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High-order Semantic Role Labeling (2010.04641v1)

Published 9 Oct 2020 in cs.CL

Abstract: Semantic role labeling is primarily used to identify predicates, arguments, and their semantic relationships. Due to the limitations of modeling methods and the conditions of pre-identified predicates, previous work has focused on the relationships between predicates and arguments and the correlations between arguments at most, while the correlations between predicates have been neglected for a long time. High-order features and structure learning were very common in modeling such correlations before the neural network era. In this paper, we introduce a high-order graph structure for the neural semantic role labeling model, which enables the model to explicitly consider not only the isolated predicate-argument pairs but also the interaction between the predicate-argument pairs. Experimental results on 7 languages of the CoNLL-2009 benchmark show that the high-order structural learning techniques are beneficial to the strong performing SRL models and further boost our baseline to achieve new state-of-the-art results.

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Authors (4)
  1. Zuchao Li (76 papers)
  2. Hai Zhao (227 papers)
  3. Rui Wang (996 papers)
  4. Kevin Parnow (6 papers)
Citations (28)

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