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引用次数: 0

摘要

数据库的规模和复杂性都在不断增长。随着数据湖的出现,数据库变得开放、快速发展和高度异构。理解这些场景中不同实体类型之间的复杂关系对数据科学家来说既是挑战又是必要的。我们提出了一种利用卷积神经网络在字符级别学习与数据库中每个实体类型相关的模式的方法。我们证明了学习到的字符级模式可以为许多有用的应用捕获足够的语义信息,包括数据湖模式探索和交互式数据清理。
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Semantic Data Understanding with Character Level Learning
Databases are growing in size and complexity. With the emergence of data lakes, databases have become open, fast evolving and highly heterogeneous. Understanding the complex relationships among different entity types in such scenarios is both challenging and necessary to data scientists. We propose an approach that utilizes a convolutional neural network to learn patterns associated with each entity type in the database at the character level. We demonstrate that the learned character-level patterns can capture sufficient semantic information for many useful applications including data lake schema exploration, and interactive data cleaning.
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