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Chinese Discourse Parsing: Model and Evaluation

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Chinese discourse parsing, which aims to identify the hierarchical relationships of Chinese elementary discourse units, has not yet a consistent evaluation metric。 Although Parseval is commonly used, variations of evaluation differ from three aspects: micro vs。 macro F1 scores, binary vs。 multiway ground truth, and left-heavy vs。 right-heavy binarization。 In this paper, we first propose a neural network model that unities a prc-trained transformer and CKY-like algorithm, and then compare it with the previous models with different evaluation scenarios。 The experimental results show that our model outperforms the previous systems。 We conclude that (1) the pre-trained context embedding provides effective solutions to deal with implicit semantics in Chinese texts, and (2) using multiway ground truth is helpful since different binarization approaches lead to significant differences in performance。

Discourse parsingCKYShift-reducePARSEVAL

Chuan-An Lin、Shyh-Shiun Hung、Hen-Hsen Huang、Hsin-Hsi Chen

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Department of Computer Science and Information Engineering, National Taiwan University, Taipei, Taiwan

Department of Computer Science, National Chengchi University, Taipei, Taiwan

International Conference on Language Resources and Evaluation

Marseille(FR)

Twelfth International Conference on Language Resources and Evaluation

1019-1024

2020