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A THRESHOLD-BASED SIMILARITY RELATION UNDER INCOMPLETE INFORMATION

机译:不完全信息下基于阈值的相似关系

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摘要

The conventional rough set theory based on complete information systems stems from the observation that objects with the same characteristics are indiscernible according to available information. Although rough sets theory has been applied in many fields, the use of the indiscernibility relation may be too rigid in some real situations. Therefore, several generalizations of the rough set theory have been proposed some of which extend the indiscernibility relation using more general similarity or tolerance relations. In this paper, after discussing several extension models based on rough sets for incomplete information, a novel relation based on thresholds is introduced as a new extension of the rough set theory, the upper-approximation and the lower approximation defined on this relation are proposed as well. Furthermore, we present the properties of this extended relation. The experiments show that this relation works effectively in incomplete information and generates rational object classification.
机译:基于完整信息系统的常规粗糙集理论源于这样的观察:根据可用信息,具有相同特征的对象是不可区分的。尽管粗糙集理论已应用于许多领域,但是在某些实际情况下,不可分辨关系的使用可能过于严格。因此,已经提出了粗糙集理论的几种概括,其中一些使用更一般的相似性或容忍关系扩展了不可分辨关系。本文在讨论了几种基于粗糙集的不完整信息扩展模型后,引入了一种基于阈值的新关系作为粗糙集理论的新扩展,提出了对此关系定义的上近似和下近似。好。此外,我们介绍了这种扩展关系的性质。实验表明,这种关系在不完整的信息中有效,并产生合理的对象分类。

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