This paper brings together two lines of research: factor-based models of case-based reasoning (CBR) and the logical specification of classifiers. Logical approaches to classifiers capture the connection between features and outcomes in classifier systems. Factor-based reasoning is a popular approach to reasoning by precedent in AI & Law. Horty (2011) has developed the factor-based models of precedent into a theory of precedential constraint. In this paper we combine the modal logic approach (binary-input classifier, BLC) to classifiers and their explanations given by Liu & Lorini (2021) with Horty's account of factor-based CBR, since both a classifier and CBR map sets of features to decisions or classifications. We reformulate case bases of Horty in the language of BCL, and give several representation results. Furthermore, we show how notions of CBR, e.g. reason, preference between reasons, can be analyzed by notions of classifier system.
翻译:本文汇集了两条研究线:基于要素的推理模型(CBR)和分类者的逻辑规格。分类者的逻辑方法捕捉了分类者系统中特征和结果之间的联系。基于要素的推理是AI & Law中以先例推理的流行方法。Horty (2011年)将基于要素的先例模型发展为先例约束理论。在本文中,我们把基于要素的逻辑方法(二元投入分类师,BLC)与刘和洛里尼(2021年)对分类者的解释与基于要素的CBR(2021年)的分类解释结合起来,Horty的描述是基于要素的CBR(C),因为两者都是决策或分类的特征组和CBR(CBR)地图。我们用 BCL 语言重塑了Horty的案例基础,并提供了若干陈述结果。此外,我们展示了如何用分类者系统的概念分析CBR(例如理由、理由之间的偏好)。