Frank, Jonatan and Hoffmann, Marcel and Lell, Nicolas and Richerby, David and Scherp, Ansgar (2025) Lifelong Graph Learning for Graph Summarization. In: 23rd IEEE/WIC International Conference on Web Intelligence and Intelligent Agent Technology, 2024-12-09 - 2024-12-12, Bangkok, Thailand.
Frank, Jonatan and Hoffmann, Marcel and Lell, Nicolas and Richerby, David and Scherp, Ansgar (2025) Lifelong Graph Learning for Graph Summarization. In: 23rd IEEE/WIC International Conference on Web Intelligence and Intelligent Agent Technology, 2024-12-09 - 2024-12-12, Bangkok, Thailand.
Frank, Jonatan and Hoffmann, Marcel and Lell, Nicolas and Richerby, David and Scherp, Ansgar (2025) Lifelong Graph Learning for Graph Summarization. In: 23rd IEEE/WIC International Conference on Web Intelligence and Intelligent Agent Technology, 2024-12-09 - 2024-12-12, Bangkok, Thailand.
Abstract
Summarizing web graphs is challenging due to the heterogeneity of the modeled information and its changes over time. We investigate the use of neural networks for lifelong graph summarization. Assuming we observe the web graph at a certain time, we train the networks to summarize graph vertices. We apply this trained network to summarize the vertices of the changed graph at the next point in time. Subsequently, we continue training and evaluating the network to perform lifelong graph summarization. We use the GNNs Graph-MLP and GraphSAINT, as well as an MLP baseline, to summarize the temporal graphs. We compare 1-hop and 2-hop summaries. We investigate the impact of reusing parameters from a previous snapshot by measuring the backward and forward transfer and the forgetting rate of the neural networks. Our extensive experiments on ten weekly snapshots of a web graph with over 100M edges, sampled in 2012 and 2022, show that all networks predominantly use 1-hop information to determine the summary, even when performing 2-hop summarization. Due to the heterogeneity of web graphs, in some snapshots, the 2-hop summary produces over ten times more vertex summaries than the 1-hop summary. When using the network trained on the last snapshot from 2012 and applying it to the first snapshot of 2022, we observe a strong drop in accuracy. We attribute this drop over the ten-year time warp to the strongly increased heterogeneity of the web graph in 2022.
| Item Type: | Conference or Workshop Item (Paper) |
|---|---|
| Additional Information: | Published proceedings: _not provided_ |
| Uncontrolled Keywords: | Training, Accuracy, Current measurement, Source coding, Time measurement, Resource description framework, Graph neural networks, Intelligent agents |
| Divisions: | Faculty of Science and Health Faculty of Science and Health > Computer Science and Electronic Engineering, School of |
| SWORD Depositor: | Unnamed user with email elements@essex.ac.uk |
| Depositing User: | Unnamed user with email elements@essex.ac.uk |
| Date Deposited: | 09 Jul 2026 11:40 |
| Last Modified: | 09 Jul 2026 11:40 |
| URI: | http://repository.essex.ac.uk/id/eprint/40044 |
Available files
Filename: 2407.18042v2.pdf