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An epistemic approach to the formal specification of statistical machine learning

机译:统计机器学习正式规范的认识方法

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We propose an epistemic approach to formalizing statistical properties of machine learning. Specifically, we introduce a formal model for supervised learning based on a Kripke model where each possible world corresponds to a possible dataset and modal operators are interpreted as transformation and testing on datasets. Then, we formalize various notions of the classification performance, robustness, and fairness of statistical classifiers by using our extension of statistical epistemic logic. In this formalization, we show relationships among properties of classifiers, and relevance between classification performance and robustness. As far as we know, this is the first work that uses epistemic models and logical formulas to express statistical properties of machine learning, and would be a starting point to develop theories of formal specification of machine learning.
机译:我们提出了一种认识的方法来形式化机器学习的统计特性。具体地,我们介绍了基于Kripke模型的监督学习的正式模型,其中每个可能的世界对应于可能的数据集和模态运算符被解释为在数据集上的转换和测试。然后,我们使用我们的统计认知逻辑延伸,正规化统计分类器的分类性能,鲁棒性和公平性的各种概念。在这一形式化中,我们展示了分类器属性之间的关系,以及分类性能与鲁棒性之间的相关性。据我们所知,这是第一个使用认知模型和逻辑公式来表达机器学习统计特性的第一项工作,并且是制定机器学习的正式规范理论的起点。

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