Graph Transformers for Query Plan Representation: Potentials and Challenges
Summary: Finds Graph Transformer Networks (GTNs) excel at query-plan representation (new taxonomy) but degrade with scarce training data. Proposes data augmentation and replacing LM-style components in GTNs, yielding SOTA on JOB/TPC-H/TPC-DS and TPC-DS→TPC-H transfer. (summarized by gpt-5-mini on Feb 09 2026)
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Authors
- 1. Chenghao Lyu
- 2. Guillaume Lachaud
- 3. Gabriel Lozano
- 4. Yanlei Diao
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Citations counted here include only citations to other VLDB/SIGMOD/CIDR/PODS papers in this database.
| Rank | Cited Paper | Year | Venue | Pagerank |
|---|---|---|---|---|
| 9,108 | BASE: Bridging the Gap between Cost and Latency for Query Optimization | 2023 | VLDB | 4.3950066e-05 |
| 9,213 | PACE: Poisoning Attacks on Learned Cardinality Estimation | 2024 | SIGMOD | 4.3721075e-05 |