确保机器学习认证的数据集质量

Sylvaine Picard, Camille Chapdelaine, Cyril Cappi, L. Gardes, E. Jenn, Baptiste Lefèvre, Thomas Soumarmon
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引用次数: 17

摘要

在本文中,我们解决了基于机器学习(ML)的关键系统背景下的数据集质量问题。我们简要分析了处理数据的一些现有标准的适用性,并表明ML上下文的特殊性既没有被正确捕获也没有被考虑在内。为了解决这一问题,我们提出了一个数据集规范和验证过程,并将其应用于铁路领域的信号识别系统。此外,我们还为数据集的收集和管理提供了一系列建议。这项工作是迈向数据集工程过程的一步,将ML用于安全关键系统。
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Ensuring Dataset Quality for Machine Learning Certification
In this paper, we address the problem of dataset quality in the context of Machine Learning (ML)-based critical systems. We briefly analyse the applicability of some existing standards dealing with data and show that the specificities of the ML context are neither properly captured nor taken into account. As a first answer to this concerning situation, we propose a dataset specification and verification process, and apply it on a signal recognition system from the railway domain. In addition, we also give a list of recommendations for the collection and management of datasets. This work is one step towards the dataset engineering process that will be required for ML to be used on safety critical systems.
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