Discovering Enterprise Concepts Using Spreadsheet Tables

Keqian Li, Yeye He, Kris Ganjam
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引用次数: 14

Abstract

Existing work on knowledge discovery focuses on using natural language techniques to extract entities and relationships from textual documents. However, today relational tables are abundant in quantities, and are often well-structured with coherent data values. So far these rich relational tables have been largely overlooked for the purpose of knowledge discovery. In this work, we study the problem of building concept hierarchies using a large corpus of enterprise spreadsheet tables. Our method first groups distinct values from tables into a large hierarchical tre based on co-occurrence statistics. We then "summarize" the large tree by selecting important tree nodes that are likely good concepts based on how well they "describe" the original corpus. The result is a small concept hierarchy that is easy for humans to understand and curate. Our end-to-end algorithms are designed to run on Map-Reduce and to scale to large corpus. Experiments using real enterprise spreadsheet corpus show that proposed approach can generate concepts with high quality.
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使用电子表格发现企业概念
现有的知识发现工作主要集中在使用自然语言技术从文本文档中提取实体和关系。然而,今天的关系表数量丰富,并且通常结构良好,具有一致的数据值。到目前为止,由于知识发现的目的,这些丰富的关系表在很大程度上被忽略了。在这项工作中,我们研究了使用大型企业电子表格语料库构建概念层次结构的问题。我们的方法首先将表中的不同值分组到基于共现统计的大型分层树中。然后,我们根据“描述”原始语料库的程度,选择可能是好概念的重要树节点,“总结”这棵大树。其结果是一个小的概念层次结构,易于人类理解和管理。我们的端到端算法被设计为在Map-Reduce上运行并扩展到大型语料库。使用实际企业电子表格语料库的实验表明,该方法可以生成高质量的概念。
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