(ECML2024 MLG Worshop) Temporal receptive field in dynamic graph learning: A comprehensive analysis

Published in European machine learning and data mining conference (ECML). 2024, 2024

Recommended citation: Karmim, Y., Yang, L., S’Niehotta, R. F., Chatelain, C., Adam, S., & Thome, N. (2024). Temporal receptive field in dynamic graph learning: A comprehensive analysis. ECML-PKDD Machine Learning on Graphs Workshop. https://hal.science/hal-04647025 https://arxiv.org/abs/2407.12370

Dynamic link prediction is a critical task in the analysis of evolving networks, with applications ranging from recommender systems to economic exchanges. However, the concept of the temporal receptive field, which refers to the temporal context that models use for making predictions, has been largely overlooked and insufficiently analyzed in existing research. In this study, we present a comprehensive analysis of the temporal receptive field in dynamic graph learning. By examining multiple datasets and models, we formalize the role of temporal receptive field and highlight their crucial influence on predictive accuracy. Our results demonstrate that appropriately chosen temporal receptive field can significantly enhance model performance, while for some models, overly large windows may introduce noise and reduce ac curacy. We conduct extensive benchmarking to validate our findings, ensuring that all experiments are fully reproducible. Code is available at this page. Download paper here