Binary classifiers are traditionally studied by propositional logic (PL). PL can only represent them as white boxes, under the assumption that the underlying Boolean function is fully known. Binary classifiers used in practical applications and trained by machine learning are however opaque. They are usually described as black boxes. In this paper, we provide a product modal logic called PLC (Product modal Logic for binary input Classifier) in which the notion of "black box" is interpreted as the uncertainty over a set of classifiers. We give results about axiomatics and complexity of satisfiability checking for our logic. Moreover, we present a dynamic extension in which the process of acquiring new information about the actual classifier can be represented.
翻译:PL只能作为白箱来代表它们,假设根本的布林函数是众所周知的。在实际应用中使用的、经过机器学习培训的二进制分类器无论如何都是不透明的。它们通常被描述为黑箱。在本文中,我们提供了一种称为PLC(二进制输入分类法的模型逻辑)的产品模型逻辑,其中“黑箱”的概念被解释为一组分类器的不确定性。我们给出了逻辑的不一致性和可比较性检验的复杂性的结果。此外,我们提出了一个动态扩展,可以代表获取实际分类器新信息的过程。