Concepedia

Publication | Open Access

Classifying Relations via Long Short Term Memory Networks along Shortest Dependency Paths

670

Citations

34

References

2015

Year

Abstract

Relation classification is an important research arena in the field of natural language processing (NLP). In this paper, we present SDP-LSTM, a novel neural network to classify the relation of two entities in a sentence. Our neural architecture leverages the shortest dependency path (SDP) between two entities; multichannel recurrent neural networks, with long short term memory (LSTM) units, pick up heterogeneous information along the SDP. Our proposed model has several distinct features: (1) The shortest dependency paths retain most relevant information (to relation classification), while eliminating irrelevant words in the sentence. (2) The multichannel LSTM networks allow effective information integration from heterogeneous sources over the dependency paths. (3) A customized dropout strategy regularizes the neural network to alleviate overfitting. We test our model on the SemEval 2010 relation classification task, and achieve an F 1 -score of 83.7%, higher than competing methods in the literature.

References

YearCitations

2013

18.1K

2012

6.6K

2009

2.9K

2013

2.9K

1998

2.9K

2006

2.3K

2014

1.4K

2012

1.3K

2011

1.2K

2008

1K

Page 1