基于正评价函数的Hyperbox颗粒计算分类算法比较

Baoduo Su, Yinhao Zhang, Meiyao Zhu, Hongbing Liu
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引用次数: 0

摘要

颗粒计算(GrC)是一种源自现实世界人类认知的计算范式,通过这种范式,不同粒度的空间可以相互转换。对于GrC,我们必须面对两个问题,一个是两粒之间的操作,另一个是两粒之间的包裹关系。本文根据不同的正评价函数,提出了基于颗粒间模糊包含关系的超盒颗粒计算分类算法。所提出的正评价函数保持了向量空间中两个向量之间的偏序关系和颗粒空间中两个超盒颗粒之间的偏序关系的一致性。利用超盒粒子集和所提出的正评价函数诱导的模糊包含关系构造模糊格,并设计实现从训练集到稀疏粒子空间转换的算法。在基准数据集上的实验结果表明了hyperbox颗粒计算分类算法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Hyperbox Granular Computing Classification Algorithms by Positive Valuation Functions
Granular Computing (GrC) is a computing paradigm derived from the human congiton of the real world, by which different granularity spaces can be converted to each other. For GrC, we have to face two issues, such as the operation between two granules and inclusion relation between two granules. In the paper, we proposed the hyperbox granular computing classification algorithms based on the fuzzy inclusion relation between granules in terms of the different positive valuation functions. The proposed positive valuation functions keep the consistency of the partial order relation between two vectors in the vector space and the partial order relation between two hyperbox granules in the granule space. The fuzzy lattice is constructed by the hyperbox granule set and the fuzzy inclusion relation induced by the proposed positive valuation functions, and used to design the algorithms which realize the transformation from the training set to the sparse granule space. Experimental results on the benchmark data set show superiority of the proposed hyperbox granular computing classification algorithms.
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