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Semantic Relation Classification via Hierarchical Recurrent Neural Network with Attention

机译:具有分层经常性神经网络的语义关系分类

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Semantic relation classification remains a challenge in natural language processing. In this paper, we introduce a hierarchical recurrent neural network that is capable of extracting information from raw sentences for relation classification. Our model has several distinctive features: (1) Each sentence is divided into three context subsequences according to two annotated nom-inals, which allows the model to encode each context subsequence independently so as to selectively focus as on the important context information; (2) The hierarchical model consists of two recurrent neural networks (RNNs): the first one learns context representations of the three context subsequences respectively, and the second one computes semantic composition of these three representations and produces a sentence representation for the relationship classification of the two nominals. (3) The attention mechanism is adopted in both RNNs to encourage the model to concentrate on the important information when learning the sentence representations. Experimental results on the SemEval-2010 Task 8 dataset demonstrate that our model is comparable to the state-of-the-art without using any hand-crafted features.
机译:语义关系分类仍然是自然语言处理中的挑战。在本文中,我们介绍了一种分层经常性神经网络,其能够从原始句子中提取信息进行相关分类。我们的模型具有几个独特的特点:(1)每个句子根据两个带注释的Nom-inals分为三个上下文后续,这允许模型独立地编码每个上下文后续,以便选择性地关注重要的上下文信息; (2)分层模型由两个复发性神经网络(RNN)组成:第一个学习分别的三个上下文后续后续后续的上下文表示,第二个是计算这三个表示的语义组成,并为关系分类产生句子表示两个名义。 (3)在RNN中采用注意机制,鼓励模型在学习句子陈述时专注于重要信息。 Semeval-2010任务8数据集的实验结果表明,我们的模型与现有技术相当,而无需使用任何手工制作的功能。

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