English

Rethinking Relation Classification with Graph Meaning Representations

Computation and Language 2023-12-29 v2

Abstract

In the field of natural language understanding, the intersection of neural models and graph meaning representations (GMRs) remains a compelling area of research. Despite the growing interest, a critical gap persists in understanding the exact influence of GMRs, particularly concerning relation extraction tasks. Addressing this, we introduce DAGNN-plus, a simple and parameter-efficient neural architecture designed to decouple contextual representation learning from structural information propagation. Coupled with various sequence encoders and GMRs, this architecture provides a foundation for systematic experimentation on two English and two Chinese datasets. Our empirical analysis utilizes four different graph formalisms and nine parsers. The results yield a nuanced understanding of GMRs, showing improvements in three out of the four datasets, particularly favoring English over Chinese due to highly accurate parsers. Interestingly, GMRs appear less effective in literary-domain datasets compared to general-domain datasets. These findings lay the groundwork for better-informed design of GMRs and parsers to improve relation classification, which is expected to tangibly impact the future trajectory of natural language understanding research.

Keywords

Cite

@article{arxiv.2310.09772,
  title  = {Rethinking Relation Classification with Graph Meaning Representations},
  author = {Li Zhou and Wenyu Chen and Dingyi Zeng and Malu Zhang and Daniel Hershcovich},
  journal= {arXiv preprint arXiv:2310.09772},
  year   = {2023}
}

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10 pages