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Generating Logical Forms from Graph Representations of Text and Entities

机译:从文本和实体的图形表示生成逻辑形式

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Structured information about entities is critical for many semantic parsing tasks. We present an approach that uses a Graph Neural Network (GNN) architecture to incorporate information about relevant entities and their relations during parsing. Combined with a decoder copy mechanism, this approach provides a conceptually simple mechanism to generate logical forms with entities. We demonstrate that this approach is competitive with the state-of-the-art across several tasks without pre-training, and outperforms existing approaches when combined with BERT pre-training.
机译:有关实体的结构化信息对于许多语义解析任务至关重要。我们提出一种使用图形神经网络(GNN)架构的方法,以在解析过程中合并有关相关实体及其关系的信息。结合解码器复制机制,此方法提供了一种概念上简单的机制来生成带有实体的逻辑形式。我们证明了这种方法在不进行预训练的情况下可以与多项任务竞争,并且与BERT预训练相结合的性能优于现有方法。

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