Open Relation and Event Type Discovery with Type Abstraction

Sha Li, Heng Ji, Jiawei Han
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引用次数: 4

Abstract

Conventional “closed-world” information extraction (IE) approaches rely on human ontologies to define the scope for extraction. As a result, such approaches fall short when applied to new domains. This calls for systems that can automatically infer new types from given corpora, a task which we refer to as type discovery.To tackle this problem, we introduce the idea of type abstraction, where the model is prompted to generalize and name the type. Then we use the similarity between inferred names to induce clusters. Observing that this abstraction-based representation is often complementary to the entity/trigger token representation, we set up these two representations as two views and design our model as a co-training framework. Our experiments on multiple relation extraction and event extraction datasets consistently show the advantage of our type abstraction approach.
具有类型抽象的开放关系和事件类型发现
传统的“封闭世界”信息提取(IE)方法依赖于人类本体来定义提取的范围。因此,这种方法在应用于新领域时就会出现不足。这就要求系统能够从给定的语料库中自动推断出新的类型,我们将这一任务称为类型发现。为了解决这个问题,我们引入了类型抽象的思想,提示模型泛化并命名类型。然后,我们使用推断名称之间的相似性来归纳聚类。观察到这种基于抽象的表示通常是实体/触发令牌表示的补充,我们将这两种表示设置为两个视图,并将我们的模型设计为协同训练框架。我们在多个关系提取和事件提取数据集上的实验一致地显示了我们的类型抽象方法的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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