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Improving Language Generation from Feature-Rich Tree-Structured Data with Relational Graph Convolutional Encoders

机译:使用关系图卷积编码器改善功能丰富的树状结构数据的语言生成

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The Multilingual Surface Realization Shared Task 2019 focuses on generating sentences from lemmatized sets of universal dependency parses with rich features. This paper describes the system design and the results of our participation in the deep track. The core innovation in our approach is to use a graph convolutional network to encode the dependency trees given as input. Upon adding morphological features, our system achieves the second rank in the deep track without using data augmentation techniques or additional components (such as a re-ranker).
机译:多语言表面实现共享任务2019专注于从具有丰富功能的通用化依赖项的词形化集合中生成句子。本文描述了系统设计以及我们参与深层跟踪的结果。我们方法的核心创新是使用图卷积网络对作为输入给出的依赖树进行编码。添加形态特征后,我们的系统无需使用数据增强技术或其他组件(例如重新排名),即可在深层排名中排名第二。

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