JOURNAL ARTICLE

Graph-based Dependency Parsing with Bidirectional LSTM

Abstract

In this paper, we propose a neural network model for graph-based dependency parsing which utilizes Bidirectional LSTM (BLSTM) to capture richer contextual information instead of using high-order factorization, and enable our model to use much fewer features than previous work.In addition, we propose an effective way to learn sentence segment embedding on sentence-level based on an extra forward LSTM network.Although our model uses only first-order factorization, experiments on English Peen Treebank and Chinese Penn Treebank show that our model could be competitive with previous higher-order graph-based dependency parsing models and state-of-the-art models.

Keywords:
Treebank Dependency (UML) Parsing Sentence Dependency grammar Embedding Artificial neural network

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