Unraveling hidden interactions in complex systems with deep learning

Abstract Rich phenomena from complex systems have long intrigued researchers, and yet modeling system micro-dynamics and inferring the forms of interaction remain challenging for conventional data-driven approaches, being generally established by scientists with human ingenuity. In this study, we pr...

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Main Authors: Seungwoong Ha, Hawoong Jeong
Format: Article
Language:English
Published: Nature Publishing Group 2021-06-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-91878-w
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spelling doaj-9b596c2186b345608377c08d8edfb7912021-06-20T11:31:18ZengNature Publishing GroupScientific Reports2045-23222021-06-0111111310.1038/s41598-021-91878-wUnraveling hidden interactions in complex systems with deep learningSeungwoong Ha0Hawoong Jeong1Department of Physics, Korea Advanced Institute of Science and TechnologyDepartment of Physics, Korea Advanced Institute of Science and TechnologyAbstract Rich phenomena from complex systems have long intrigued researchers, and yet modeling system micro-dynamics and inferring the forms of interaction remain challenging for conventional data-driven approaches, being generally established by scientists with human ingenuity. In this study, we propose AgentNet, a model-free data-driven framework consisting of deep neural networks to reveal and analyze the hidden interactions in complex systems from observed data alone. AgentNet utilizes a graph attention network with novel variable-wise attention to model the interaction between individual agents, and employs various encoders and decoders that can be selectively applied to any desired system. Our model successfully captured a wide variety of simulated complex systems, namely cellular automata (discrete), the Vicsek model (continuous), and active Ornstein–Uhlenbeck particles (non-Markovian) in which, notably, AgentNet’s visualized attention values coincided with the true variable-wise interaction strengths and exhibited collective behavior that was absent in the training data. A demonstration with empirical data from a flock of birds showed that AgentNet could identify hidden interaction ranges exhibited by real birds, which cannot be detected by conventional velocity correlation analysis. We expect our framework to open a novel path to investigating complex systems and to provide insight into general process-driven modeling.https://doi.org/10.1038/s41598-021-91878-w
collection DOAJ
language English
format Article
sources DOAJ
author Seungwoong Ha
Hawoong Jeong
spellingShingle Seungwoong Ha
Hawoong Jeong
Unraveling hidden interactions in complex systems with deep learning
Scientific Reports
author_facet Seungwoong Ha
Hawoong Jeong
author_sort Seungwoong Ha
title Unraveling hidden interactions in complex systems with deep learning
title_short Unraveling hidden interactions in complex systems with deep learning
title_full Unraveling hidden interactions in complex systems with deep learning
title_fullStr Unraveling hidden interactions in complex systems with deep learning
title_full_unstemmed Unraveling hidden interactions in complex systems with deep learning
title_sort unraveling hidden interactions in complex systems with deep learning
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-06-01
description Abstract Rich phenomena from complex systems have long intrigued researchers, and yet modeling system micro-dynamics and inferring the forms of interaction remain challenging for conventional data-driven approaches, being generally established by scientists with human ingenuity. In this study, we propose AgentNet, a model-free data-driven framework consisting of deep neural networks to reveal and analyze the hidden interactions in complex systems from observed data alone. AgentNet utilizes a graph attention network with novel variable-wise attention to model the interaction between individual agents, and employs various encoders and decoders that can be selectively applied to any desired system. Our model successfully captured a wide variety of simulated complex systems, namely cellular automata (discrete), the Vicsek model (continuous), and active Ornstein–Uhlenbeck particles (non-Markovian) in which, notably, AgentNet’s visualized attention values coincided with the true variable-wise interaction strengths and exhibited collective behavior that was absent in the training data. A demonstration with empirical data from a flock of birds showed that AgentNet could identify hidden interaction ranges exhibited by real birds, which cannot be detected by conventional velocity correlation analysis. We expect our framework to open a novel path to investigating complex systems and to provide insight into general process-driven modeling.
url https://doi.org/10.1038/s41598-021-91878-w
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