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Performing classification using all kinds of distances as evidences

机译:使用各种距离执行分类作为证据

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The classifiers based on the theory of evidence appear well founded theoretically, however, they have still difficulties to nicely deal with the sparse, the noisy, and the imbalance problems. This paper presents a new general framework to create evidences by defining many kinds of distances between the query and its multiple neighborhoods as the evidences. Particularly, it applies the relative transformation to define the distances. Within the framework, a new classifier called relative evidential classification (REC) is designed, which takes all distances as evidences and combines them using the Dempster'rule of combination. The classifier assigns the class label to the query based on the combined belief. The novel work of this method lies in that a new general framework to create evidences and a new approach to define the distances in the relative space as evidences are presented. Experimental results suggest that the proposed approach often gives the better results in classification.
机译:基于证据理论的分类器理论上良好地创立了很好的成立,然而,他们仍然困难地处理稀疏,嘈杂和不平衡问题。本文介绍了一个新的一般框架,通过定义查询与其多个街区之间的多种距离来创造证据。特别地,它施加相对变换来定义距离。在框架内,设计了一种称为相对证据分类(REC)的新分类器,其占据了所有距离,并使用Dempster'Rule组合组合。分类器根据组合的信念将类标签分配给查询。这种方法的新颖作品在于,提出了一种新的一般框架,以创造证据和新方法来定义相对空间中的距离作为证据。实验结果表明,所提出的方法往往在分类中提供了更好的结果。

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