Autores
Calvo Castro Francisco Hiram
López Monroy Alfredo
Gelbukh Alexander
Título NLP for Shallow Question Answering of Legal Documents Using Graphs
Tipo Congreso
Sub-tipo SCOPUS
Descripción Lecture Notes in Computer Science
Resumen Previous work has shown that modeling relationships between articles of a regulation as vertices of a graph network works twice as better than traditional information retrieval systems for returning articles relevant to the question. In this work we experiment by using natural language techniques such as lemmatizing and using manual and automatic thesauri for improving question based document retrieval. For the construction of the graph, we follow the approach of representing the set of all the articles as a graph; the question is split in two parts, and each of them is added as part of the graph. Then several paths are constructed from part A of the question to part B, so that the shortest path contains the relevant articles to the question. We evaluate our method comparing the answers given by a traditional information retrieval system—vector space model adjusted for article retrieval, instead of document retrieval—and the answers to 21 questions given manually by the general lawyer of the National Polytechnic Institute, based on 25 different regulations (academy regulation, scholarships regulation, postgraduate studies regulation, etc.); with the answer of our system based on the same set of regulations. We found that lemmatizing increases performance in around 10%, while the use of thesaurus has a low impact.
Observaciones 10th International Conference on Computational Linguistics and Intelligent Text Processing, CICLing 2009; Code 76623; ISBN: 3642003818;978-364200381-3
Lugar Mexico City
País Mexico
No. de páginas 498-508
Vol. / Cap. 5449
Inicio 2009-03-01
Fin 2009-03-07
ISBN/ISSN 3642003818;978-36420