We propose to tackle the problem of verbal multiword expression (VMWE) identification using a neural graph parsing-based approach. Our solution involves encoding VMWE annotations as labellings of dependency trees and, subsequently, applying a neural network to model the probabilities of different labellings. This strategy can be particularly effective when applied to discontinuous VMWEs and, thanks to dense, pre-trained word vector representations, VMWEs unseen during training. Evaluation of our approach on three PARSEME datasets (German, French, and Polish) shows that it allows to achieve performance on par with the previous state-ofthe- art (Al Saied et al., 2018).
CITATION STYLE
Waszczuk, J., Ehren, R., Stodden, R., & Kallmeyer, L. (2019). A neural graph-based approach to verbal mwe identification. In ACL 2019 - Joint Workshop on Multiword Expressions and WordNet, MWE-WN 2019 - Proceedings of the Workshop (pp. 114–124). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/w19-5113
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