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A Fast Feature Selection Algorithm by Accelerating Computation of Fuzzy Rough Set-Based Information Entropy

机译:基于模糊粗糙集的信息熵加速计算的快速特征选择算法

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The information entropy developed by Shannon is an effective measure of uncertainty in data, and the rough set theory is a useful tool of computer applications to deal with vagueness and uncertainty data circumstances. At present, the information entropy has been extensively applied in the rough set theory, and different information entropy models have also been proposed in rough sets. In this paper, based on the existing feature selection method by using a fuzzy rough set-based information entropy, a corresponding fast algorithm is provided to achieve efficient implementation, in which the fuzzy rough set-based information entropy taking as the evaluation measure for selecting features is computed by an improved mechanism with lower complexity. The essence of the acceleration algorithm is to use iterative reduced instances to compute the lambda-conditional entropy. Numerical experiments are further conducted to show the performance of the proposed fast algorithm, and the results demonstrate that the algorithm acquires the same feature subset to its original counterpart, but with significantly less time.
机译:香农开发的信息熵是数据不确定性的有效度量,粗糙集理论是计算机应用程序处理模糊性和不确定性数据情况的有用工具。目前,信息熵已在粗糙集理论中得到广泛应用,并且在粗糙集中还提出了不同的信息熵模型。本文在现有的基于模糊粗糙集信息熵的特征选择方法的基础上,提供了一种基于模糊粗糙集信息熵作为评价指标的快速实现算法。通过具有较低复杂度的改进机制来计算特征。加速算法的本质是使用迭代的简化实例来计算λ条件熵。数值实验进一步证明了该算法的性能,结果表明该算法与原算法具有相同的特征子集,但时间却明显减少。

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