Extracting Databases from Dark Data with DeepDive.

Ce Zhang, Jaeho Shin, Christopher Ré, Michael Cafarella, Feng Niu
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Abstract

DeepDive is a system for extracting relational databases from dark data: the mass of text, tables, and images that are widely collected and stored but which cannot be exploited by standard relational tools. If the information in dark data - scientific papers, Web classified ads, customer service notes, and so on - were instead in a relational database, it would give analysts a massive and valuable new set of "big data." DeepDive is distinctive when compared to previous information extraction systems in its ability to obtain very high precision and recall at reasonable engineering cost; in a number of applications, we have used DeepDive to create databases with accuracy that meets that of human annotators. To date we have successfully deployed DeepDive to create data-centric applications for insurance, materials science, genomics, paleontologists, law enforcement, and others. The data unlocked by DeepDive represents a massive opportunity for industry, government, and scientific researchers. DeepDive is enabled by an unusual design that combines large-scale probabilistic inference with a novel developer interaction cycle. This design is enabled by several core innovations around probabilistic training and inference.

Abstract Image

Abstract Image

利用 DeepDive 从黑暗数据中提取数据库。
DeepDive 是一个从暗数据中提取关系数据库的系统,暗数据是指大量收集和存储的文本、表格和图像,但标准的关系工具无法利用这些数据。如果将暗数据(科学论文、网络分类广告、客户服务说明等)中的信息转换为关系数据库,就能为分析人员提供大量有价值的新 "大数据"。与以往的信息提取系统相比,DeepDive 的独特之处在于它能以合理的工程成本获得极高的精确度和召回率;在许多应用中,我们利用 DeepDive 创建的数据库的精确度达到了人类注释者的水平。迄今为止,我们已经成功部署了 DeepDive,为保险、材料科学、基因组学、古生物学家、执法等领域创建了以数据为中心的应用。DeepDive 所释放的数据为行业、政府和科研人员带来了巨大的机遇。DeepDive 采用不同寻常的设计,将大规模概率推断与新颖的开发人员交互周期相结合。这一设计得益于围绕概率训练和推理的几项核心创新。
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