Improving Distantly Supervised Relation Extraction with Self-Ensemble Noise Filtering

Tapas Nayak, Navonil Majumder, Soujanya Poria
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引用次数: 7

Abstract

Distantly supervised models are very popular for relation extraction since we can obtain a large amount of training data using the distant supervision method without human annotation. In distant supervision, a sentence is considered as a source of a tuple if the sentence contains both entities of the tuple. However, this condition is too permissive and does not guarantee the presence of relevant relation-specific information in the sentence. As such, distantly supervised training data contains much noise which adversely affects the performance of the models. In this paper, we propose a self-ensemble filtering mechanism to filter out the noisy samples during the training process. We evaluate our proposed framework on the New York Times dataset which is obtained via distant supervision. Our experiments with multiple state-of-the-art neural relation extraction models show that our proposed filtering mechanism improves the robustness of the models and increases their F1 scores.
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自集成噪声滤波改进远程监督关系提取
远程监督模型是一种非常流行的关系提取方法,因为我们可以使用远程监督方法获得大量的训练数据,而无需人工注释。在远程监督中,如果一个句子包含元组的两个实体,则该句子被视为元组的源。然而,这种条件过于宽松,不能保证在句子中存在相关的特定于关系的信息。因此,远程监督训练数据包含大量噪声,这对模型的性能有不利影响。在本文中,我们提出了一种自集合滤波机制来滤除训练过程中的噪声样本。我们在通过远程监督获得的《纽约时报》数据集上评估了我们提出的框架。我们对多个最先进的神经关系提取模型进行的实验表明,我们提出的过滤机制提高了模型的鲁棒性,并提高了它们的F1分数。
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