Kaiqun Fu, Zhiqian Chen

Abstract

Chinese characters have semantic-rich compositional information in radical form. While almost all previous research has applied CNNs to extract this compositional information, our work utilizes deep graph learning on a compact, graph-based representation of Chinese characters. This allows us to exploit temporal information within the strict stroke order used in writing characters. Our results show that our stroke-based model has potential for helping large-scale language models on some Chinese natural language understanding tasks. In particular, we demonstrate that our graph model produces more interpretable embeddings shown through word subtraction analogies and character embedding visualizations.

Jason Wang, Kaiqun Fu, Zhiqian Chen, Chang-Tien Lu: Augmentation of Chinese Character Representations with Compositional Graph Learning, AAAI 2022: 13075-13076 

 

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Publication Details

Date of publication:
June 28, 2022
Conference:
AAAI Conference on Artificial Intelligence
Page number(s):
13075-13076
Volume:
36
Issue Number:
11