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Deep-Graph-Sprints: Accelerated Representation Learning in Continuous-Time Dynamic Graphs

Authors :
Eddin, Ahmad Naser
Bono, Jacopo
Aparício, David
Ferreira, Hugo
Ribeiro, Pedro
Bizarro, Pedro
Publication Year :
2024

Abstract

Continuous-time dynamic graphs (CTDGs) are essential for modeling interconnected, evolving systems. Traditional methods for extracting knowledge from these graphs often depend on feature engineering or deep learning. Feature engineering is limited by the manual and time-intensive nature of crafting features, while deep learning approaches suffer from high inference latency, making them impractical for real-time applications. This paper introduces Deep-Graph-Sprints (DGS), a novel deep learning architecture designed for efficient representation learning on CTDGs with low-latency inference requirements. We benchmark DGS against state-of-the-art feature engineering and graph neural network methods using five diverse datasets. The results indicate that DGS achieves competitive performance while improving inference speed up to 12x compared to other deep learning approaches on our tested benchmarks. Our method effectively bridges the gap between deep representation learning and low-latency application requirements for CTDGs.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2407.07712
Document Type :
Working Paper