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Distantly Supervised Neural Network Model for Relation Extraction

机译:远程监督的关系提取神经网络模型

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For the task of relation extraction, distant supervision is an efficient approach to generate labeled data by aligning knowledge base (KB) with free texts. Albeit easy to scale to thousands of different relations, this procedure suffers from introducing wrong labels because the relations in knowledge base may not be expressed by aligned sentences (mentions). In this paper, we propose a novel approach to alleviate the problem of distant supervision with representation learning in the framework of deep neural network. Our model - Distantly Supervised Neural Network (DSNN) - constructs the more powerful mention level representation by tensor-based transformation and further learns the entity pair level representation which aggregates and denoises the features of associated mentions. With this denoised representation, all of the relation labels can be jointly learned. Experimental results show that with minimal feature engineering, our model generally outperforms state-of-the-art methods for distantly supervised relation extraction.
机译:对于关系提取的任务,遥远的监督是通过将知识库(KB)与自由文本对齐来生成标记数据的有效方法。尽管易于扩展到数千个不同的关系,但这种程序遭受了错误的标签,因为知识库中的关系可能不是由对齐的句子(提到)表示。在本文中,我们提出了一种新颖的方法来缓解深神经网络框架中对代表学习的遥感监督问题。我们的模型 - 远方监督的神经网络(DSNN) - 构建了基于张量的转换更强大的提及级别表示,并进一步了解了聚合和剥夺了相关提到的功能的实体对级表示。通过这种去噪代表性,可以共同学习所有关系标签。实验结果表明,具有最小的特征工程,我们的模型通常优于最终的监督相关性提取的最先进方法。

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