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Variable Neighborhood Search for Attribute Reduction in Rough Set Theory

机译:可变邻域搜索粗糙集理论的属性减少

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Attribute reduction is a combinational optimization problem in data mining domain that aims to find a minimal subset from a large set of attributes. The typical high dimensionality of datasets precludes the use of greedy methods to find reducts because of its poor adaptability, and requires the use of stochastic methods. Variable Neighborhood Search (VNS) is a recent metaheuristic and have been successfully applied to solve combinational and global optimization problems. In our paper, the Variable Neighborhood Search scheme combined with a local search scheme called Variable Neighborhood Descent (VND) is adopted to find the reduction. We also use conditional entropy as metric to measure the quality of reduction. To verify the efficiency of our method, experiments are carried out on some standard UCI datasets. The results demonstrate the efficiency of our method.
机译:属性缩减是数据挖掘域中的组合优化问题,其旨在找到来自大集属性的最小子集。数据集的典型高维度排除了使用贪婪方法,因为其适应性差,并且需要使用随机方法。可变邻域搜索(VNS)是最近的一个成功型,已成功应用于解决组合和全局优化问题。在本文中,采用可变邻域搜索方案与称为可变邻域下降(VND)的本地搜索方案组合以找到减少。我们还使用条件熵作为指标来测量减少质量。为了验证我们方法的效率,实验是在某些标准UCI数据集中执行的。结果表明了我们方法的效率。

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