从类级常识快速获取谷歌地图的实例级知识

Christoper A. Welty, Lora Aroyo, Flip Korn, S. M. McCarthy, Shubin Zhao
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引用次数: 4

摘要

成功的知识图谱(knowledge graph, KGs)解决了历史上的知识获取瓶颈,它用一个简单的、对人群友好的知识图谱取代了专家的关注点:KG节点代表受欢迎的人、地点、组织等,图弧代表诸如从属关系、位置等常识性关系。更一般的、分类的、KG分类的技术似乎没有做出同样的转变:KG研究社区仍然主要关注于那些相信成功的KG的常识性特征的方法。在本文中,我们提出了一种简单的方法,从代表类别之间广泛的常识性关联的人群中获取和推理类级属性。我们选择了一个非常真实的工业规模的数据集和问题:如何增强现有的地点和产品的知识图谱,使它们之间的关联表明这些地方的产品的可用性,这将使KG能够提供诸如“我在哪里可以买到附近的牛奶?”这个问题有几个实际的挑战,其中最重要的是,只有30%的实体店(即实体店)有网站,很少列出他们的产品库存,留下了巨大的获取差距,需要通过信息提取(IE)以外的方法来填补。基于kg启发的直觉,许多类级别对是人们一般常识的一部分,例如,每个人都知道杂货店卖牛奶而不卖沥青,我们从一种新颖的3层众包方法中获得了实例和类级别对的混合物(例如,,resp),并展示了类级别方法的可扩展性优势。我们的研究结果表明,众包类级知识可以在这个和类似的领域提供快速的知识获取规模,并在KG中提供长期价值。
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Rapid Instance-Level Knowledge Acquisition for Google Maps from Class-Level Common Sense
Successful knowledge graphs (KGs) solved the historical knowledge acquisition bottleneck by supplanting an expert focus with a simple, crowd-friendly one: KG nodes represent popular people, places, organizations, etc., and the graph arcs represent common sense relations like affiliations, locations, etc. Techniques for more general, categorical, KG curation do not seem to have made the same transition: the KG research community is still largely focused on methods that belie the common-sense characteristics of successful KGs. In this paper, we propose a simple approach to acquiring and reasoning with class-level attributes from the crowd that represent broad common sense associations between categories. We pick a very real industrial-scale data set and problem: how to augment an existing knowledge graph of places and products with associations between them indicating the availability of the products at those places, which would enable a KG to provide answers to questions like, "Where can I buy milk nearby?" This problem has several practical challenges, not least of which is that only 30% of physical stores (i.e. brick & mortar stores) have a website, and fewer list their product inventory, leaving a large acquisition gap to be filled by methods other than information extraction (IE). Based on a KG-inspired intuition that a lot of the class-level pairs are part of people's general common sense, e.g. everyone knows grocery stores sell milk and don't sell asphalt, we acquired a mixture of instance- and class- level pairs (e.g. , , resp.) from a novel 3-tier crowdsourcing method, and demonstrate the scalability advantages of the class-level approach. Our results show that crowdsourced class-level knowledge can provide rapid scaling of knowledge acquisition in this and similar domains, as well as long-term value in the KG.
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