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Broad-Coverage Semantic Parsing as Transduction

机译:广泛的覆盖语义被解析为转移

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We unity different broad-coverage semantic parsing tasks under a transduction paradigm, and propose an attention-based neural framework that incrementally builds a meaning representation via a sequence of semantic relations. By leveraging multiple attention mechanisms, the transducer can be effectively trained without relying on a pre-trained aligner. Experiments conducted on three separate broad-coverage semantic parsing tasks - AMR, SDP and UCCA - demonstrate that our attention-based neural transducer improves the state of the art on both AMR and UCCA, and is competitive with the state of the art on SDP.
机译:我们在转导范例下统一不同的广泛覆盖语义解析任务,并提出了一种基于关注的神经框架,其通过一系列语义关系逐步构建含义表示。通过利用多种关注机构,可以有效地训练换能器而不依赖于预先训练的对准器。在三个独立的广泛覆盖语义解析任务 - AMR,SDP和UCCA进行的实验 - 表明我们的注意力神经传感器在AMR和UCCA上提高了最先进的技术,并与SDP上的最新技术竞争。

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