约束条件下分类器的归纳解释:复杂性与特性

Martin Cooper, Leila Amgoud
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引用次数: 0

摘要

归纳式解释(AXp's)被广泛用于理解分类器的决策。然而,我们的研究表明,如果忽略了特征之间存在的约束条件,可能会导致冗余或多余的 AXp 数量激增。我们提出了三种考虑到约束条件的新型解释,它们可以从整个特征空间或样本(如数据集)中生成。它们基于解释的覆盖范围这一关键概念,即解释的实例集。我们证明,覆盖率足以摒弃多余和多余的 AXp。对于每种类型,我们都分析了寻找解释的复杂性,并研究了其形式属性。最终的结果是一个具有不同复杂性和不同形式保证的不同形式的 AXp 目录。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Abductive explanations of classifiers under constraints: Complexity and properties
Abductive explanations (AXp's) are widely used for understanding decisions of classifiers. Existing definitions are suitable when features are independent. However, we show that ignoring constraints when they exist between features may lead to an explosion in the number of redundant or superfluous AXp's. We propose three new types of explanations that take into account constraints and that can be generated from the whole feature space or from a sample (such as a dataset). They are based on a key notion of coverage of an explanation, the set of instances it explains. We show that coverage is powerful enough to discard redundant and superfluous AXp's. For each type, we analyse the complexity of finding an explanation and investigate its formal properties. The final result is a catalogue of different forms of AXp's with different complexities and different formal guarantees.
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