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Main Authors: Merenda, Joao V., Travieso, Gonzalo, Bruno, Odemir M.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.06513
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author Merenda, Joao V.
Travieso, Gonzalo
Bruno, Odemir M.
author_facet Merenda, Joao V.
Travieso, Gonzalo
Bruno, Odemir M.
contents Network classification plays a crucial role in the study of complex systems, impacting fields like biology, sociology, and computer science. In this research, we present an innovative benchmark dataset made up of synthetic networks that are categorized into various classes and subclasses. This dataset is specifically crafted to test the effectiveness and resilience of different network classification methods. To put these methods to the test, we also introduce various types and levels of structural noise. We evaluate five feature extraction techniques: traditional structural measures, Life-Like Network Automata (LLNA), Graph2Vec, Deterministic Tourist Walk (DTW), and its improved version, the Deterministic Tourist Walk with Bifurcation (DTWB). Our experimental results reveal that DTWB surpasses the other methods in classifying both classes and subclasses, even when faced with significant noise. LLNA and DTW also perform well, while Graph2Vec lands somewhere in the middle in terms of accuracy. Interestingly, topological measures, despite their simplicity and common usage, consistently show the weakest classification performance. These findings underscore the necessity of robust feature extraction techniques for effective network classification, particularly in noisy conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2506_06513
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Benchmarking Framework for Network Classification Methods
Merenda, Joao V.
Travieso, Gonzalo
Bruno, Odemir M.
Social and Information Networks
Network classification plays a crucial role in the study of complex systems, impacting fields like biology, sociology, and computer science. In this research, we present an innovative benchmark dataset made up of synthetic networks that are categorized into various classes and subclasses. This dataset is specifically crafted to test the effectiveness and resilience of different network classification methods. To put these methods to the test, we also introduce various types and levels of structural noise. We evaluate five feature extraction techniques: traditional structural measures, Life-Like Network Automata (LLNA), Graph2Vec, Deterministic Tourist Walk (DTW), and its improved version, the Deterministic Tourist Walk with Bifurcation (DTWB). Our experimental results reveal that DTWB surpasses the other methods in classifying both classes and subclasses, even when faced with significant noise. LLNA and DTW also perform well, while Graph2Vec lands somewhere in the middle in terms of accuracy. Interestingly, topological measures, despite their simplicity and common usage, consistently show the weakest classification performance. These findings underscore the necessity of robust feature extraction techniques for effective network classification, particularly in noisy conditions.
title A Benchmarking Framework for Network Classification Methods
topic Social and Information Networks
url https://arxiv.org/abs/2506.06513