Article Accepted Manuscript

The Hybrid Modern Network Model: A Multi-Technique Framework for Comprehensive Network Analysis

Author(s) / Creator(s)

Kyriazos, Theodoros
Poga, Mary

Abstract / Description

This research addresses the limitations of traditional network models in capturing the complexity and dynamics of real-world social networks. Motivated by the need for a more comprehensive and flexible framework, the study introduces the Hybrid Modern Network Model (HMNM). The HMNM integrates foundational models like the Stochastic Block Model (SBM) and Preferential Attachment with advanced machine learning techniques, including Graph Neural Networks (GNNs), Reinforcement Learning (RL), Hierarchical Random Graphs (HRGs), Generative Adversarial Networks (GANs), and Variational Autoencoders (VAEs). The methods employed involve constructing initial network structures using SBM, simulating network growth through preferential Attachment, learning node embeddings with GNNs, dynamically optimizing network properties using RL, capturing hierarchical community structures with HRGs, controlling degree distributions using GANs, and uncovering latent patterns with VAEs. The empirical illustration of HMNM highlights its effectiveness in providing a more realistic, scalable, and comprehensive analysis of social networks compared to traditional models. Integrating diverse methodologies allows for accurately modeling of network structures, dynamic processes, and latent patterns. In conclusion, the HMNM offers significant advancements in network modeling, providing a robust and flexible framework for analyzing social networks. This model overcomes the limitations of traditional models and delivers deeper insights into the complexities and dynamics of social structures. Future research will optimize the HMNM and explore its applications across various domains. The R programming code used for the network simulations and visualizations is conceptual and demonstrates the HMNM framework. The results and metrics are illustrative placeholders, emphasizing the methodology rather than empirical validation.

Keyword(s)

Hybrid Modern Network Model social network analysis Graph Neural Networks Reinforcement Learning Generative Adversarial Networks Stochastic Block Model

Persistent Identifier

Date of first publication

2025-01-21

Journal title

Interpersona: An International Journal on Personal Relationships

Publisher

PsychArchives

Publication status

acceptedVersion

Review status

reviewed

Is version of

Citation

Kyriazos, T., & Poga, M. (in press). The Hybrid Modern Network Model: A multi-technique framework for comprehensive network analysis [Author Accepted manuscript]. Interpersona: An International Journal on Personal Relationships. https://doi.org/10.23668/psycharchives.15950
  • Author(s) / Creator(s)
    Kyriazos, Theodoros
  • Author(s) / Creator(s)
    Poga, Mary
  • PsychArchives acquisition timestamp
    2025-01-21T13:40:02Z
  • Made available on
    2025-01-21T13:40:02Z
  • Date of first publication
    2025-01-21
  • Abstract / Description
    This research addresses the limitations of traditional network models in capturing the complexity and dynamics of real-world social networks. Motivated by the need for a more comprehensive and flexible framework, the study introduces the Hybrid Modern Network Model (HMNM). The HMNM integrates foundational models like the Stochastic Block Model (SBM) and Preferential Attachment with advanced machine learning techniques, including Graph Neural Networks (GNNs), Reinforcement Learning (RL), Hierarchical Random Graphs (HRGs), Generative Adversarial Networks (GANs), and Variational Autoencoders (VAEs). The methods employed involve constructing initial network structures using SBM, simulating network growth through preferential Attachment, learning node embeddings with GNNs, dynamically optimizing network properties using RL, capturing hierarchical community structures with HRGs, controlling degree distributions using GANs, and uncovering latent patterns with VAEs. The empirical illustration of HMNM highlights its effectiveness in providing a more realistic, scalable, and comprehensive analysis of social networks compared to traditional models. Integrating diverse methodologies allows for accurately modeling of network structures, dynamic processes, and latent patterns. In conclusion, the HMNM offers significant advancements in network modeling, providing a robust and flexible framework for analyzing social networks. This model overcomes the limitations of traditional models and delivers deeper insights into the complexities and dynamics of social structures. Future research will optimize the HMNM and explore its applications across various domains. The R programming code used for the network simulations and visualizations is conceptual and demonstrates the HMNM framework. The results and metrics are illustrative placeholders, emphasizing the methodology rather than empirical validation.
    en
  • Publication status
    acceptedVersion
  • Review status
    reviewed
  • Citation
    Kyriazos, T., & Poga, M. (in press). The Hybrid Modern Network Model: A multi-technique framework for comprehensive network analysis [Author Accepted manuscript]. Interpersona: An International Journal on Personal Relationships. https://doi.org/10.23668/psycharchives.15950
  • ISSN
    1981-6472
  • Persistent Identifier
    https://hdl.handle.net/20.500.12034/11365
  • Persistent Identifier
    https://doi.org/10.23668/psycharchives.15950
  • Language of content
    eng
  • Publisher
    PsychArchives
  • Is version of
    https://doi.org/10.5964/ijpr.15021
  • Keyword(s)
    Hybrid Modern Network Model
  • Keyword(s)
    social network analysis
  • Keyword(s)
    Graph Neural Networks
  • Keyword(s)
    Reinforcement Learning
  • Keyword(s)
    Generative Adversarial Networks
  • Keyword(s)
    Stochastic Block Model
  • Dewey Decimal Classification number(s)
    150
  • Title
    The Hybrid Modern Network Model: A Multi-Technique Framework for Comprehensive Network Analysis
    en
  • DRO type
    article
  • Journal title
    Interpersona: An International Journal on Personal Relationships
  • Visible tag(s)
    PsychOpen GOLD
  • Visible tag(s)
    Accepted Manuscript