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A Fuzzy-Rough Approach for Case Base Maintenance

机译:案例基础维护的模糊粗略方法

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This paper proposes a fuzzy-rough method of maintaining Case-Based Reasoning (CBR) systems. The methodology is mainly based on the idea that a large case library can be transformed to a small case library together with a group of adaptation rules, which take the form of fuzzy rules generated by the rough set technique. In paper [1], we have proposed a methodology for case base maintenance which used a fuzzy decision tree induction to discover the adaptation rules; in this paper, we focus on using a heuristic algorithm, i.e., a fuzzy-rough algorithm [2] in the process of simplifying fuzzy rules. This heuristic, regarded as a new fuzzy learning algorithm, has many significant advantages, such as rapid speed of training and matching, generating a family of fuzzy rules which is approximately simplest. By applying such a fuzzy-rough learning algorithm to the adaptation mining phase, the complexity of case base maintenance is reduced, and the adaptation knowledge is more compact and effective. The effectiveness of the method is demonstrated experimentally using two sets of testing data, and we also compare the maintenance results of using fuzzy ID3, in [1], and the fuzzy-rough approach, as in this paper.
机译:本文提出了一种维持基于案例推理(CBR)系统的模糊粗略粗略的方法。该方法主要基于可以将大型案例库与一组适应规则一起转换为小写库,这采用粗糙集技术产生的模糊规则的形式。在纸质[1]中,我们提出了一种案例基础维护的方法,它使用模糊决策树诱导来发现适应规则;在本文中,我们专注于使用启发式算法,即在简化模糊规则的过程中进行模糊粗略算法[2]。这种启发式,被视为一种新的模糊学习算法,具有许多显着的优势,例如快速的训练速度和匹配,产生一个大约最简单的模糊规则。通过将这种模糊粗糙的学习算法应用于适应挖掘阶段,减少了案例基础维护的复杂性,适应知识更紧凑且有效。通过两组测试数据实验证明了该方法的有效性,我们还比较了使用模糊ID3的维护结果,在[1]中,以及模糊粗略的方法,如本文。

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