4.6 Article

A Neighborhood Rough Sets-Based Attribute Reduction Method Using Lebesgue and Entropy Measures

期刊

ENTROPY
卷 21, 期 2, 页码 -

出版社

MDPI
DOI: 10.3390/e21020138

关键词

rough sets; neighborhood rough sets; attribute reduction; neighborhood entropy; Lebesgue measure

资金

  1. National Natural Science Foundation of China [61772176, 61402153, 61370169]
  2. China Postdoctoral Science Foundation [2016M602247]
  3. Plan for Scientific Innovation Talent of Henan Province [184100510003]
  4. Key Scientific and Technological Project of Henan Province [182102210362]
  5. Young Scholar Program of Henan Province [2017GGJS041]
  6. Natural Science Foundation of Henan Province [182300410130, 182300410368, 182300410306]
  7. Ph.D. Research Foundation of Henan Normal University [qd15132]

向作者/读者索取更多资源

For continuous numerical data sets, neighborhood rough sets-based attribute reduction is an important step for improving classification performance. However, most of the traditional reduction algorithms can only handle finite sets, and yield low accuracy and high cardinality. In this paper, a novel attribute reduction method using Lebesgue and entropy measures in neighborhood rough sets is proposed, which has the ability of dealing with continuous numerical data whilst maintaining the original classification information. First, Fisher score method is employed to eliminate irrelevant attributes to significantly reduce computation complexity for high-dimensional data sets. Then, Lebesgue measure is introduced into neighborhood rough sets to investigate uncertainty measure. In order to analyze the uncertainty and noisy of neighborhood decision systems well, based on Lebesgue and entropy measures, some neighborhood entropy-based uncertainty measures are presented, and by combining algebra view with information view in neighborhood rough sets, a neighborhood roughness joint entropy is developed in neighborhood decision systems. Moreover, some of their properties are derived and the relationships are established, which help to understand the essence of knowledge and the uncertainty of neighborhood decision systems. Finally, a heuristic attribute reduction algorithm is designed to improve the classification performance of large-scale complex data. The experimental results under an instance and several public data sets show that the proposed method is very effective for selecting the most relevant attributes with high classification accuracy.

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