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Pattern Filtering Attention for Distant Supervised Relation Extraction via Online Clustering

机译:通过在线聚类远距离监督关系抽取的模式过滤注意

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Distant supervised relation extraction has been widely used to extract relational facts in large-scale corpus but inevitably suffers from the wrong label problem. Many methods use attention mechanisms to address this issue. However, the attention weights in these models are not discriminative and precise enough to fully filter out noise. In this paper, we propose a novel Pattern Filtering Attention (PFA), which can filter noise effectively. Firstly, we adopt an online clustering algorithm on the instances labeled with the same relation to extract potential semantic centers (positive patterns) of each relation, and these patterns have less noise statistically. Then, we build a sentence-level attention based on the similarities of instances and positive patterns. Due to the large differences between these similarities, our model can assign more discriminative weights to instances to reduce the influence of noisy data. Experimental results on the New York Times (NYT) dataset show that our model can effectively improve the performance of relation extraction compared with state-of-the-art methods.
机译:远程监督关系提取已被广泛用于提取大型语料库中的关系事实,但不可避免地会遭受标签错误的问题。许多方法使用注意力机制来解决此问题。但是,这些模型中的注意力权重并没有足够的区分性和精确性,无法完全滤除噪声。在本文中,我们提出了一种新颖的模式过滤注意(PFA),它可以有效地过滤噪声。首先,我们对具有相同关系的实例采用在线聚类算法,以提取每个关系的潜在语义中心(正模式),并且这些模式在统计上具有较小的噪声。然后,我们根据实例和肯定模式的相似性建立句子级的注意力。由于这些相似性之间的巨大差异,我们的模型可以为实例分配更多的判别权重,以减少噪声数据的影响。 《纽约时报》(NYT)数据集上的实验结果表明,与最新方法相比,我们的模型可以有效地提高关系提取的性能。

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