NEST:基于规则和基于案例推理的组合方法

P. Berka
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引用次数: 14

摘要

基于规则的推理(RBR)和基于案例的推理(CBR)是构建基于知识的“智能”决策支持系统的两种互补选择。RBR和CBR可以以三种主要方式组合:RBR优先,CBR优先,或者两者的某种交叉。本文描述的Nest系统允许我们以任意顺序分别调用这两个组件。除了传统的命题和组合规则网络之外,Nest还支持用于派生命题权重、逻辑(没有不确定性)和默认(没有先决条件)规则、上下文表达式、完整性约束和大小写的二进制、名义和数字属性。推理机制允许使用基于规则和基于案例的推理。不确定性处理(基于Hajek的代数理论)允许将区间权重解释为假设情况的联合,并添加了一组受神经网络启发的新组合函数。该系统有独立版和基于web的客户端服务器两种版本。包括一个用户友好的编辑器,涵盖所有提到的功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NEST: A Compositional Approach to Rule-Based and Case-Based Reasoning
Rule-based reasoning (RBR) and case-based reasoning (CBR) are two complementary alternatives for building knowledge-based "intelligent" decision-support systems. RBR and CBR can be combined in three main ways: RBR first, CBR first, or some interleaving of the two. The Nest system, described in this paper, allows us to invoke both components separately and in arbitrary order. In addition to the traditional network of propositions and compositional rules, Nest also supports binary, nominal, and numeric attributes used for derivation of proposition weights, logical (no uncertainty) and default (no antecedent) rules, context expressions, integrity constraints, and cases. The inference mechanism allows use of both rule-based and case-based reasoning. Uncertainty processing (based on Hajek's algebraic theory) allows interval weights to be interpreted as a union of hypothetical cases, and a novel set of combination functions inspired by neural networks has been added. The system is implemented in two versions: stand-alone and web-based client server. A user-friendly editor covering all mentioned features is included.
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