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Exploiting Noisy Data in Distant Supervision Relation Classification

机译:远程监管关系分类中噪声数据的挖掘

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Distant supervision has obtained great progress on relation classification task. However, it still suffers from noisy labeling problem. Different from previous works that underutilize noisy data which inherently characterize the property of classification, in this paper, we propose RCEND, a novel framework to enhance Relation Classification by Exploiting Noisy Data. First, an instance discriminator with reinforcement learning is designed to split the noisy data into correctly labeled data and incorrectly labeled data. Second, we learn a robust relation classifier in semi-supervised learning way, whereby the correctly and incorrectly labeled data are treated as labeled and unlabeled data respectively. The experimental results show that our method outperforms the state-of-the-art models.
机译:远程监督在关系分类任务上取得了长足的进步。但是,它仍然遭受嘈杂的标签问题。与先前的利用噪声数据未充分利用的,固有地表征分类属性的工作不同,本文提出了RCEND,这是一种通过利用噪声数据来增强关系分类的新颖框架。首先,设计了带有强化学习的实例判别器,以将嘈杂的数据分为正确标记的数据和错误标记的数据。其次,我们以半监督学习的方式学习一种鲁棒的关系分类器,将正确和错误标记的数据分别视为已标记和未标记的数据。实验结果表明,我们的方法优于最新模型。

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