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'Boxing Clever': Practical Techniques for Gaining Insights into Training Data and Monitoring Distribution Shift

机译:“聪明的拳击”:深入了解训练数据和监视分布变化的实用技术

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Training data has a significant influence on the behaviour of an artificial intelligence algorithm developed using machine learning techniques. Consequently, any argument that the trained algorithm is, in some way, fit for purpose ought to include consideration of data as an entity in its own right. We describe some simple techniques that can provide domain experts and algorithm developers with insights into training data and which can be implemented without specialist computer hardware. Specifically, we consider sampling density, test case generation and monitoring for distribution shift. The techniques are illustrated using example data sets from the University of California, Irvine, Machine Learning repository.
机译:训练数据对使用机器学习技术开发的人工智能算法的行为具有重大影响。因此,关于受过训练的算法在某种程度上适合于目的的任何论点都应考虑将数据本身视为一个实体。我们描述了一些简单的技术,这些技术可以为领域专家和算法开发人员提供有关训练数据的见解,并且可以在没有专门的计算机硬件的情况下实施。具体来说,我们考虑采样密度,测试用例生成以及对分布偏移的监视。使用来自加利福尼亚大学欧文分校机器学习存储库的示例数据集说明了这些技术。

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