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Hitachi at MRP 2019: Unified Encoder-to-Biaffine Network for Cross-Framework Meaning Representation Parsing

机译:日立参加MRP 2019:统一编码器到Biaffine网络用于跨框架含义表示解析

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This paper describes the proposed system of the Hitachi team for the Cross-Framework Meaning Representation Parsing (MRP 2019) shared task. In this shared task, the participating systems were asked to predict nodes, edges and their attributes for five frameworks, each with different order of 'abstraction' from input tokens. We proposed a unified encoder-to-biaffine network for all five frameworks, which effectively incorporates a shared encoder to extract rich input features, decoder networks to generate anchorless nodes in UCCA and AMR, and biaffine networks to predict edges. Our system was ranked fifth with the macro-averaged MRP Fl score of 0.7604, and outperformed the baseline unified transition-based MRP. Furthermore, post-evaluation experiments showed that we can boost the performance of the proposed system by incorporating multi-task learning, whereas the baseline could not. These imply efficacy of incorporating the biafline network to the shared architecture for MRP and that learning heterogeneous meaning representations at once can boost the system performance.
机译:本文介绍了Hitachi团队提出的跨框架含义表示解析(MRP 2019)共享任务的系统。在这项共享任务中,要求参与系统预测五个框架的节点,边线及其属性,每个框架从输入令牌中“提取”的顺序不同。我们针对所有五个框架提出了一个统一的编码器到biaffine网络,该网络有效地集成了共享编码器以提取丰富的输入特征,解码器网络以在UCCA和AMR中生成无锚节点,以及biaffine网络以预测边缘。我们的系统以0.7604的宏观平均MRP Fl得分排名第五,并且优于基线基于统一过渡的MRP。此外,评估后的实验表明,通过结合多任务学习,我们可以提高建议系统的性能,而基线则不能。这些意味着将biafline网络合并到MRP的共享体系结构中的功效,并且立即学习异构含义表示可以提高系统性能。

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