Machine Learning and Data Cleaning: Which Serves the Other?

I. Ilyas, Theodoros Rekatsinas
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引用次数: 9

Abstract

The last few years witnessed significant advances in building automated or semi-automated data quality, data cleaning and data integration systems powered by machine learning (ML). In parallel, large deployment of ML systems in business, science, environment and various other areas started to realize the strong dependency on the quality of the input data to these ML models to get reliable predictions or insights. That dual relationship between ML and data cleaning has been addressed by many recent research works under terms such as “Data cleaning for ML” and “ML for automating data cleaning and data preparation”. In this article, we highlight this symbiotic relationship between ML and data cleaning and discuss few challenges that require collaborative efforts of multiple research communities.
机器学习和数据清理:谁为谁服务?
过去几年,在构建由机器学习(ML)驱动的自动化或半自动数据质量、数据清洗和数据集成系统方面取得了重大进展。与此同时,ML系统在商业、科学、环境和其他各个领域的大规模部署开始意识到,要获得可靠的预测或见解,这些ML模型的输入数据的质量非常依赖。机器学习和数据清理之间的双重关系在最近的许多研究工作中得到了解决,例如“机器学习的数据清理”和“机器学习用于自动数据清理和数据准备”。在本文中,我们强调了机器学习和数据清理之间的这种共生关系,并讨论了需要多个研究团体合作努力的一些挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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