利用机器学习进行官方统计:统计宣言

Marco Puts, David Salgado, Piet Daas
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引用次数: 0

摘要

对于官方统计数据的编制而言,以严谨的统计方法应用 ML 非常重要,因为它既带来了机遇,也带来了挑战。尽管近年来机器学习在技术上取得了突飞猛进的发展,但其应用并不具备产生高质量统计结果所需的方法论稳健性。为了考虑机器学习模型中的所有误差来源,我们提出了机器学习总误差(TMLE)框架,类似于调查方法中使用的总调查误差模型。作为确保机器学习模型内部有效和外部有效的一种手段,TMLE 模型解决了代表性和测量误差等问题。本文介绍了几个案例研究,说明了在官方统计中应用机器学习时更加严格的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Machine Learning for Official Statistics: A Statistical Manifesto
It is important for official statistics production to apply ML with statistical rigor, as it presents both opportunities and challenges. Although machine learning has enjoyed rapid technological advances in recent years, its application does not possess the methodological robustness necessary to produce high quality statistical results. In order to account for all sources of error in machine learning models, the Total Machine Learning Error (TMLE) is presented as a framework analogous to the Total Survey Error Model used in survey methodology. As a means of ensuring that ML models are both internally valid as well as externally valid, the TMLE model addresses issues such as representativeness and measurement errors. There are several case studies presented, illustrating the importance of applying more rigor to the application of machine learning in official statistics.
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