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AN ADVANCED CASE-KNOWLEDGE ARCHITECTURE BASED ON FUZZY OBJECTS

机译:基于模糊对象的高级事例知识体系结构

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The case-based reasoning (CBR) architecture described in this paper represents a substantive advancement in the representation of case-knowledge. It addresses three major problems found in current CBR schemes: 1) Insufficient treatment of abstract case features' context-dependent characteristics. 2) Lack of a methodical support for atomic and structured case features that contain and represent imprecisely specified quantities. 3) And little account for clustering and organising cognate cases into conceptually overlapping categories. To overcome the representational inadequacy resulting from those deficiencies, this work proposes two modelling fundamentals, namely, fuzzy primitive and fuzzy complex abstract features. These allow a flexible, polymorphic encoding of case characteristics as real numbers, linguistic terms, fuzzy numbers and fuzzy complex objects respectively. Based on this concept, it is possible to systematically organise a case base in fuzzy categories, reflecting real-world case clusters. In the presented scheme, a prototype case and its associated approximation scales form the basis to realise a versatile mechanism to represent the context-specific idiosyncrasies of fuzzy abstract case features. Case categories, fuzzy abstract features, cases, and the approximation scale concept are modelled as self-contained, operational entities. They co-operatively concert their services when they categorise an unclassified problem description (target case), and locate relevant stored cases. Applied to the Coronary Heart Disease risk assessment domain, the proposed architecture has proven to be highly adequate for capturing and efficiently processing case-knowledge. Moreover, as this scheme is designed upon well-established object-oriented principles, it has been shown that it can seamlessly integrate in a wider, more general knowledge management regime. [References: 29]
机译:本文所述的基于案例的推理(CBR)架构代表了案例知识表示的实质性进步。它解决了当前CBR方案中发现的三个主要问题:1)对抽象案例特征的上下文相关特征的处理不足。 2)缺乏对包含和代表不精确指定数量的原子和结构化案例特征的系统支持。 3)很少考虑将同类案例聚类和组织成概念上重叠的类别。为了克服由这些缺陷引起的代表性不足,这项工作提出了两个建模基础,即模糊原始特征和模糊复杂抽象特征。这些允许对案例特征进行灵活的多态编码,分别为实数,语言术语,模糊数和模糊复杂对象。基于此概念,有可能系统地组织一个模糊类别的案例库,以反映实际案例集。在提出的方案中,原型案例及其相关的近似尺度构成了实现通用机制来表示模糊抽象案例特征的特定于上下文的特质的基础。案例类别,模糊抽象特征,案例和近似比例概​​念被建模为独立的可操作实体。当他们对未分类的问题描述(目标案例)进行分类并找到相关的存储案例时,他们会合作协调他们的服务。拟议的体系结构应用于冠心病风险评估领域,已证明非常适合捕获和有效处理案例知识。而且,由于该方案是基于公认的面向对象的原理设计的,因此表明它可以无缝地集成到更广泛,更通用的知识管理体系中。 [参考:29]

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