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EARLY: Efficient and Reliable Graph Neural Network for Dynamic Graphs
Summary: EARLY proposes an efficient and reliable GNN update mechanism for dynamic graphs. It identifies top-k influential nodes affected by events and applies diversity-aware, layer-wise sampling to curb neighbor redundancy, reducing sampling error and yielding more reliable representations under continuous updates.
(summarized by gpt-5-nano on Feb 09 2026)
- Paper ID
- 6666
- Venue
- SIGMOD
- Year
- 2023
- Pagerank
- 5.0453531e-05
- Overall Rank
- 6,485 | 54.89%
- DOI
-
10.1145/3589308
Incoming Non-self Citations Over Time
Incoming Citations (Sorted by Pagerank)
Showing 8 of 8 citing papers.
Outgoing Citations (Sorted by Pagerank)
Showing 18 of 18 cited papers.
Citations counted here include only citations to other VLDB/SIGMOD/CIDR/PODS papers in this database.
| Rank |
Cited Paper |
Year |
Venue |
Pagerank |
| 278 |
AliGraph: A Comprehensive Graph Neural Network Platform |
2019 |
VLDB |
0.00029230623 |
| 486 |
Fast Incremental and Personalized PageRank |
2011 |
VLDB |
0.00022068545 |
| 636 |
APAN: Asynchronous Propagation Attention Network for Real-time Temporal Graph Embedding |
2021 |
SIGMOD |
0.00018846494 |
| 886 |
Fast Personalized PageRank on MapReduce |
2011 |
SIGMOD |
0.00015597161 |
| 1,387 |
TGL: A General Framework for Temporal GNN Training on Billion-Scale Graphs |
2022 |
VLDB |
0.00012261568 |
| 1,474 |
Homogeneous Network Embedding for Massive Graphs via Reweighted Personalized PageRank |
2020 |
VLDB |
0.00011825229 |
| 2,643 |
Camel: Managing Data for Efficient Stream Learning |
2022 |
SIGMOD |
8.384956e-05 |
| 2,826 |
Regular Path Query Evaluation on Streaming Graphs |
2020 |
SIGMOD |
8.056119e-05 |
| 2,897 |
ICS-GNN: Lightweight Interactive Community Search via Graph Neural Network |
2021 |
VLDB |
7.9450406e-05 |
| 3,025 |
NeutronStar: Distributed GNN Training with Hybrid Dependency Management |
2022 |
SIGMOD |
7.6906935e-05 |
| 3,369 |
Query Driven-Graph Neural Networks for Community Search: From Non-Attributed, Attributed, to Interactive Attributed |
2022 |
VLDB |
7.171452e-05 |
| 4,165 |
Grain: Improving Data Efficiency of Graph Neural Networks via Diversified Influence Maximization |
2021 |
VLDB |
6.3921956e-05 |
| 4,703 |
Medical Entity Disambiguation Using Graph Neural Networks |
2021 |
SIGMOD |
5.9855056e-05 |
| 5,521 |
Efficient Streaming Subgraph Isomorphism with Graph Neural Networks |
2021 |
VLDB |
5.4614637e-05 |
| 5,766 |
Scalable and Effective Bipartite Network Embedding |
2022 |
SIGMOD |
5.3363253e-05 |
| 5,895 |
METRO: A Generic Graph Neural Network Framework for Multivariate Time Series Forecasting |
2022 |
VLDB |
5.2857247e-05 |
| 6,566 |
Reliable Data Distillation on Graph Convolutional Network |
2020 |
SIGMOD |
5.0074274e-05 |
| 9,353 |
Points-of-Interest Relationship Inference with Spatial-enriched Graph Neural Networks |
2022 |
VLDB |
4.3519095e-05 |
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