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AMRs Assemble! Learning to Ensemble with Autoregressive Models for AMR Parsing

Authors :
Lorenzo, Abelardo Carlos Martínez
Cabot, Pere-Lluís Huguet
Navigli, Roberto
Publication Year :
2023

Abstract

In this paper, we examine the current state-of-the-art in AMR parsing, which relies on ensemble strategies by merging multiple graph predictions. Our analysis reveals that the present models often violate AMR structural constraints. To address this issue, we develop a validation method, and show how ensemble models can exploit SMATCH metric weaknesses to obtain higher scores, but sometimes result in corrupted graphs. Additionally, we highlight the demanding need to compute the SMATCH score among all possible predictions. To overcome these challenges, we propose two novel ensemble strategies based on Transformer models, improving robustness to structural constraints, while also reducing the computational time. Our methods provide new insights for enhancing AMR parsers and metrics. Our code is available at \href{https://www.github.com/babelscape/AMRs-Assemble}{github.com/babelscape/AMRs-Assemble}.<br />Comment: ACL 2023. Please cite authors correctly using both lastnames ("Mart\'inez Lorenzo", "Huguet Cabot")

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.10786
Document Type :
Working Paper