Enterprise Alexandria: Online High-Precision Enterprise Knowledge Base Construction with Typed Entities

J. Winn, M. Venanzi, T. Minka, Ivan Korostelev, J. Guiver, Elena Pochernina, Pavel Mishkov, Alex Spengler, Denise J. Wilkins, Siân E. Lindley, Richard Banks, Sam Webster, Yordan Zaykov
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引用次数: 3

Abstract

We present Enterprise Alexandria, a new system for automatically constructing a knowledge base with high-precision and typed entities from private enterprise data such as emails, documents and intranet pages. Built as an extension of Alexandria [Winn et al., 2019], the key novelty of Enterprise Alexandria is the ability in processing both the textual information and the structured metadata available in each document in an online learning fashion, making use of any manual curations that have happened in the interim. This task is performed entirely eyes-off to respect the privacy of the user and the restricted access their documents. The knowledge discovery process uses a probabilistic program defining the process of generating the data item from a set of unknown typed entities. Using probabilistic inference, Enterprise Alexandria can jointly discover a large set of entities with custom types specific to the organization. Experiments on three real-world datasets show that the system outperforms alternative methods with the ability to work effectively at large scale.
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Enterprise Alexandria:基于类型化实体的在线高精度企业知识库构建
我们介绍了Enterprise Alexandria,这是一个新的系统,用于从私人企业数据(如电子邮件、文档和内部网页面)中自动构建具有高精度和类型化实体的知识库。作为Alexandria的扩展[Winn等人,2019],Enterprise Alexandria的关键新颖之处在于能够以在线学习的方式处理每个文档中可用的文本信息和结构化元数据,并利用在此期间发生的任何手动管理。为了尊重用户的隐私和限制对其文档的访问,该任务是完全闭眼执行的。知识发现过程使用概率程序定义从一组未知类型实体生成数据项的过程。使用概率推理,Enterprise Alexandria可以共同发现具有特定于组织的自定义类型的大型实体集。在三个真实数据集上的实验表明,该系统在大规模有效工作的能力上优于其他方法。
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