In this paper, we provide a detailed description of our system at CAMRP-2022 evaluation. We firstly propose a two-stage method to conduct Chinese AMR Parsing with alignment generation, which includes Concept-Prediction and Relation-Prediction stages. Our model achieves 0.7756 and 0.7074 Align-Smatch F1 scores on the CAMR 2.0 test set and the blind-test set of CAMRP-2022 individually. We also analyze the result and the limitation such as the error propagation and class imbalance problem we conclude in the current method. Code and the trained models are released at https://github.com/PKUnlp-icler/Two-Stage-CAMRP for reproduction.
翻译:在本文中,我们在CAMRP-2022评估中详细介绍了我们的系统,我们首先提出了一个分两阶段的方法来进行中国的AMR分析,包括概念预防和关系预测阶段,我们的模型在CAMR 2.0测试集和CAMR 2022盲测试集中达到0.7756和0.7074 Align-Smatch F1分,我们还分析了结果和限制,例如我们在当前方法中得出的错误传播和阶级不平衡问题。守则和经过培训的模型在https://github.com/PKUnlp-icler/ ewo-Stage-CAMRP中发布,用于复制。