Autores
Gelbukh Alexander
Pérez Álvarez Daniel Alejandro
Angel Gil Jason Efrain
Aroyehun Segun Taofeek
Título Complex Word Identification: Convolutional Neural Network vs. Feature Engineering
Tipo Congreso
Sub-tipo Memoria
Descripción Proceedings of the Thirteenth Workshop on Innovative Use of NLP for Building Educational Applications
Resumen We describe the systems of NLP-CIC team that participated in the Complex Word Identification (CWI) 2018 shared task. The shared task aimed to benchmark approaches for identifying complex words in English and other languages from the perspective of non-native speakers. Our goal is to compare two approaches: feature engineering and a deep neural network. Both approaches achieved comparable performance on the English test set. We demonstrated the flexibility of the deeplearningapproachbyusingthesamedeepneural network setup in the Spanish track. Our systems achieved competitive results: all our systems were within 0.01 of the system with the best macro-F1 score on the test sets except on Wikipedia test set, on which our best system is 0.04 below the best macro-F1 score.
Observaciones http://aclweb.org/anthology/W18-0538, pages 322–327, Association for Computational Linguistics
Lugar New Orleans, Louisiana
País Estados Unidos
No. de páginas 6
Vol. / Cap.
Inicio 2018-06-05
Fin
ISBN/ISSN