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Entity Relation Extraction as Dependency Parsing in Visually Rich Documents (2110.09915v1)

Published 19 Oct 2021 in cs.CL, cs.AI, and cs.LG

Abstract: Previous works on key information extraction from visually rich documents (VRDs) mainly focus on labeling the text within each bounding box (i.e., semantic entity), while the relations in-between are largely unexplored. In this paper, we adapt the popular dependency parsing model, the biaffine parser, to this entity relation extraction task. Being different from the original dependency parsing model which recognizes dependency relations between words, we identify relations between groups of words with layout information instead. We have compared different representations of the semantic entity, different VRD encoders, and different relation decoders. The results demonstrate that our proposed model achieves 65.96% F1 score on the FUNSD dataset. As for the real-world application, our model has been applied to the in-house customs data, achieving reliable performance in the production setting.

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Authors (6)
  1. Yue Zhang (620 papers)
  2. Bo Zhang (633 papers)
  3. Rui Wang (996 papers)
  4. Junjie Cao (72 papers)
  5. Chen Li (386 papers)
  6. Zuyi Bao (6 papers)
Citations (29)

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