4.0 Article

Deep Learning Exploration of Agent-Based Social Network Model Parameters

期刊

FRONTIERS IN BIG DATA
卷 4, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fdata.2021.739081

关键词

social networks; agent-based modeling; high-performance computing; metamodeling; deep learning; sensitivity analysis

资金

  1. Japan Society for the Promotion of Science (JSPS) (JSPS KAKENHI) [18H03621, 21K03362]
  2. National Research Foundation of Korea (NRF) - Ministry of Education [NRF-2018R1D1A1A09081919]
  3. NKFIH [OTKA K129124]
  4. EU H2020 Humane AI-net [952026]
  5. EU H2020 SoBigData++ [871042]
  6. EU H2020 SoBigData++ project
  7. Nordic Programme for Interdisciplinary Research project The Network Dynamics of Ethnic Integration
  8. Grants-in-Aid for Scientific Research [18H03621, 21K03362] Funding Source: KAKEN

向作者/读者索取更多资源

This study focuses on a generalized weighted social network (GWSN) model that incorporates various interaction elements, making the model's behavior complexity necessitating further investigation. Massive simulations were conducted using a supercomputer, and deep neural networks were employed for regression analysis to understand the behavioral characteristics of the model.
Interactions between humans give rise to complex social networks that are characterized by heterogeneous degree distribution, weight-topology relation, overlapping community structure, and dynamics of links. Understanding these characteristics of social networks is the primary goal of their research as they constitute scaffolds for various emergent social phenomena from disease spreading to political movements. An appropriate tool for studying them is agent-based modeling, in which nodes, representing individuals, make decisions about creating and deleting links, thus yielding various macroscopic behavioral patterns. Here we focus on studying a generalization of the weighted social network model, being one of the most fundamental agent-based models for describing the formation of social ties and social networks. This generalized weighted social network (GWSN) model incorporates triadic closure, homophilic interactions, and various link termination mechanisms, which have been studied separately in the previous works. Accordingly, the GWSN model has an increased number of input parameters and the model behavior gets excessively complex, making it challenging to clarify the model behavior. We have executed massive simulations with a supercomputer and used the results as the training data for deep neural networks to conduct regression analysis for predicting the properties of the generated networks from the input parameters. The obtained regression model was also used for global sensitivity analysis to identify which parameters are influential or insignificant. We believe that this methodology is applicable for a large class of complex network models, thus opening the way for more realistic quantitative agent-based modeling.

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