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Extended rough set model based on modified data-driven valued tolerance relation

机译:基于修改的数据驱动价值的延长粗糙集模型

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摘要

Classical rough set theory is based on the conventional indiscernibility relation. It is not suitable for analyzing incomplete information. Some successful extended rough set models based on different non-equivalence relations have been proposed. The data-driven valued tolerance relation is such a non-equivalence relation. However, when predicting the unknown attribute value of an object, it regards the frequency of an attribute value approximately as the probability of appearance of this value, without considering the effects of other known attribute values of this object on predicting the unknown attribute value. In this paper, considering both the frequency of the known attribute values and the influence weight to predict the unknown attribute values. Modified data-driven valued tolerance relation (MDVT) is defined. On this basis, an extended rough set model based on modified data-driven valued tolerance relation is proposed. Some properties of the new model are analyzed. Experimental results show that the MDVT can get better classification results than other generalized indiscernibility relations.
机译:经典粗糙集理论基于传统的难以清晰的关系。它不适合分析不完整的信息。提出了基于不同非等价关系的一些成功的扩展粗糙集模型。数据驱动的值的公差关系是这样的非等价关系。然而,当预测对象的未知属性值时,它将属性值的频率大致视为该值的外观概率,而不考虑该对象对预测未知属性值的其他已知属性值的影响。在本文中,考虑已知属性值的频率和影响重量以预测未知属性值。定义了修改的数据驱动价值容差关系(MDVT)。在此基础上,提出了一种基于修改的数据驱动的值的有价值关系的扩展粗糙集模型。分析了新模型的一些属性。实验结果表明,MDVT可以获得比其他广义义目关系更好的分类结果。

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