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On fuzzy-rough sets approach to feature selection

机译:基于模糊粗糙集的特征选择方法

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In this paper, we have shown that the fuzzy-rough set attribute reduction algorithm [Jenson, R., Shen, Q., 2002. Fuzzy-rough sets for descriptive dimensionality reduction. In: Proceedings of IEEE International Conference on Fuzzy Systems, FUZZ-IEEE'02, May 12-17, pp. 29-34] is not convergent on many real datasets due to its poorly designed termination criteria; and the computational complexity of the algorithm increases exponentially with increase in the number of input variables and in multiplication with the size of data patterns. Based on natural properties of fuzzy t-norm and t-conorm, we have put forward the concept of fuzzy-rough sets on compact computational domain, which is then utilized to improve the computational efficiency of FRSAR algorithm. Speed up factor as high as 622 have been achieved with this concept with improved accuracy. We also restructure the algorithm with efficient termination criteria to achieve the convergence on all the datasets and to improve the reliability of selected set of features.
机译:在本文中,我们已经表明了模糊粗糙集属性约简算法[Jenson,R.,Shen,Q.,2002.用于描述性降维的模糊粗糙集。在:IEEE国际模糊系统会议论文集,FUZZ-IEEE'02,5月12日至17日,第29-34页]中,由于终止标准设计不当,因此无法在许多实际数据集中收敛;随着输入变量数量的增加以及数据模式大小的增加,该算法的计算复杂度呈指数增长。基于模糊t-范数和t-conorm的自然属性,我们提出了在紧凑计算域上的模糊粗糙集的概念,然后将其用于提高FRSAR算法的计算效率。利用该概念,可以提高精度,使加速因子高达622。我们还使用有效的终止标准对算法进行了重组,以实现所有数据集上的收敛,并提高了所选特征集的可靠性。

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