Decreasing graph complexity with transitive reduction to improve temporal graph classification


연구 분야: Databases



학회: International Journal of Data Science and Analytics


초록

Domains such as bioinformatics, social network analysis, and computer vision, describe relations between entities and cannot be interpreted as vectors or fixed grids. Instead, they are naturally represented by graphs. Often this kind of data evolves over time in a dynamic world, respecting a temporal order being known as temporal graphs. The latter became a challenge since subgraph patterns are very difficult to find and the distance between those patterns may change irregularly over time. While state-of-the-art methods are primarily designed for static graphs and may not capture temporal information, recent works have proposed mapping temporal graphs to static graphs to allow for the use of conventional static kernels approaches. This work presents a new method for temporal graph classification based on transitive reduction, which explores new kernels and Graph Neural Networks for temporal graph classification. We compare the transitive reduction impact on the map to static graphs in terms of accuracy and computational efficiency across different classification tasks. Experimental results demonstrate the effectiveness of the proposed mapping method in improving the accuracy of supervised classification for temporal graphs while maintaining reasonable computational efficiency.


Author Profile
Carolina Jerônimo

ImScience PUC Minas R. Dom José Gaspar 500 - Coração Eucarístico Belo Horizonte Minas Gerais 30535901 Brazil

Brazil
Author Profile
Zenilton K. G. Patrocínio Jr.

Univ de Rennes CNRS Inria IRISA 263 Av. Général Leclerc 35000 Rennes France

France
Author Profile
Simon Malinowski

ImScience PUC Minas R. Dom José Gaspar 500 - Coração Eucarístico Belo Horizonte Minas Gerais 30535901 Brazil

Brazil

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Brazil, France
사이트 Springer
좋아요 수 0

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