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Attribute reduction based on misclassification cost in variable precision rough set model

机译:基于可变精密粗糙集模型中的错误分类成本的属性降低

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摘要

As an effective tool for knowledge acquisition, attribute reduction is one of the key issues in rough set theory. In current research, most researchers choose to reduce redundant attributes as many as possible through some attribution reduction algorithms. However, the misclassification cost induced by attribute reduction is ignored. Thus, it is worth studying that how to reduce redundant attributes based on preserving the misclassification cost. Firstly, in this paper, the degree of minimum misclassification is defined. Then, by introducing decision process into variable precision rough set, a new model which is based on minimum misclassification cost with variable precision rough set (VPRS) is proposed. Moreover, based on the minimum misclassification cost, a heuristic attribute reduction algorithm is proposed. Finally, the simulation result shows that a feasible and reliable set of attributes can be obtained with our algorithm. These results further enrich attribute reduction to effectively deal with the uncertain classification problems.
机译:作为知识获取的有效工具,属性减少是粗糙集理论中的关键问题之一。在目前的研究中,大多数研究人员选择通过一些归因降低算法来减少尽可能多的冗余属性。但是,忽略了属性减少所引起的错误分类成本。因此,值得研究如何基于保留错误分类成本来减少冗余属性。首先,在本文中,定义了最小错误分类程度。然后,通过将决策过程引入可变精度粗糙集,提出了一种基于可变精度粗糙集(VPRS)的最小错误分类成本的新模型。此外,基于最小的错误分类成本,提出了一种启发式属性还原算法。最后,仿真结果表明,可以使用我们的算法获得可行和可靠的属性集。这些结果进一步丰富了属性,以有效地应对不确定的分类问题。

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