Machine Learning Link Inference of Noisy Delay-Coupled Networks with Optoelectronic Experimental Tests

被引:23
作者
Banerjee, Amitava [1 ,2 ]
Hart, Joseph D. [3 ]
Roy, Rajarshi [1 ,2 ,4 ]
Ott, Edward [1 ,2 ,5 ]
机构
[1] Univ Maryland, Dept Phys, College Pk, MD 20742 USA
[2] Univ Maryland, Inst Res Elect & Appl Phys, College Pk, MD 20742 USA
[3] US Naval Res Lab, Opt Sci Div, Washington, DC 20375 USA
[4] Univ Maryland, Inst Phys Sci & Technol, College Pk, MD 20742 USA
[5] Univ Maryland, Dept Elect & Comp Engn, College Pk, MD 20742 USA
基金
美国国家科学基金会;
关键词
GENERALIZED SYNCHRONIZATION; SYSTEMS; DYNAMICS; CHAOS;
D O I
10.1103/PhysRevX.11.031014
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
We devise a machine learning technique to solve the general problem of inferring network links that have time delays using only time series data of the network nodal states. This task has applications in many fields, e.g., from applied physics, data science, and engineering to neuroscience and biology. Our approach is to first train a type of machine learning system known as reservoir computing to mimic the dynamics of the unknown network. We then use the trained parameters of the reservoir system output layer to deduce an estimate of the unknown network structure. Our technique, by its nature, is noninvasive but is motivated by the widely used invasive network inference method, whereby the responses to active perturbations applied to the network are observed and employed to infer network links (e.g., knocking down genes to infer gene regulatory networks). We test this technique on experimental and simulated data from delay-coupled optoelectronic oscillator networks, with both identical and heterogeneous delays along the links. We show that the technique often yields very good results, particularly if the system does not exhibit synchrony. We also find that the presence of dynamical noise can strikingly enhance the accuracy and ability of our technique, especially in networks that exhibit synchrony.
引用
收藏
页数:19
相关论文
共 98 条
[1]   Statistical mechanics of complex networks [J].
Albert, R ;
Barabási, AL .
REVIEWS OF MODERN PHYSICS, 2002, 74 (01) :47-97
[2]   Network inference, analysis, and modeling in systems biology [J].
Albert, Reke .
PLANT CELL, 2007, 19 (11) :3327-3338
[3]   Information processing using a single dynamical node as complex system [J].
Appeltant, L. ;
Soriano, M. C. ;
Van der Sande, G. ;
Danckaert, J. ;
Massar, S. ;
Dambre, J. ;
Schrauwen, B. ;
Mirasso, C. R. ;
Fischer, I. .
NATURE COMMUNICATIONS, 2011, 2
[4]   Chaos-based communications at high bit rates using commercial fibre-optic links [J].
Argyris, A ;
Syvridis, D ;
Larger, L ;
Annovazzi-Lodi, V ;
Colet, P ;
Fischer, I ;
García-Ojalvo, J ;
Mirasso, CR ;
Pesquera, L ;
Shore, KA .
NATURE, 2005, 438 (7066) :343-346
[5]   Using machine learning to assess short term causal dependence and infer network links [J].
Banerjee, Amitava ;
Pathak, Jaideep ;
Roy, Rajarshi ;
Restrepo, Juan G. ;
Ott, Edward .
CHAOS, 2019, 29 (12)
[6]   Genetic Interaction Networks: Toward an Understanding of Heritability [J].
Baryshnikova, Anastasia ;
Costanzo, Michael ;
Myers, Chad L. ;
Andrews, Brenda ;
Boone, Charles .
ANNUAL REVIEW OF GENOMICS AND HUMAN GENETICS, VOL 14, 2013, 14 :111-133
[7]   Network neuroscience [J].
Bassett, Danielle S. ;
Sporns, Olaf .
NATURE NEUROSCIENCE, 2017, 20 (03) :353-364
[9]   Broadband Chaos Generated by an Optoelectronic Oscillator [J].
Callan, Kristine E. ;
Illing, Lucas ;
Gao, Zheng ;
Gauthier, Daniel J. ;
Schoell, Eckehard .
PHYSICAL REVIEW LETTERS, 2010, 104 (11)
[10]   Network embedding for link prediction: The pitfall and improvement [J].
Cao, Ren-Meng ;
Liu, Si-Yuan ;
Xu, Xiao-Ke .
CHAOS, 2019, 29 (10)