Tipo
Paper de conferencia
Año
2014
Fecha
11/2014
Lugar publicado
Santiago, Chile
Publisher
Springer International Publishing
Páginas
83
Abstract
In this paper we elaborate over the use of sequential supervised learning methods on the task of hedge cue scope detection. We address the task using a learning methodology that proposes the use of an iterative, error-based approach to improve classification performance. We analyze how the incorporation of syntactic constituent information to the learning and post-processing steps produces a performance improvement of almost twelve points in terms of F-score over previously unseen data.
Autores
Citekey
moncecchi2014influence
Keywords
syntax
hedging