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Transferring case knowledge to adaptation knowledge: An approach for case-base maintenance

机译:从案例知识到适应知识的转移:基于案例的维护方法

摘要

In this article we propose a case-base maintenance methodology based on the idea of transferring knowledge between knowledge containers in a case-based reasoning (CBR) system. A machine-learning technique, fuzzy decision-tree induction, is used to transform the case knowledge to adaptation knowledge. By learning the more sophisticated fuzzy adaptation knowledge, many of the redundant cases can be removed. This approach is particularly useful when the case base consists of a large number of redundant cases and the retrieval efficiency becomes a real concern of the user. The method of maintaining a case base from scratch, as proposed in this article, consists of four steps. First, an approach to learning feature weights automatically is used to evaluate the importance of different features in a given case base. Second, clustering of cases is carried out to identify different concepts in the case base using the acquired feature-weights knowledge. Third, adaptation rules are mined for each concept using fuzzy decision trees. Fourth, a selection strategy based on the concepts of case coverage and reachability is used to select representative cases. In order to demonstrate the effectiveness of this approach as well as to examine the relationship between compactness and performance of a CBR system, experimental testing is carried out using the Traveling and the Rice Taste data sets. The results show that the testing case bases can be reduced by 36 and 39 percent, respectively, if we complement the remaining cases by the adaptation rules discovered using our approach. The overall accuracies of the two smaller case bases are 94 and 90 percent, respectively, of the originals.
机译:在本文中,我们提出了一种基于案例的维护方法,该方法基于在基于案例的推理(CBR)系统中的知识容器之间传递知识的想法。机器学习技术,即模糊决策树归纳法,用于将案例知识转化为适应知识。通过学习更复杂的模糊适应知识,可以消除许多冗余情况。当案例库由大量冗余案例组成并且检索效率成为用户的真正关注点时,此方法特别有用。本文提出的从头维护案例库的方法包括四个步骤。首先,一种用于自动学习特征权重的方法用于评估给定案例库中不同特征的重要性。其次,使用获得的特征权重知识对案例进行聚类以识别案例库中的不同概念。第三,使用模糊决策树为每个概念挖掘适应规则。第四,基于案例覆盖率和可达性概念的选择策略用于选择代表性案例。为了证明这种方法的有效性以及检查CBR系统的紧凑性和性能之间的关系,我们使用Traveling和Rice Taste数据集进行了实验测试。结果表明,如果我们通过使用我们的方法发现的适应规则对其余案例进行补充,则测试案例的基础可以分别减少36%和39%。两个较小表壳的总体准确度分别为原件的94%和90%。

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