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Unsupervised Discovery of Relations and Discriminative Extraction Patterns

机译:关系的无监督发现和判别性提取模式

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Unsupervised Relation Extraction (URE) is the task of extracting relations of a priori unknown semantic types using clustering methods on a vector space model of entity pairs and patterns. In this paper, we show that an informed feature generation technique based on dependency trees significantly improves clustering quality, as measured by the F-score, and therefore the ability of the URE method to discover relations in text. Furthermore, we extend URE to produce a set of weighted patterns for each identified relation that can be used by an information extraction system to find further instances of this relation. Each pattern is assigned to one or multiple relations with different confidence strengths, indicating how reliably a pattern evokes a relation, using the theory of Discriminative Category Matching. We evaluate our findings in two tasks against strong baselines and show significant improvements both in relation discovery and information extraction.
机译:非监督关系提取(URE)是在实体对和模式的向量空间模型上使用聚类方法提取先验未知语义类型的关系的任务。在本文中,我们表明,基于依赖关系树的明智的特征生成技术可以显着提高聚类质量(按F分数衡量),因此可以提高URE方法发现文本中关系的能力。此外,我们扩展了URE以为每个标识的关系生成一组加权模式,信息提取系统可以使用该加权模式来查找该关系的其他实例。使用区分类别匹配理论,将每个模式分配给具有不同置信度的一个或多个关系,从而指示一个模式唤起一个关系的可靠性。我们根据严格的基准评估了两项任务中的发现,并显示了关系发现和信息提取方面的显着改进。

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