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Fuzzy Rough Based Feature Selection by Using Random Sampling

机译:采用随机采样模糊基于粗糙的特征选择

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Feature selection, i.e., Attribute reduction, is one of the most important applications of fuzzy rough set theory. The application of attribute reduction based on fuzzy rough set is inefficient or even unfeasible on large scale data. Considering the random sampling technique is an effective method to statistically reduce the calculation on large scale data, we introduce it into the fuzzy rough based feature selection algorithm. This paper thus proposes a random reduction algorithm based on random sampling. The main contribution of this paper is the introduction of the idea of random sampling in the selection of attributes based on minimum redundancy and maximum correlation. First, in each iteration the significance of attribute is not computed on all the objects in the whole datasets, but on part of randomly selected objects. By this way, the maximum relevant attribute is chosen on the condition of less calculation. Secondly, in the process of choosing attribute in each iteration, the sample is different so as to select the minimum redundancy attribute. Finally, the experimental results show that the reduction algorithm can obviously reduce the running time of the reduction algorithm on the condition of limited classification accuracy loss.
机译:特征选择,即属性减少,是模糊粗糙集理论的最重要应用之一。基于模糊粗糙集的属性降低应用效率低于甚至是大规模数据的不可行。考虑到随机采样技术是一种有效的方法,可以在大规模数据上统计减少计算,我们将其介绍到基于模糊的基于粗糙的特征选择算法中。因此,本文提出了一种基于随机采样的随机还原算法。本文的主要贡献是在基于最小冗余和最大相关性选择属性中引入随机采样的想法。首先,在每次迭代中,都没有在整个数据集中的所有对象上计算属性的重要性,而是在随机选择的对象的一部分上计算。通过这种方式,选择最大相关属性在较少计算的条件下。其次,在每个迭代中选择属性的过程中,样本是不同的,以便选择最小冗余属性。最后,实验结果表明,减少算法明显减少了在有限分类精度损失条件下减少算法的运行时间。

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