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A Knowledge Integrated Case-Based Classifier

机译:知识集成的基于案例的分类器

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摘要

This paper proposes a case-based classifier using a new approach that integrates rule-based and case-based reasoning approaches for enhanced accuracy. The rule-based reasoning component uses rules generated from a concept lattice of training data, binarized using fuzzy sets. These binarized data are stored as cases in the case-based classification component. The case-based component complements the rule-based component to enhance classification accuracy. Moreover, we designed the case-based component with an embedded similarity measure that uses a vector model for concept approximations. Thus, this design makes it possible to generate high quality rules and classify unseen new cases. In addition, the ability to build a knowledge base in lattice form is important for discovering hierarchical patterns, incrementing or updating the existing knowledge base, and inducing rules with our rule learning algorithm. The novel methodology was implemented and evaluated with benchmark datasets from the UCI repository and historic rubber prices in Thailand, demonstrating improvements in accuracy of classification calls. The results from the fact their several hierarchical datasets are very promising, with improved classification performance over prior reported methods.
机译:本文提出了一种使用新方法的基于案例的分类器,该方法将基于规则和基于案例的推理方法相集成以提高准确性。基于规则的推理组件使用从训练数据的概念格生成的规则,并使用模糊集对其进行二值化。这些二值化数据作为案例存储在基于案例的分类组件中。基于案例的组件补充了基于规则的组件,以提高分类准确性。此外,我们设计了基于案例的组件,该组件具有嵌入式相似性度量,该度量使用矢量模型进行概念逼近。因此,这种设计可以生成高质量的规则并对未见的新案例进行分类。此外,以格子形式构建知识库的能力对于发现层次结构模式,增加或更新现有知识库以及使用我们的规则学习算法诱导规则非常重要。该新方法已在UCI资料库中的基准数据集和泰国历史橡胶价格的基础上实施和评估,证明了分类调用准确性的提高。他们的几个分层数据集的事实非常有希望,与以前报道的方法相比,分类性能得到了改善。

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