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A New Knowledge Characteristics Weighting Method Based on Rough Set and Knowledge Granulation

机译:一种基于粗糙集和知识造粒的新知识特征加权方法

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摘要

The knowledge characteristics weighting plays an extremely important role in effectively and accurately classifying knowledge. Most of the existing characteristics weighting methods always rely heavily on the experts' a priori knowledge, while rough set weighting method does not rely on experts' a priori knowledge and can meet the need of objectivity. However, the current rough set weighting methods could not obtain a balanced redundant characteristic set. Too much redundancy might cause inaccuracy, and less redundancy might cause ineffectiveness. In this paper, a new method based on rough set and knowledge granulation theories is proposed to ascertain the characteristics weight. Experimental results on several UCI data sets demonstrate that the weighting method can effectively avoid subjective arbitrariness and avoid taking the nonredundant characteristics as redundant characteristics.
机译:知识特征加权在有效准确地分类知识中起着极其重要的作用。 大多数现有特征加权方法总是严重依赖于专家的先验知识,而粗糙集加权方法则不依赖于专家的先验知识,并且可以满足客观性的需要。 但是,目前的粗糙设定加权方法无法获得平衡的冗余特性集。 冗余可能导致不准确,冗余较少可能导致无效。 本文提出了一种基于粗糙集和知识造粒理论的新方法来确定特性重量。 若干UCI数据集的实验结果表明,加权方法可以有效地避免主观性接触,避免将非还原特性作为冗余特性。

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