demonstrate (a) that the mean field approach is relatively robust even in
configurations where the single cluster assumption is not entirely fulfilled,
and (b) that the eigenvalue decomposition approach correctly identifies the
simulated clusters even for low coupling strengths. Using the eigenvalue
decomposition approach we studied spatiotemporal synchronization clusters in
long-lasting multichannel EEG recordings from epilepsy patients and obtained
results that fully confirm findings from well established neurophysiological
examination techniques. Multivariate time series analysis methods such as
synchronization cluster analysis that account for nonlinearities in the data
are expected to provide complementary information which allows to gain deeper
insights into the collective dynamics of spatially extended complex systems
Node-weighted measures for complex networks with spatially embedded, sampled, or differently sized nodes
When network and graph theory are used in the study of complex systems, a
typically finite set of nodes of the network under consideration is frequently
either explicitly or implicitly considered representative of a much larger
finite or infinite region or set of objects of interest. The selection
procedure, e.g., formation of a subset or some kind of discretization or
aggregation, typically results in individual nodes of the studied network
representing quite differently sized parts of the domain of interest. This
heterogeneity may induce substantial bias and artifacts in derived network
statistics. To avoid this bias, we propose an axiomatic scheme based on the
idea of node splitting invariance to derive consistently weighted variants of
various commonly used statistical network measures. The practical relevance and
applicability of our approach is demonstrated for a number of example networks
from different fields of research, and is shown to be of fundamental importance
in particular in the study of spatially embedded functional networks derived
from time series as studied in, e.g., neuroscience and climatology.Comment: 21 pages, 13 figure
Investigating the topology of interacting networks - Theory and application to coupled climate subnetworks
Network theory provides various tools for investigating the structural or
functional topology of many complex systems found in nature, technology and
society. Nevertheless, it has recently been realised that a considerable number
of systems of interest should be treated, more appropriately, as interacting
networks or networks of networks. Here we introduce a novel graph-theoretical
framework for studying the interaction structure between subnetworks embedded
within a complex network of networks. This framework allows us to quantify the
structural role of single vertices or whole subnetworks with respect to the
interaction of a pair of subnetworks on local, mesoscopic and global
topological scales.
Climate networks have recently been shown to be a powerful tool for the
analysis of climatological data. Applying the general framework for studying
interacting networks, we introduce coupled climate subnetworks to represent and
investigate the topology of statistical relationships between the fields of
distinct climatological variables. Using coupled climate subnetworks to
investigate the terrestrial atmosphere's three-dimensional geopotential height
field uncovers known as well as interesting novel features of the atmosphere's
vertical stratification and general circulation. Specifically, the new measure
"cross-betweenness" identifies regions which are particularly important for
mediating vertical wind field interactions. The promising results obtained by
following the coupled climate subnetwork approach present a first step towards
an improved understanding of the Earth system and its complex interacting
components from a network perspective
Seizure prediction : ready for a new era
Acknowledgements: The authors acknowledge colleagues in the international seizure prediction group for valuable discussions. L.K. acknowledges funding support from the National Health and Medical Research Council (APP1130468) and the James S. McDonnell Foundation (220020419) and acknowledges the contribution of Dean R. Freestone at the University of Melbourne, Australia, to the creation of Fig. 3.Peer reviewedPostprin
Electrical Brain Responses to an Auditory Illusion and the Impact of Musical Expertise
The presentation of two sinusoidal tones, one to each ear, with a slight frequency mismatch yields an auditory illusion of a beating frequency equal to the frequency difference between the two tones; this is known as binaural beat (BB). The effect of brief BB stimulation on scalp EEG is not conclusively demonstrated. Further, no studies have examined the impact of musical training associated with BB stimulation, yet musicians' brains are often associated with enhanced auditory processing. In this study, we analysed EEG brain responses from two groups, musicians and non-musicians, when stimulated by short presentation (1 min) of binaural beats with beat frequency varying from 1 Hz to 48 Hz. We focused our analysis on alpha and gamma band EEG signals, and they were analysed in terms of spectral power, and functional connectivity as measured by two phase synchrony based measures, phase locking value and phase lag index. Finally, these measures were used to characterize the degree of centrality, segregation and integration of the functional brain network. We found that beat frequencies belonging to alpha band produced the most significant steady-state responses across groups. Further, processing of low frequency (delta, theta, alpha) binaural beats had significant impact on cortical network patterns in the alpha band oscillations. Altogether these results provide a neurophysiological account of cortical responses to BB stimulation at varying frequencies, and demonstrate a modulation of cortico-cortical connectivity in musicians' brains, and further suggest a kind of neuronal entrainment of a linear and nonlinear relationship to the beating frequencies
Assortative mixing in functional brain networks during epileptic seizures
We investigate assortativity of functional brain networks before, during, and
after one-hundred epileptic seizures with different anatomical onset locations.
We construct binary functional networks from multi-channel
electroencephalographic data recorded from 60 epilepsy patients, and from
time-resolved estimates of the assortativity coefficient we conclude that
positive degree-degree correlations are inherent to seizure dynamics. While
seizures evolve, an increasing assortativity indicates a segregation of the
underlying functional network into groups of brain regions that are only
sparsely interconnected, if at all. Interestingly, assortativity decreases
already prior to seizure end. Together with previous observations of
characteristic temporal evolutions of global statistical properties and
synchronizability of epileptic brain networks, our findings may help to gain
deeper insights into the complicated dynamics underlying generation,
propagation, and termination of seizures.Comment: 10 pages, 3 figure
Extreme events due to localization of energy
We study a one-dimensional chain of harmonically coupled units in an
asymmetric anharmonic soft potential. Due to nonlinear localisation of energy,
this system exhibits extreme events in the sense that individual elements of
the chain show very large excitations. A detailed statistical analysis of
extremes in this system reveals some unexpected properties, e.g., a pronounced
pattern in the inter event interval statistics. We relate these statistical
properties to underlying system dynamics, and notice that often when extreme
events occur the system dynamics adopts (at least locally) an oscillatory
behaviour, resulting in, for example, a quick succession of such events. The
model therefore might serve as a paradigmatic model for the study of the
interplay of nonlinearity, energy transport, and extreme events