Incorporating Graph Information in Transformer-based AMR Parsing

Jul 1, 2023·
Pavlo Vasylenko
,
Pere Lluı́s Huguet Cabot
,
Abelardo Carlos Mart\ńez Lorenzo
,
Roberto Navigli
· 0 min read
Abstract
Abstract Meaning Representation (AMR) is a Semantic Parsing formalism that aims at providing a semantic graph abstraction representing a given text. Current approaches are based on autoregressive language models such as BART or T5, fine-tuned through Teacher Forcing to obtain a linearized version of the AMR graph from a sentence. In this paper, we present LeakDistill, a model and method that explores a modification to the Transformer architecture, using structural adapters to explicitly incorporate graph information into the learned representations and improve AMR parsing performance. Our experiments show how, by employing word-to-node alignment to embed graph structural information into the encoder at training time, we can obtain state-of-the-art AMR parsing through self-knowledge distillation, even without the use of additional data. We release the code at r̆lhttp://www.github.com/sapienzanlp/LeakDistill.
Type
Publication
Findings of the Association for Computational Linguistics: ACL 2023