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Transition-based Dependency Parsing Using Two Heterogeneous Gated Recursive Neural Networks

机译:使用两个异构门控递归神经网络的基于过渡的依赖项解析

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Recently, neural network based dependency parsing has attracted much interest, which can effectively alleviate the problems of data sparsity and feature engineering by using the dense features. However, it is still a challenge problem to sufficiently model the complicated syntactic and semantic compositions of the dense features in neural network based methods. In this paper, we propose two heterogeneous gated recursive neural networks: tree structured gated recursive neural network (Tree-GRNN) and directed acyclic graph structured gated recursive neural network (DAG-GRNN). Then we integrate them to automatically learn the compositions of the dense features for transition-based dependency parsing. Specifically, Tree-GRNN models the feature combinations for the trees in stack, which already have partial dependency structures. DAG-GRNN models the feature combinations of the nodes whose dependency relations have not been built yet. Experiment results on two prevalent benchmark datasets (PTB3 and CTB5) show the effectiveness of our proposed model.
机译:近年来,基于神经网络的依存分析引起了人们的极大兴趣,它可以通过使用密集特征来有效地缓解数据稀疏性和特征工程的问题。然而,在基于神经网络的方法中,如何对密集特征的复杂句法和语义成分进行充分建模仍然是一个挑战性的问题。在本文中,我们提出了两种异构的门控递归神经网络:树结构的门控递归神经网络(Tree-GRNN)和有向无环图结构的门控递归神经网络(DAG-GRNN)。然后,我们将它们集成在一起,以自动学习密集特征的组成,以进行基于过渡的依存关系解析。具体来说,Tree-GRNN为堆栈中已经具有部分依赖结构的树的特征组合建模。 DAG-GRNN对尚未建立依赖关系的节点的特征组合进行建模。在两个流行的基准数据集(PTB3和CTB5)上的实验结果证明了我们提出的模型的有效性。

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