数据质量和可解释的人工智能

L. Bertossi, Floris Geerts
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引用次数: 25

摘要

在这项工作中,我们提供了一些见解,并发展了一些想法,在基于数据的机器学习模型(ML)的背景下,解释在数据质量中的作用,技术细节很少。在这个方向上,正如预期的那样,存在因果关系和可解释的人工智能。后一个领域不仅揭示了模型,而且还揭示了支持模型构建的数据。还有定义、识别和解释数据中的错误的空间,特别是在ML中,也有建议修复操作的空间。更一般地说,解释可以作为在ML上下文中定义脏数据并测量或量化它们的基础。我们认为脏与手头的机器学习任务有关,例如分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Quality and Explainable AI
In this work, we provide some insights and develop some ideas, with few technical details, about the role of explanations in Data Quality in the context of data-based machine learning models (ML). In this direction, there are, as expected, roles for causality, and explainable artificial intelligence. The latter area not only sheds light on the models, but also on the data that support model construction. There is also room for defining, identifying, and explaining errors in data, in particular, in ML, and also for suggesting repair actions. More generally, explanations can be used as a basis for defining dirty data in the context of ML, and measuring or quantifying them. We think dirtiness as relative to the ML task at hand, e.g., classification.
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