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引用次数: 1

摘要

实体解析(ER),也称为记录链接或重复数据删除,是数据管理领域中一个长期存在的问题。虽然一个ER系统遵循一个既定的流程,包括阻塞->匹配->集群组件,但匹配构成了ER系统的核心元素。在凯业必达,我们对从不同来源、不同信息内容收集的大量个人资料集进行重复数据删除。在本文中,我们讨论了对固有异构数据进行重复数据删除的挑战,并说明了构建功能强大且可扩展的基于机器学习的匹配平台的端到端过程。我们还提供了一个增量框架,以实现连续重复数据删除工作流的差异ER同化。
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Avatar: Large Scale Entity Resolution of Heterogeneous User Profiles
Entity Resolution (ER), also known as record linkage or de-duplication, has been a long-standing problem in the data management space. Though an ER system follows an established pipeline involving the Blocking -> Matching -> Clustering components, the Matching forms the core element of an ER system. At CareerBuilder, we perform de-duplication of massive datasets of people profiles collected from disparate sources with varying informational content. In this paper, we discuss the challenges of de-duplicating inherently heterogeneous data and illustrate the end-to-end process of building a functional and scalable machine learning-based matching platform. We also provide an incremental framework to enable differential ER assimilation for continuous de-duplication workflows.
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Modelling Machine Learning Algorithms on Relational Data with Datalog Towards Interactive Curation & Automatic Tuning of ML Pipelines Avatar: Large Scale Entity Resolution of Heterogeneous User Profiles Learning Efficiently Over Heterogeneous Databases: Sampling and Constraints to the Rescue Proceedings of the Second Workshop on Data Management for End-To-End Machine Learning
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