Proposing the Use of Hazard Analysis for Machine Learning Data Sets

H. Carter, Alexander Chan, Christopher Vinegar, J. Rupert
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Abstract

There is no debating the importance of data for artificial intelligence. The behavior of data-driven machine learning models is determined by the data set, or as the old adage states: “garbage in, garbage out (GIGO).” While the machine learning community is still debating which techniques are necessary and sufficient to assess the adequacy of data sets, they agree some techniques are necessary. In general, most of the techniques being considered focus on evaluating the volumes of attributes. Those attributes are evaluated with respect to anticipated counts of attributes without considering the safety concerns associated with those attributes. This paper explores those techniques to identify instances of too little data and incorrect attributes. Those techniques are important; however, for safety critical applications, the assurance analyst also needs to understand the safety impact of not having specific attributes present in the machine learning data sets. To provide that information, this paper proposes a new technique the authors call data hazard analysis. The data hazard analysis provides an approach to qualitatively analyze the training data set to reduce the risk associated with the GIGO.
建议在机器学习数据集上使用危害分析
数据对人工智能的重要性是毋庸置疑的。数据驱动的机器学习模型的行为是由数据集决定的,或者正如一句古老的谚语所说:“垃圾输入,垃圾输出(GIGO)”。虽然机器学习社区仍在争论哪些技术是必要的,足以评估数据集的充分性,但他们同意一些技术是必要的。一般来说,考虑的大多数技术都侧重于评估属性的数量。这些属性是根据预期的属性计数来评估的,而不考虑与这些属性相关的安全问题。本文探讨了这些技术来识别数据过少和属性不正确的实例。这些技巧很重要;然而,对于安全关键应用程序,保证分析师还需要了解机器学习数据集中没有特定属性对安全的影响。为了提供这些信息,本文提出了一种新的技术,作者称之为数据危害分析。数据危害分析提供了一种定性分析训练数据集的方法,以减少与GIGO相关的风险。
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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