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Distant Supervision for Relation Extraction via Piecewise Convolutional Neural Networks

机译:通过分段卷积神经网络进行关系提取的远程监督

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Two problems arise when using distant supervision for relation extraction. First, in this method, an already existing knowledge base is heuristically aligned to texts, and the alignment results are treated as labeled data. However, the heuristic alignment can fail, resulting in wrong label problem. In addition, in previous approaches, statistical models have typically been applied to ad hoc features. The noise that originates from the feature extraction process can cause poor performance. In this paper, we propose a novel model dubbed the Piecewise Convolutional Neural Networks (PCNNs) with multi-instance learning to address these two problems. To solve the first problem, distant supervised relation extraction is treated as a multi-instance problem in which the uncertainty of instance labels is taken into account. To address the latter problem, we avoid feature engineering and instead adopt convolutional architecture with piecewise max pooling to automatically learn relevant features. Experiments show that our method is effective and outperforms several competitive baseline methods.
机译:使用远程监管进行关系提取时会出现两个问题。首先,在这种方法中,将现有的知识库试探性地与文本对齐,并将对齐结果视为已标记的数据。但是,启发式对齐可能会失败,从而导致错误的标签问题。另外,在先前的方法中,统计模型通常已经被应用于特设特征。来自特征提取过程的噪声可能会导致性能下降。在本文中,我们提出了一种新颖的名为分段卷积神经网络(PCNN)的模型,该模型具有多实例学习功能,可以解决这两个问题。为了解决第一个问题,将远程监督关系提取视为考虑了实例标签的不确定性的多实例问题。为了解决后一个问题,我们避免了特征工程,而是采用具有分段最大池的卷积体系结构来自动学习相关特征。实验表明,我们的方法是有效的,并且优于几种竞争基准方法。

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