基于邻域粗糙集的属性预排序快速约简算法

Meng Hu, Eric C. C. Tsang, Yanting Guo, Weihua Xu, De-gang Chen
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引用次数: 2

摘要

邻域粗糙集(NRS)是Pawlak粗糙集的经典扩展模型,用于评价属性约简中属性的重要性。除了属性求值之外,属性搜索策略也是属性约简中一个非常重要的问题。本文通过定义样本相对于单个属性的浓度、分散度、稳定度来衡量属性的显著性,并利用样本的稳定性对属性进行预排序。设计了一种基于邻域粗糙集(APNRS)的属性预排序快速约简算法来搜索约简,该约简更有利于学习任务的分类。与传统的贪婪搜索算法相比,APNRS算法在保证分类精度的前提下大大提高了计算效率。最后,通过一系列数值实验验证了APNRS的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast Reduction Algorithm with Attribute Pre-Sort Based on Neighborhood Rough Set
Neighborhood rough set (NRS) is a classical extension model of Pawlak rough set, which has been used to evaluate the importance of attributes for attribute reduction. In addition to attribute evaluation, attribute search strategy is also a very important issue for attribute reduction. In this paper, we define the concentration, dispersion, stability degree of samples with respect to the single attribute to measure the significance of attributes, and use the stability of samples to pre-sort attributes. A fast attribute reduction algorithm with attribute pre-sort based on neighborhood rough set (APNRS) is designed to search a reduct, and the reduct is more conducive to classify learning tasks. Compared with the traditional greedy search algorithms, the APNRS algorithm greatly improves the computational efficiency under the condition of ensuring classification accuracy. Finally, a series of numerical experiments are carried out to verily the efficiency of the APNRS.
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