TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Weisfeiler-Leman in the BAMBOO: Novel AMR Graph Metrics an...

Weisfeiler-Leman in the BAMBOO: Novel AMR Graph Metrics and a Benchmark for AMR Graph Similarity

Juri Opitz, Angel Daza, Anette Frank

2021-08-26Sentence SimilarityAMR Graph SimilarityGraph SimilarityGraph Matching
PaperPDF

Abstract

Several metrics have been proposed for assessing the similarity of (abstract) meaning representations (AMRs), but little is known about how they relate to human similarity ratings. Moreover, the current metrics have complementary strengths and weaknesses: some emphasize speed, while others make the alignment of graph structures explicit, at the price of a costly alignment step. In this work we propose new Weisfeiler-Leman AMR similarity metrics that unify the strengths of previous metrics, while mitigating their weaknesses. Specifically, our new metrics are able to match contextualized substructures and induce n:m alignments between their nodes. Furthermore, we introduce a Benchmark for AMR Metrics based on Overt Objectives (BAMBOO), the first benchmark to support empirical assessment of graph-based MR similarity metrics. BAMBOO maximizes the interpretability of results by defining multiple overt objectives that range from sentence similarity objectives to stress tests that probe a metric's robustness against meaning-altering and meaning-preserving graph transformations. We show the benefits of BAMBOO by profiling previous metrics and our own metrics. Results indicate that our novel metrics may serve as a strong baseline for future work.

Results

TaskDatasetMetricValueModel
Graph MatchingRARESpearman Correlation90.39WLK
AMR Graph SimilarityBenchmark for AMR Metrics based on Overt ObjectivesPearson’s ρ (amean)54.9WWLKΘ
AMR Graph SimilarityBenchmark for AMR Metrics based on Overt ObjectivesPearson’s ρ (amean)52.22S2MATCH
AMR Graph SimilarityBenchmark for AMR Metrics based on Overt ObjectivesSpearman Correlation50.89S2MATCH
AMR Graph SimilarityBenchmark for AMR Metrics based on Overt ObjectivesPearson’s ρ (amean)51.28SMATCH
AMR Graph SimilarityBenchmark for AMR Metrics based on Overt ObjectivesSpearman Correlation50.44SMATCH
AMR Graph SimilarityBenchmark for AMR Metrics based on Overt ObjectivesPearson’s ρ (amean)50.44WLK
AMR Graph SimilarityBenchmark for AMR Metrics based on Overt ObjectivesSpearman Correlation49.64WLK
AMR Graph SimilarityBenchmark for AMR Metrics based on Overt ObjectivesPearson’s ρ (amean)46.29SEMA
AMR Graph SimilarityBenchmark for AMR Metrics based on Overt ObjectivesPearson’s ρ (amean)46.15SEMBLEU, k=4
AMR Graph SimilarityBenchmark for AMR Metrics based on Overt ObjectivesPearson’s ρ (amean)45.3WWLK

Related Papers

Pieceformer: Similarity-Driven Knowledge Transfer via Scalable Graph Transformer in VLSI2025-06-18Probing Neural Topology of Large Language Models2025-06-01PackHero: A Scalable Graph-based Approach for Efficient Packer Identification2025-05-31EL4NER: Ensemble Learning for Named Entity Recognition via Multiple Small-Parameter Large Language Models2025-05-29Learning without Isolation: Pathway Protection for Continual Learning2025-05-24Improving Chemical Understanding of LLMs via SMILES Parsing2025-05-22SCENIR: Visual Semantic Clarity through Unsupervised Scene Graph Retrieval2025-05-21Cross-modal Knowledge Transfer Learning as Graph Matching Based on Optimal Transport for ASR2025-05-19