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Papers/Long Short-Term Memory with Dynamic Skip Connections

Long Short-Term Memory with Dynamic Skip Connections

Tao Gui, Qi Zhang, Lujun Zhao, Yaosong Lin, Minlong Peng, Jingjing Gong, Xuanjing Huang

2018-11-09Reinforcement LearningSentiment AnalysisNamed Entity Recognition (NER)
PaperPDFCode

Abstract

In recent years, long short-term memory (LSTM) has been successfully used to model sequential data of variable length. However, LSTM can still experience difficulty in capturing long-term dependencies. In this work, we tried to alleviate this problem by introducing a dynamic skip connection, which can learn to directly connect two dependent words. Since there is no dependency information in the training data, we propose a novel reinforcement learning-based method to model the dependency relationship and connect dependent words. The proposed model computes the recurrent transition functions based on the skip connections, which provides a dynamic skipping advantage over RNNs that always tackle entire sentences sequentially. Our experimental results on three natural language processing tasks demonstrate that the proposed method can achieve better performance than existing methods. In the number prediction experiment, the proposed model outperformed LSTM with respect to accuracy by nearly 20%.

Results

TaskDatasetMetricValueModel
Sentiment AnalysisIMDbAccuracy90.1LSTM with dynamic skip
Named Entity Recognition (NER)CoNLL 2003 (English)F191.56LSTM with dynamic skip

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