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Joint Extraction of Entities and Relations Using Reinforcement Learning and Deep Learning

机译:利用强化学习和深度学习的共同提取实体和关系

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摘要

We use both reinforcement learning and deep learning to simultaneously extract entities and relations from unstructured texts. For reinforcement learning, we model the task as a two-step decision process. Deep learning is used to automatically capture the most important information from unstructured texts, which represent the state in the decision process. By designing the reward function per step, our proposed method can pass the information of entity extraction to relation extraction and obtain feedback in order to extract entities and relations simultaneously. Firstly, we use bidirectional LSTM to model the context information, which realizes preliminary entity extraction. On the basis of the extraction results, attention based method can represent the sentences that include target entity pair to generate the initial state in the decision process. Then we use Tree-LSTM to represent relation mentions to generate the transition state in the decision process. Finally, we employ Q-Learning algorithm to get control policy pi in the two-step decision process. Experiments on ACE2005 demonstrate that our method attains better performance than the state-of-the-art method and gets a 2.4% increase in recall-score.
机译:我们使用强化学习和深度学习,同时提取来自非结构化文本的实体和关系。对于加强学习,我们将任务模拟为两步决策过程。深度学习用于自动捕获来自非结构化文本的最重要信息,该文本代表决策过程中的状态。通过设计每步的奖励功能,我们所提出的方法可以将实体提取信息传递给关系提取并获得反馈,以便同时提取实体和关系。首先,我们使用双向LSTM来模拟实现初步实体提取的上下文信息。在提取结果的基础上,基于注意的方法可以代表包括目标实体对以在决策过程中生成初始状态的句子。然后,我们使用树-LSTM表示关于在决策过程中生成转换状态的关系。最后,我们采用Q学习算法在两步决策过程中获取控制策略PI。 ACE2005的实验表明,我们的方法比最先进的方法达到更好的性能,并且召回得分增加2.4%。

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    PLA Univ Sci &

    Technol Inst Command Informat Syst Nanjing 210007 Jiangsu Peoples R China;

    PLA Univ Sci &

    Technol Inst Command Informat Syst Nanjing 210007 Jiangsu Peoples R China;

    PLA Univ Sci &

    Technol Inst Command Informat Syst Nanjing 210007 Jiangsu Peoples R China;

    PLA Univ Sci &

    Technol Inst Command Informat Syst Nanjing 210007 Jiangsu Peoples R China;

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  • 正文语种 eng
  • 中图分类 寄生生物学;
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