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Keep your bearings: Lightly-supervised Information Extraction with Ladder Networks that avoids Semantic Drift

机译:保持方位:通过梯形网络轻松监督信息提取,避免语义漂移

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We propose a novel approach to semi-supervised learning for information extraction that uses ladder networks (Rasmus et al., 2015). In particular, we focus on the task of named entity classification, defined as identifying the correct label (e.g., person or organization name) of an entity mention in a given context. Our approach is simple, efficient and has the benefit of being robust to semantic drift, a dominant problem in most semi-supervised learning systems. We empirically demonstrate the superior performance of our system compared to the state-of-the-art on two standard datasets for named entity classification. We obtain between 62% and 200% improvement over the state-of-art baseline on these two datasets.
机译:我们提出了一种使用梯形网络的半监督学习信息提取的新方法(Rasmus et al。,2015)。特别是,我们专注于命名实体分类的任务,该任务定义为在给定上下文中标识实体提及的正确标签(例如,个人或组织名称)。我们的方法简单,高效,并且具有对语义漂移鲁棒的优势,语义漂移是大多数半监督学习系统中的一个主要问题。与两个用于命名实体分类的标准数据集上的最新技术相比,我们从经验上证明了我们系统的优越性能。与这两个数据集的最新基准相比,我们获得了62%到200%的改进。

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