Revista: | Computación y sistemas |
Base de datos: | |
Número de sistema: | 000560448 |
ISSN: | 1405-5546 |
Autores: | Kamath, Sanjay1 Grau, Brigitte1 Ma, Yue2 |
Instituciones: | 1Université Paris-Saclay, Orsay, Paris. Francia 2Université Paris sud - Paris XI, Ile de France. Francia |
Año: | 2019 |
Periodo: | Jul-Sep |
Volumen: | 23 |
Número: | 3 |
Paginación: | 665-673 |
País: | México |
Idioma: | Inglés |
Tipo de documento: | Artículo |
Resumen en inglés | Since end-to-end deep learning models have started to replace traditional pipeline architectures of question answering systems, features such as expected answertypes which are based on the question semantics are seldom used explicitly in the models. In this paper, we propose a convolution neural network model to predict these answer types based on question words and a recurrent neural network model to find sentence similarity scores between question and answer sentences. The proposed model outperforms the current state of the art results on an answer sentence selection task in open domain question answering by 1.88% on MAP and 2.96% on MRR scores. |
Disciplinas: | Ciencias de la computación |
Palabras clave: | Inteligencia artificial |
Keyword: | Question answering, Deep learning, Answer sentence selection, Expected answer types, Sentence similarity, Artificial intelligence |
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