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

机译:通过沿最短依赖路径的长期短期记忆网络对关系进行分类

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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.
机译:关系分类是自然语言处理(NLP)领域的重要研究领域。在本文中,我们介绍了SDP-LSTM,这是一种新颖的神经网络,用于对句子中两个实体的关系进行分类。我们的神经体系结构利用了两个实体之间的最短依赖路径(SDP)。具有长期短期记忆(LSTM)单元的多通道递归神经网络沿SDP收集异构信息。我们提出的模型具有几个明显的特征:(1)最短的依赖路径保留了最相关的信息(对于关系分类),同时消除了句子中不相关的单词。 (2)多通道LSTM网络允许通过依赖路径从异构源进行有效的信息集成。 (3)定制的辍学策略使神经网络正规化,以减轻过度拟合的情况。我们在SemEval 2010关系分类任务上测试了我们的模型,并获得了83.7%的F_1得分,高于文献中的竞争方法。

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