Tipo
Paper de conferencia
Año
2020
Fecha
July
Lugar publicado
Online
Publisher
Association for Computational Linguistics
Páginas
132
Abstract
This paper presents the development of a deep parser for Spanish that uses a HPSG grammar and returns trees that contain both syntactic and semantic information. The parsing process uses a top-down approach implemented using LSTM neural networks, and achieves good performance results in terms of syntactic constituency and dependency metrics, and also SRL. We describe the grammar, corpus and implementation of the parser. Our process outperforms a CKY baseline and other Spanish parsers in terms of global metrics and also for some specific Spanish phenomena, such as clitics reduplication and relative referents.
Autores
Luis Chiruzzo
Citekey
chiruzzo-wonsever:2020:iwpt
URL a la publicación
Keywords