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An approach for incremental updating approximations in Variable precision rough sets while attribute generalized

机译:在属性通用的同时,可变精度粗糙集中增量更新近似的方法

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Rough set theory (RST) for knowledge updating have been successfully applied in data mining and it's correlative domains. As a special type of probabilistic rough set model, Variable precision rough sets (VPRS) model is an extension of RST. For an information system, the VPRS model allows a flexible approximation boundary region by using a precision variable and has a better tolerance ability for inconsistent data. However, the approximations of a concept may change when an information system varies. The approach for incremental updating of approximations while attribute generalizing in VPRS should be considered. In this paper, an incremental model and its algorithm for updating approximations of a concept based on VPRS are proposed when attribute generalized. Examples are employed to validate the feasibility of this approach.
机译:知识更新的粗糙集理论(RST)已成功应用于数据挖掘和其相关域。作为一种特殊类型的概率粗糙集模型,可变精度粗糙集(VPRS)模型是RST的扩展。对于信息系统,VPRS模型允许通过使用精度变量来施加灵活的近似边界区域,并且具有更好的耐受性的数据。然而,当信息系统变化时,概念的近似可能会改变。应该考虑vprs中的属性概括的近似近似值的方法。本文提出了一种基于VPRS更新基于VPRS的概念近似的增量模型及其算法。采用示例来验证这种方法的可行性。

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