Author
Listed:
- MARÃ A-DEL-CARMEN SOTO-CAMACHO
(SEPI–UPIICSA, Instituto Politecnico Nacional, Av. Te 950, Granjas Mexico, Iztacalco, 08400 Ciudad de México, México)
- MARCELL NAGY
(Department of Stochastics, Institute of Mathematics, Budapest University of Technology and Economics, Műegyetem rkp. 3., H-1111 Budapest, Hungary)
- ROLAND MOLONTAY
(Department of Stochastics, Institute of Mathematics, Budapest University of Technology and Economics, Műegyetem rkp. 3., H-1111 Budapest, Hungary)
- ALDO RAMIREZ-ARELLANO
(SEPI–UPIICSA, Instituto Politecnico Nacional, Av. Te 950, Granjas Mexico, Iztacalco, 08400 Ciudad de México, México)
Abstract
Network classification plays a crucial role in various domains like social network analysis and bioinformatics. While Graph Neural Networks (GNNs) have achieved significant success, they struggle with the problem of over-smoothing and capturing global information. Additionally, GNNs require a large amount of data, hindering performance on small datasets. To address these limitations, we propose a novel approach utilizing Deng’s entropy, capturing network topology and node/edge information. This entropy is calculated at multiple scales, resulting in an entropy sequence that incorporates both local and global features. We embed the networks by combining the entropy sequences for edges and nodes into a matrix, which then are fed into a bidirectional long short-term memory network to perform network classification. Our method outperforms GNNs in the bioinformatics, social, and molecule domains, achieving superior classification power on nine out of eleven benchmark datasets. Further experiments with both real-world and synthetic datasets highlight its exceptional performance, achieving an accuracy of 97.24% on real-world complex networks and 100% on synthetic complex networks. Additionally, our approach proves effective on datasets with a small number of networks and unbalanced classes and excels at distinguishing between synthetic and real-world networks.
Suggested Citation
Marã A-Del-Carmen Soto-Camacho & Marcell Nagy & Roland Molontay & Aldo Ramirez-Arellano, 2025.
"Complex Network Classification Using Deng Entropy And Bidirectional Long Short-Term Memory,"
FRACTALS (fractals), World Scientific Publishing Co. Pte. Ltd., vol. 33(01), pages 1-15.
Handle:
RePEc:wsi:fracta:v:33:y:2025:i:01:n:s0218348x25500070
DOI: 10.1142/S0218348X25500070
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