Title :
Effectively Using Monotonicity Analysis for Paraphrase Identification
Author_Institution :
Div. de Posgrado e Investig., Inst. Tecnol. de la Laguna, Cuauhtemoc, Mexico
Abstract :
We analyse in this paper the role of monotonicity for learning to identify sentence-level paraphrasing. Our approach is based in a system architecture which consists of two components. The first component is the features set definition module which takes care of the order of the elements for the analysis of monotonicity as well as the use of semantic heuristics to recognize false paraphrasing. The learning phase is carried out by the second module which makes uses of supervised learning algorithms such as logistic regression and support vector machines for the definition of the classifier model. The results of the experimentation conducted show how the set of features that we propose in this paper leads to decent accuracy. In fact, the results of the experimentation using monotonic and non-monotonic features show how our approach is a plausible alternative to cope with the syntactic and semantic diversity of a data set.
Keywords :
learning (artificial intelligence); natural language processing; pattern classification; pattern recognition; classifier model; false paraphrasing recognition; features set definition module; logistic regression; monotonicity analysis; semantic heuristics; sentence-level paraphrasing identification; supervised learning algorithms; support vector machines; system architecture; Artificial intelligence; Information retrieval; Logistics; Machine learning; Natural language processing; Search engines; Supervised learning; Support vector machine classification; Support vector machines; Text recognition; content vector; monotonicity; paraphrasing;
Conference_Titel :
Artificial Intelligence, 2009. MICAI 2009. Eighth Mexican International Conference on
Conference_Location :
Guanajuato
Print_ISBN :
978-0-7695-3933-1
DOI :
10.1109/MICAI.2009.19