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Self-Attentive Constituency Parsing for UCCA-based Semantic Parsing

2021-10-01 19:10:18
Necva Bölücü, Burcu Can

Abstract

Semantic parsing provides a way to extract the semantic structure of a text that could be understood by machines. It is utilized in various NLP applications that require text comprehension such as summarization and question answering. Graph-based representation is one of the semantic representation approaches to express the semantic structure of a text. Such representations generate expressive and adequate graph-based target structures. In this paper, we focus primarily on UCCA graph-based semantic representation. The paper not only presents the existing approaches proposed for UCCA representation, but also proposes a novel self-attentive neural parsing model for the UCCA representation. We present the results for both single-lingual and cross-lingual tasks using zero-shot and few-shot learning for low-resource languages.

Abstract (translated)

URL

https://arxiv.org/abs/2110.00621

PDF

https://arxiv.org/pdf/2110.00621.pdf


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