Inferring Functional Connectivity From Time-Series of Events in Large Scale Network Deployments

被引:6
|
作者
Messager, Antoine [1 ]
Parisis, George [1 ]
Kiss, Istvan Z. [2 ]
Harper, Robert [3 ]
Tee, Phil [4 ]
Berthouze, Luc [1 ]
机构
[1] Univ Sussex, Dept Informat, Brighton BN1 9RH, E Sussex, England
[2] Univ Sussex, Dept Math, Brighton BN1 9RH, E Sussex, England
[3] Moogsoft Ltd, Kingston Upon Thames KT1 1LF, Surrey, England
[4] Moogsoft Inc, San Francisco, CA 94111 USA
关键词
Network management; network events; functional connectivity inference;
D O I
10.1109/TNSM.2019.2932896
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
To respond rapidly and accurately to network and service outages, network operators must deal with a large number of events resulting from the interaction of various services operating on complex, heterogeneous and evolving networks. In this paper, we introduce the concept of functional connectivity as an alternative approach to monitoring those events. Commonly used in the study of brain dynamics, functional connectivity is defined in terms of the presence of statistical dependencies between nodes. Although a number of techniques exist to infer functional connectivity in brain networks, their straightforward application to commercial network deployments is severely challenged by: (a) non-stationarity of the functional connectivity, (b) sparsity of the time-series of events, and (c) absence of an explicit model describing how events propagate through the network or indeed whether they propagate. Thus, in this paper, we present a novel inference approach whereby two nodes are defined as forming a functional edge if they emit substantially more coincident or short-lagged events than would be expected if they were statistically independent. The output of the method is an undirected weighted graph, where the weight of an edge between two nodes denotes the strength of the statistical dependence between them. We develop a model of time-varying functional connectivity whose parameters are determined by maximising the model's predictive power from one time window to the next. We assess the accuracy, efficiency and scalability of our method on two real datasets of network events spanning multiple months and on synthetic data for which ground truth is available. We compare our method against both a general-purpose time-varying network inference method and network management specific causal inference technique and discuss its merits in terms of sensitivity, accuracy and, importantly, scalability.
引用
收藏
页码:857 / 870
页数:14
相关论文
共 50 条
  • [1] Inferring the connectivity of coupled oscillators from time-series statistical similarity analysis
    Tirabassi, Giulio
    Sevilla-Escoboza, Ricardo
    Buldu, Javier M.
    Masoller, Cristina
    [J]. SCIENTIFIC REPORTS, 2015, 5
  • [2] Inferring the connectivity of coupled oscillators from time-series statistical similarity analysis
    Giulio Tirabassi
    Ricardo Sevilla-Escoboza
    Javier M. Buldú
    Cristina Masoller
    [J]. Scientific Reports, 5
  • [3] A method for the estimation of functional brain connectivity from time-series data
    A. Wilmer
    M. H. E. de Lussanet
    M. Lappe
    [J]. Cognitive Neurodynamics, 2010, 4 : 133 - 149
  • [4] A method for the estimation of functional brain connectivity from time-series data
    Wilmer, A.
    de Lussanet, M. H. E.
    Lappe, M.
    [J]. COGNITIVE NEURODYNAMICS, 2010, 4 (02) : 133 - 149
  • [5] On the Variability of Functional Connectivity and Network Measures in Source-Reconstructed EEG Time-Series
    Fraschini, Matteo
    La Cava, Simone Maurizio
    Didaci, Luca
    Barberini, Luigi
    [J]. ENTROPY, 2021, 23 (01) : 1 - 13
  • [6] Large-scale nonlinear Granger causality for inferring directed dependence from short multivariate time-series data
    Wismueller, Axel
    Dsouza, Adora M.
    Vosoughi, M. Ali
    Abidin, Anas
    [J]. SCIENTIFIC REPORTS, 2021, 11 (01)
  • [7] Large-scale nonlinear Granger causality for inferring directed dependence from short multivariate time-series data
    Axel Wismüller
    Adora M. Dsouza
    M. Ali Vosoughi
    Anas Abidin
    [J]. Scientific Reports, 11
  • [8] Inferring Epistasis from Genetic Time-series Data
    Sohail, Muhammad Saqib
    Louie, Raymond H. Y.
    Hong, Zhenchen
    Barton, John P.
    McKay, Matthew R.
    [J]. MOLECULAR BIOLOGY AND EVOLUTION, 2022, 39 (10)
  • [9] Inferring Gene Regulatory Network Models from Time-Series Data Using Metaheuristics
    da Silva, Jose Eduardo H.
    Betnardino, Heder S.
    Barbosa, Helio J. C.
    Vieira, Alex B.
    Campos, Luciana C. D.
    de Oliveira, Itamar L.
    [J]. 2020 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION (CEC), 2020,
  • [10] Inferring chaotic dynamics from time-series: On which length scale determinism becomes visible
    Olbrich, E
    Kantz, H
    [J]. PHYSICS LETTERS A, 1997, 232 (1-2) : 63 - 69