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Main Authors: Grayeli, Arya, Swarup, Vipin, Noel, Steven E.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.07777
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author Grayeli, Arya
Swarup, Vipin
Noel, Steven E.
author_facet Grayeli, Arya
Swarup, Vipin
Noel, Steven E.
contents Obtaining real-world network datasets is often challenging because of privacy, security, and computational constraints. In the absence of such datasets, graph generative models become essential tools for creating synthetic datasets. In this paper, we introduce a novel machine learning model for generating high-fidelity synthetic network flow datasets that are representative of real-world networks. Our approach involves the generation of dynamic multigraphs using a stochastic Kronecker graph generator for structure generation and a tabular generative adversarial network for feature generation. We further employ an XGBoost (eXtreme Gradient Boosting) model for graph alignment, ensuring accurate overlay of features onto the generated graph structure. We evaluate our model using new metrics that assess both the accuracy and diversity of the synthetic graphs. Our results demonstrate improvements in accuracy over previous large-scale graph generation methods while maintaining similar efficiency. We also explore the trade-off between accuracy and diversity in synthetic graph dataset creation, a topic not extensively covered in related works. Our contributions include the synthesis and evaluation of large real-world netflow datasets and the definition of new metrics for evaluating synthetic graph generative models.
format Preprint
id arxiv_https___arxiv_org_abs_2505_07777
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Synthesizing Diverse Network Flow Datasets with Scalable Dynamic Multigraph Generation
Grayeli, Arya
Swarup, Vipin
Noel, Steven E.
Machine Learning
Networking and Internet Architecture
Obtaining real-world network datasets is often challenging because of privacy, security, and computational constraints. In the absence of such datasets, graph generative models become essential tools for creating synthetic datasets. In this paper, we introduce a novel machine learning model for generating high-fidelity synthetic network flow datasets that are representative of real-world networks. Our approach involves the generation of dynamic multigraphs using a stochastic Kronecker graph generator for structure generation and a tabular generative adversarial network for feature generation. We further employ an XGBoost (eXtreme Gradient Boosting) model for graph alignment, ensuring accurate overlay of features onto the generated graph structure. We evaluate our model using new metrics that assess both the accuracy and diversity of the synthetic graphs. Our results demonstrate improvements in accuracy over previous large-scale graph generation methods while maintaining similar efficiency. We also explore the trade-off between accuracy and diversity in synthetic graph dataset creation, a topic not extensively covered in related works. Our contributions include the synthesis and evaluation of large real-world netflow datasets and the definition of new metrics for evaluating synthetic graph generative models.
title Synthesizing Diverse Network Flow Datasets with Scalable Dynamic Multigraph Generation
topic Machine Learning
Networking and Internet Architecture
url https://arxiv.org/abs/2505.07777