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An instance-based learning approach based on grey relational structure

机译:基于灰色关联结构的基于实例的学习方法

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摘要

In instance-based learning, the 'nearness' between two instances-used for pattern classification-is generally determined by some similarity functions, such as the Euclidean or Value Difference Metric (VDM). However, Euclidean-like similarity functions are normally only suitable for domains with numeric attributes. The VDM metrics are mainly applicable to domains with symbolic attributes, and their complexity increases with the number of classes in a specific application domain. This paper proposes an instance-based learning approach to alleviate these shortcomings. Grey relational analysis is used to precisely describe the entire relational structure of all instances in a specific domain. By using the grey relational structure, new instances can be classified with high accuracy. Moreover, the total number of classes in a specific domain does not affect the complexity of the proposed approach. Forty classification problems are used for performance comparison. Experimental results show that the proposed approach yields higher performance over other methods that adopt one of the above similarity functions or both. Meanwhile, the proposed method can yield higher performance, compared to some other classification algorithms.
机译:在基于实例的学习中,用于模式分类的两个实例之间的“附近”通常由一些相似性函数确定,例如欧几里得或价值差异度量(VDM)。但是,类似欧几里得的相似性函数通常仅适用于具有数字属性的域。 VDM度量标准主要适用于具有符号属性的域,并且它们的复杂性会随着特定应用程序域中类的数量而增加。本文提出了一种基于实例的学习方法来缓解这些缺点。灰色关系分析用于精确描述特定域中所有实例的整个关系结构。通过使用灰色关联结构,可以高精度分类新实例。而且,特定领域中的类总数不会影响所提出方法的复杂性。四十个分类问题用于性能比较。实验结果表明,与采用上述相似性函数之一或同时采用两者的其他方法相比,该方法具有更高的性能。同时,与其他一些分类算法相比,该方法具有更高的性能。

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