级联
计算机科学
萃取(化学)
人工智能
色谱法
化学
作者
Feiliang Ren,Longhui Zhang,Shujuan Yin,Xiaofeng Zhao,Shilei Liu,Bo-chao Li
出处
期刊:Conference on Information and Knowledge Management
日期:2021-10-26
标识
DOI:10.1145/3459637.3482045
摘要
Tagging based methods are one of the mainstream methods in relational triple extraction. However, most of them suffer from the class imbalance issue greatly. Here we propose a novel tagging based model that addresses this issue from following two aspects. First, at the model level, we propose a three-step extraction framework that can reduce the total number of samples greatly, which implicitly decreases the severity of the mentioned issue. Second, at the intra-model level, we propose a confidence threshold based cross entropy loss that can directly neglect some samples in the major classes. We evaluate the proposed model on NYT and WebNLG. Extensive experiments show that it can address the mentioned issue effectively and achieves state-of-the-art results on both datasets. The source code of our model is available at: https://github.com/neukg/ConCasRTE.
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